60 results on '"Habib Hamam"'
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2. The Rise of 'Internet of Things': Review and Open Research Issues Related to Detection and Prevention of IoT-Based Security Attacks
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Muhammad Shafiq, Zhaoquan Gu, Omar Cheikhrouhou, Wajdi Alhakami, and Habib Hamam
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Computer Networks and Communications ,Electrical and Electronic Engineering ,Information Systems - Abstract
This paper provides an extensive and complete survey on the process of detecting and preventing various types of IoT-based security attacks. It is designed for software developers, researchers, and practitioners in the Internet of Things field who aim to understand the process of detecting and preventing these attacks. For each entry identified from the list, a brief description is provided along with references where more information can be found. However, We surveyed the current state-of-the-art IoT security solutions and focused on four main aspects: (1) handpicking representative attacks, (2) identifying potential solutions, (3) performing a threat analysis for each attack and solution, and (4) ranking solutions according to the threats they overcome. By adopting this framework, we identified five main categories of defense mechanisms: distributed denial of service detection/prevention, default password protection, encryption mechanisms, intrusion detection/prevention, and anomaly detection. These solutions are relatively mature in terms of utility and usability. However, the security analysis is conducted only concerning specific attacks, which may or may not be relevant to real-world deployment. Appropriate IoT security solutions should incorporate threat modeling while considering other factors such as resource consumption and implementation effort. Overall, evaluation of IoT security solutions is arduous due to the complexity of IoT OSes, heterogeneous IoT devices (e.g., various hardware platforms), limited availability of open-source codebases, and restrictive policies towards intellectual property disclosure. In addition, we note that there remains a lack of studies that perform a systematic evaluation of the state-of-the-art in terms of both frameworks/methodologies and mechanisms proposed.
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- 2022
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3. Design of Resource-Aware Load Allocation for Heterogeneous Fog Computing Environments
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Syed Rizwan Hassan, Ishtiaq Ahmad, Ateeq Ur Rehman, Seada Hussen, and Habib Hamam
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Article Subject ,Computer Networks and Communications ,Electrical and Electronic Engineering ,Information Systems - Abstract
The architecture employed by most of the researchers for the deployment of latency-sensitive Internet of Things (IoT) applications is fog computing. Fog computing architecture offers less delay as compared to the cloud computing paradigm by providing resource constraint fog devices close to the edge of the network. Fog nodes process the incoming data by utilizing available resources which reduces the volume of data to be sent to the cloud server. Fog devices having dissimilar processing capabilities are present in a system. The connection of suitable sensor nodes to the parent fog node plays an essential role in achieving the optimum performance of the system. In this paper, we have designed an algorithm that dynamically assigns appropriate sensor devices to fog nodes to achieve a reduction in network utilization and latency. The proposed algorithm estimates the volume of information detected by an edge device from the rate of sensing frequency of the sensor attached to the edge device. The proposed policy while connecting the network nodes takes into account the heterogeneity and processing capability of the devices. Several evaluations are performed on multiple scales for the evaluation of the proposed algorithm. The outcomes of the evaluations confirm the effectiveness of the proposed algorithm in achieving a reduction in network consumption and end-to-end delay.
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- 2022
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4. Efficient Joint Key Authentication Model in E-Healthcare
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Muhammad Sajjad, Tauqeer Safdar Malik, Shahzada Khurram, Akber Abid Gardezi, Fawaz Alassery, Habib Hamam, Omar Cheikhrouhou, and Muhammad Shafiq
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Biomaterials ,Mechanics of Materials ,Modeling and Simulation ,Electrical and Electronic Engineering ,Computer Science Applications - Published
- 2022
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5. Automated Grading of Breast Cancer Histopathology Images Using Multilayered Autoencoder
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Shakra Mehak, M. Usman Ashraf, Rabia Zafar, Ahmed M. Alghamdi, Ahmed S. Alfakeeh, Fawaz Alassery, Habib Hamam, and Muhammad Shafiq
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Biomaterials ,Mechanics of Materials ,Modeling and Simulation ,Electrical and Electronic Engineering ,Computer Science Applications - Published
- 2022
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6. Industrial Automation Information Analogy for Smart Grid Security
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Muhammad Asif, Ishfaq Ali, Shahbaz Ahmad, Azeem Irshad, Akber Abid Gardezi, Fawaz Alassery, Habib Hamam, and Muhammad Shafiq
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Biomaterials ,Mechanics of Materials ,Modeling and Simulation ,Electrical and Electronic Engineering ,Computer Science Applications - Published
- 2022
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7. A Novel Framework for Classification of Different Alzheimer’s Disease Stages Using CNN Model
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Gowhar Mohi ud din dar, Avinash Bhagat, Syed Immamul Ansarullah, Mohamed Tahar Ben Othman, Yasir Hamid, Hend Khalid Alkahtani, Inam Ullah, and Habib Hamam
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CNN ,deep learning ,MCI ,EMCI ,LMCI ,AD ,transfer learning ,MRI ,CSF ,Computer Networks and Communications ,Hardware and Architecture ,Control and Systems Engineering ,Signal Processing ,Electrical and Electronic Engineering - Abstract
Background: Alzheimer’s, the predominant formof dementia, is a neurodegenerative brain disorder with no known cure. With the lack of innovative findings to diagnose and treat Alzheimer’s, the number of middle-aged people with dementia is estimated to hike nearly to 13 million by the end of 2050. The estimated cost of Alzheimer’s and other related ailments is USD321 billion in 2022 and can rise above USD1 trillion by the end of 2050. Therefore, the early prediction of such diseases using computer-aided systems is a topic of considerable interest and substantial study among scholars. The major objective is to develop a comprehensive framework for the earliest onset and categorization of different phases of Alzheimer’s. Methods: Experimental work of this novel approach is performed by implementing neural networks (CNN) on MRI image datasets. Five classes of Alzheimer’s disease subjects are multi-classified. We used the transfer learning determinant to reap the benefits of pre-trained health data classification models such as the MobileNet. Results: For the evaluation and comparison of the proposed model, various performance metrics are used. The test results reveal that the CNN architectures method has the following characteristics: appropriate simple structures that mitigate computational burden, memory usage, and overfitting, as well as offering maintainable time. The MobileNet pre-trained model has been fine-tuned and has achieved 96.6 percent accuracy for multi-class AD stage classifications. Other models, such as VGG16 and ResNet50 models, are applied tothe same dataset whileconducting this research, and it is revealed that this model yields better results than other models. Conclusion: The study develops a novel framework for the identification of different AD stages. The main advantage of this novel approach is the creation of lightweight neural networks. MobileNet model is mostly used for mobile applications and was rarely used for medical image analysis; hence, we implemented this model for disease detection andyieldedbetter results than existing models.
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- 2023
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8. A Lightweight CNN and Class Weight Balancing on Chest X-ray Images for COVID-19 Detection
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Noha Alduaiji, Abeer Algarni, Saadia Abdalaha Hamza, Gamil Abdel Azim, and Habib Hamam
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Computer Networks and Communications ,Hardware and Architecture ,Control and Systems Engineering ,Signal Processing ,machine learning ,transfer learning ,class weight balancing ,convolution neural networks ,COVID-19 ,Electrical and Electronic Engineering - Abstract
In many locations, reverse transcription polymerase chain reaction (RT-PCR) tests are used to identify COVID-19. It could take more than 48 h. It is a key factor in its seriousness and quick spread. Images from chest X-rays are utilized to diagnose COVID-19. Which generally deals with the issue of imbalanced classification. The purpose of this paper is to improve CNN’s capacity to display Chest X-ray pictures when there is a class imbalance. CNN Training has come to an end while chastening the classes for using more examples. Additionally, the training data set uses data augmentation. The achievement of the suggested method is assessed on an image’s two data sets of chest X-rays. The suggested model’s efficiency was analyzed using criteria like accuracy, specificity, sensitivity, and F1 score. The suggested method attained an accuracy of 94% worst, 97% average, and 100% best cases, respectively, and an F1-score of 96% worst, 98% average and 100% best cases, respectively.
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- 2022
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9. The Role of ML, AI and 5G Technology in Smart Energy and Smart Building Management
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Tehseen Mazhar, Muhammad Amir Malik, Inayatul Haq, Iram Rozeela, Inam Ullah, Muhammad Abbas Khan, Deepak Adhikari, Mohamed Tahar Ben Othman, and Habib Hamam
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Computer Networks and Communications ,Hardware and Architecture ,Control and Systems Engineering ,Signal Processing ,5G technology ,sustainability ,smart building facilities ,machine learning ,management building environment ,Electrical and Electronic Engineering - Abstract
With the help of machine learning, many tasks can be automated. The use of computers and mobile devices in “intelligent” buildings may make tasks such as controlling the indoor climate, monitoring security, and performing routine maintenance much easier. Intelligent buildings employ the Internet of Things to establish connections among the many components that make up the structure. As the notion of the Internet of Things (IoT) gains attraction, smart grids are being integrated into larger networks. The IoT is an integral part of smart grids since it enables beneficial services that improve the experience for everyone inside and individuals are protected because of tried-and-true life support systems. The reason for installing Internet of Things gadgets in smart structures is the primary focus of this investigation. In this context, the infrastructure behind IoT devices and their component units is of the highest concern.
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- 2022
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10. A Large Scale Evolutionary Algorithm Based on Determinantal Point Processes for Large Scale Multi-Objective Optimization Problems
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Michael Okoth, Ronghua Shang, Licheng Jiao, Jehangir Arshad, Ateeq Rehman, and Habib Hamam
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large-scale multi-objective problems ,determinantal point processes (DPP) ,evolutionary multiobjective optimization ,cutting-edge algorithms ,Computer Networks and Communications ,Hardware and Architecture ,Control and Systems Engineering ,Signal Processing ,Electrical and Electronic Engineering - Abstract
Global optimization challenges are frequent in scientific and engineering areas where loads of evolutionary computation methods i.e., differential evolution (DE) and particle-swarm optimization (PSO) are employed to handle these problems. However, the performance of these algorithms declines due to expansion in the problem dimension. The evolutionary algorithms are obstructed to congregate with the Pareto front rapidly while using the large-scale optimization algorithm. This work intends a large-scale multi-objective evolutionary optimization scheme aided by the determinantal point process (LSMOEA-DPPs) to handle this problem. The proposed DPP model introduces a mechanism consisting of a kernel matrix and a probability model to achieve convergence and population variety in high dimensional relationship balance to keep the population diverse. We have also employed elitist non-dominated sorting for environmental selection. Moreover, the projected algorithm also demonstrates and distinguishes four cutting-edge algorithms, each with two and three objectives, respectively, and up to 2500 decision variables. The experimental results show that LSMOEA-DPPs outperform four cutting-edge multi-objective evolutionary algorithms by a large margin.
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- 2022
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11. Classification of EEG Using Adaptive SVM Classifier with CSP and Online Recursive Independent Component Analysis
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Mary Judith Antony, Baghavathi Priya Sankaralingam, Rakesh Kumar Mahendran, Akber Abid Gardezi, Muhammad Shafiq, Jin-Ghoo Choi, and Habib Hamam
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Support Vector Machine ,Brain-Computer Interfaces ,Discriminant Analysis ,Electroencephalography ,Signal Processing, Computer-Assisted ,Electrical and Electronic Engineering ,Artifacts ,Biochemistry ,Instrumentation ,Atomic and Molecular Physics, and Optics ,Algorithms ,Analytical Chemistry ,electroencephalogram ,adaptive classifier ,support vector machine ,common spatial pattern ,online recursive independent component analysis - Abstract
An efficient feature extraction method for two classes of electroencephalography (EEG) is demonstrated using Common Spatial Patterns (CSP) with optimal spatial filters. However, the effects of artifacts and non-stationary uncertainty are more pronounced when CSP filtering is used. Furthermore, traditional CSP methods lack frequency domain information and require many input channels. Therefore, to overcome this shortcoming, a feature extraction method based on Online Recursive Independent Component Analysis (ORICA)-CSP is proposed. For EEG-based brain—computer interfaces (BCIs), especially online and real-time BCIs, the most widely used classifiers used to be linear discriminant analysis (LDA) and support vector machines (SVM). Previous evaluations clearly show that SVMs generally outperform other classifiers in terms of performance. In this case, Adaptive Support Vector Machine (A-SVM) is used for classification together with the ORICA-CSP method. The results are promising, and the experiments are performed on EEG data of 4 classes’ motor images, namely Dataset 2a of BCI Competition IV.
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- 2022
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12. An Optimal Use of SCE-UA Method Cooperated With Superpixel Segmentation for Pansharpening
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Hind Hallabia, Ahmed Ben Hamida, and Habib Hamam
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Superpixel segmentation ,business.industry ,Computer science ,Multispectral image ,Pattern recognition ,Artificial intelligence ,Image segmentation ,Electrical and Electronic Engineering ,Geotechnical Engineering and Engineering Geology ,business ,Cluster analysis ,Panchromatic film ,Image (mathematics) - Abstract
Pansharpening is achieved by inferring spatial details derived from a PANchromatic (PAN) image into its corresponding expanded multispectral (MS) bands. In this letter, we propose to apply an adaptive superpixel-based injection scheme that modulates the PAN details through an optimization procedure. Optimal injection coefficients can be locally estimated by using the shuffled complex evolution developed in the University of Arizona (SCE-UA) algorithm over multiple local segments (i.e., superpixels) resulting from the simple linear iterative clustering (SLIC) method. The performance of the proposed approach is assessed using degraded and real data sets acquired from WorldView-3 and WorldView-4 satellites. Experimental results show the suitability of the proposed adaptive injection scheme compared with other state-of-the-art pansharpening methods in terms of spatial and spectral qualities.
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- 2021
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13. An Optimized Solution for Fault Detection and Location in Underground Cables Based on Traveling Waves
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Rizwan Tariq, Ibrahim Alhamrouni, Ateeq Ur Rehman, Elsayed Tag Eldin, Muhammad Shafiq, Nivin A. Ghamry, and Habib Hamam
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Control and Optimization ,Renewable Energy, Sustainability and the Environment ,Energy Engineering and Power Technology ,wavelet transform ,fault detection ,fault location ,circuit breakers ,Newton–Raphson analysis ,Building and Construction ,Electrical and Electronic Engineering ,Engineering (miscellaneous) ,Energy (miscellaneous) - Abstract
Faults in the power system affect the reliability, safety, and stability. Power-distribution systems are familiar with the different faults that can damage the overall performance of the entire system, from which they need to be effectively cleared. Underground power systems are more complex and require extra accuracy in fault detection and location for optimum fault management. Slow processing and the unavailability of a protection zone for relay coordination are concerns in fault detection and location, as these reduce the performance of power-protection systems. In this regard, this article proposes an optimized solution for a fault detection and location framework for underground cables based on a discrete wavelet transform (DWT). The proposed model supports area detection, the identification of faulty sections, and fault location. To overcome the abovementioned facts, we optimize the relay coordination for the overcurrent and timing relays. The proposed protection zone has two sequential stages for the current and time at which it optimizes the current and time settings of the connected relays through Newton–Raphson analysis (NRA). Moreover, the traveling times for the DWT are modeled, which relate to the protection zone provided by the relay coordination, and the faulty line that is identified as the relay protection is not overlapped. The model was tested for 132 kV/11 kV and 16-node networks for underground cables, and the obtained results show that the proposed model can detect and locate the cable’s faults speedily, as it detects the fault in 0.01 s, and at the accurate location. MATLAB/Simulink (DigSILENT Toolbox) is used to establish the underground network for fault location and detection.
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- 2022
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14. Load Management and Optimal Sizing of Special-Purpose Microgrids Using Two Stage PSO-Fuzzy Based Hybrid Approach
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Fawad Azeem, Ashfaq Ahmad, Taimoor Muzaffar Gondal, Jehangir Arshad, Ateeq Ur Rehman, Elsayed M. Tag Eldin, Muhammad Shafiq, and Habib Hamam
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Control and Optimization ,Renewable Energy, Sustainability and the Environment ,load factor ,special-purpose microgrid ,economic dispatch ,fuzzy logic ,load management ,Energy Engineering and Power Technology ,Building and Construction ,Electrical and Electronic Engineering ,Engineering (miscellaneous) ,Energy (miscellaneous) - Abstract
The sizing of microgrids depends on the type of load and its operational hours. The significance of understanding the load operational characteristics in special purpose islanded microgrids is much needed for economic system sizing. The load operation of special-purpose microgrids often consumes high power for a short duration and remains idle most of the time, thus reducing the load factor. The inclusion of such loads in microgrid sizing causes huge capital costs making islanded microgrids an unfeasible solution. The islanded microgrid under study is an agricultural microgrid in a village having a small Crab Processing Plant (CPP) and a Domestic Sector (DS). The CPP constitutes the major power consumption. The community has a unique load consumption trend that is dependent on the highly uncertain parameter of availability of the crabs. Interestingly, crab availability is an independent parameter and cannot be accurately scheduled. The existing system sizing of the microgrid is performed based on the conventional methods that consider the CPP for full-day operation. However, the microgrid sources, especially the storage system may be reflected as oversized if the crab processing plants do not operate for several days due to the uncertain behavior of CPP causing enormous power wastage. In this paper, an integrated fixed and operational mode strategy for uncertain heavy loads is formulated. The proposed algorithm is based on the optimal sizing methodology aided by the load scheduling control strategy. The Particle Swarm Optimization technique is used for the optimal sizing integrated with the fuzzy logic controller to manage the available load. The membership functions are available excess power and the state of the charge of storage that defines the operational conditions for CPP. Based on input membership functions, the fuzzy controller decides on power dispatch in DS or CPP, keeping considerable SoC available for night hours. The simulation result shows that the time-dependent fuzzy controller approach manages to provide power to both sectors under optimal sizing while reducing the overall cost by 24% less than the existing microgrid.
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- 2022
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15. Comprehensive Analysis of Network Slicing for the Developing Commercial Needs and Networking Challenges
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Sumbal Zahoor, Ishtiaq Ahmad, Mohamed Tahar Ben Othman, Ali Mamoon, Ateeq Ur Rehman, Muhammad Shafiq, and Habib Hamam
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Machine Learning ,Automation ,Artificial Intelligence ,Communication ,Electrical and Electronic Engineering ,Biochemistry ,Instrumentation ,network slicing ,CSPs ,automation ,orchestration ,code flow ,NS projects ,AI ,ML ,Atomic and Molecular Physics, and Optics ,Analytical Chemistry - Abstract
Network slicing (NS) is one of the most prominent next-generation wireless cellular technology use cases, promising to unlock the core benefits of 5G network architecture by allowing communication service providers (CSPs) and operators to construct scalable and customized logical networks. This, in turn, enables telcos to reach the full potential of their infrastructure by offering customers tailored networking solutions that meet their specific needs, which is critical in an era where no two businesses have the same requirements. This article presents a commercial overview of NS, as well as the need for a slicing automation and orchestration framework. Furthermore, it will address the current NS project objectives along with the complex functional execution of NS code flow. A summary of activities in important standards development groups and industrial forums relevant to artificial intelligence (AI) and machine learning (ML) is also provided. Finally, we identify various open research problems and potential answers to provide future guidance.
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- 2022
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16. Implementation of an Intelligent Exam Supervision System Using Deep Learning Algorithms
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Fatima Mahmood, Jehangir Arshad, Mohamed Tahar Ben Othman, Muhammad Faisal Hayat, Naeem Bhatti, Mujtaba Hussain Jaffery, Ateeq Ur Rehman, and Habib Hamam
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Deep Learning ,Humans ,Neural Networks, Computer ,Electrical and Electronic Engineering ,Biochemistry ,Instrumentation ,Atomic and Molecular Physics, and Optics ,Algorithms ,Analytical Chemistry ,Regional Convolution Neural Network (RCNN) ,Multi-Task Cascaded Convolutional Neural Networks (MTCNN) ,Regional Proposal Network (RPN) ,Convolution Neural Network (CNN) ,Discriminative Deep Belief Network (DDBN) - Abstract
Examination cheating activities like whispering, head movements, hand movements, or hand contact are extensively involved, and the rectitude and worthiness of fair and unbiased examination are prohibited by such cheating activities. The aim of this research is to develop a model to supervise or control unethical activities in real-time examinations. Exam supervision is fallible due to limited human abilities and capacity to handle students in examination centers, and these errors can be reduced with the help of the Automatic Invigilation System. This work presents an automated system for exams invigilation using deep learning approaches i.e., Faster Regional Convolution Neural Network (RCNN). Faster RCNN is an object detection algorithm that is implemented to detect the suspicious activities of students during examinations based on their head movements, and for student identification, MTCNN (Multi-task Cascaded Convolutional Neural Networks) is used for face detection and recognition. The training accuracy of the proposed model is 99.5% and the testing accuracy is 98.5%. The model is fully efficient in detecting and monitoring more than 100 students in one frame during examinations. Different real-time scenarios are considered to evaluate the performance of the Automatic Invigilation System. The proposed invigilation model can be implemented in colleges, universities, and schools to detect and monitor student suspicious activities. Hopefully, through the implementation of the proposed invigilation system, we can prevent and solve the problem of cheating because it is unethical.
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- 2022
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17. Accessing Artificial Intelligence for Fetus Health Status Using Hybrid Deep Learning Algorithm (AlexNet-SVM) on Cardiotocographic Data
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Nadia Muhammad Hussain, Ateeq Ur Rehman, Mohamed Tahar Ben Othman, Junaid Zafar, Haroon Zafar, and Habib Hamam
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Support Vector Machine ,Health Status ,Biochemistry ,Atomic and Molecular Physics, and Optics ,Analytical Chemistry ,Deep Learning ,Fetus ,Artificial Intelligence ,fetus classification ,deep neural networks ,transfer learning ,cardiotocography ,artificial intelligence ,clinical settings ,Humans ,Neural Networks, Computer ,Electrical and Electronic Engineering ,Instrumentation ,Algorithms - Abstract
Artificial intelligence is serving as an impetus in digital health, clinical support, and health informatics for an informed patient’s outcome. Previous studies only consider classification accuracies of cardiotocographic (CTG) datasets and disregard computational time, which is a relevant parameter in a clinical environment. This paper proposes a modified deep neural algorithm to classify untapped pathological and suspicious CTG recordings with the desired time complexity. In our newly developed classification algorithm, AlexNet architecture is merged with support vector machines (SVMs) at the fully connected layers to reduce time complexity. We used an open-source UCI (Machine Learning Repository) dataset of cardiotocographic (CTG) recordings. We divided 2126 CTG recordings into 3 classes (Normal, Pathological, and Suspected), including 23 attributes that were dynamically programmed and fed to our algorithm. We employed a deep transfer learning (TL) mechanism to transfer prelearned features to our model. To reduce time complexity, we implemented a strategy wherein layers in the convolutional base were partially trained to leave others in the frozen states. We used an ADAM optimizer for the optimization of hyperparameters. The presented algorithm also outperforms the leading architectures (RCNNs, ResNet, DenseNet, and GoogleNet) with respect to real-time accuracies, sensitivities, and specificities of 99.72%, 96.67%, and 99.6%, respectively, making it a viable candidate for clinical settings after real-time validation.
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- 2022
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18. IMG‐forensics: Multimedia‐enabled information hiding investigation using convolutional neural network
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Abdullah Ayub Khan, Habib Hamam, Mamoon Rashid, Asif Ali Laghari, Aftab Ahmed Shaikh, Muhammad Shafiq, and Omar Cheikhrouhou
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Multimedia ,Computer science ,Information hiding ,Signal Processing ,Computer Vision and Pattern Recognition ,IMG ,computer.file_format ,Electrical and Electronic Engineering ,computer.software_genre ,Convolutional neural network ,computer ,Software - Published
- 2021
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19. An Effective Color Image Encryption Based on Henon Map, Tent Chaotic Map, and Orthogonal Matrices
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Shamsa Kanwal, Saba Inam, Mohamed Tahar Ben Othman, Ayesha Waqar, Muhammad Ibrahim, Fariha Nawaz, Zainab Nawaz, and Habib Hamam
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tent chaotic map ,Hill cipher ,orthogonal matrix ,Henon map ,peak signal to noise ratio (PSNR) ,number of pixel change rate (NPCR) ,unified average changing intensity (UACI) ,image encryption ,decryption ,Computer Science::Multimedia ,Electrical and Electronic Engineering ,Biochemistry ,Instrumentation ,Atomic and Molecular Physics, and Optics ,Analytical Chemistry ,Computer Science::Cryptography and Security - Abstract
In the last decade, the communication of images through the internet has increased. Due to the growing demands for data transfer through images, protection of data and safe communication is very important. For this purpose, many encryption techniques have been designed and developed. New and secured encryption schemes based on chaos theory have introduced methods for secure as well as fast communication. A modified image encryption process is proposed in this work with chaotic maps and orthogonal matrix in Hill cipher. Image encryption involves three phases. In the first phase, a chaotic Henon map is used for permuting the digital image. In the second phase, a Hill cipher is used whose encryption key is generated by an orthogonal matrix which further is produced from the equation of the plane. In the third phase, a sequence is generated by a chaotic tent map which is later XORed. Chaotic maps play an important role in the encryption process. To deal with the issues of fast and highly secured image processing, the prominent properties of non-periodical movement and non-convergence of chaotic theory play an important role. The proposed scheme is resistant to different attacks on the cipher image. Different tests have been applied to evaluate the proposed technique. The results of the tests such as key space analysis, key sensitivity analysis, and information entropy, histogram correlation of the adjacent pixels, number of pixel change rate (NPCR), peak signal to noise ratio (PSNR), and unified average changing intensity (UCAI) showed that our proposed scheme is an efficient encryption technique. The proposed approach is also compared with some state-of-the-art image encryption techniques. In the view of statistical analysis, we claim that our proposed encryption algorithm is secured.
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- 2022
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20. Match-Level Fusion of Finger-Knuckle Print and Iris for Human Identity Validation Using Neuro-Fuzzy Classifier
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Rohit Srivastava, Ved Prakash Bhardwaj, Mohamed Tahar Ben Othman, Mukesh Pushkarna, null Anushree, Arushi Mangla, Mohit Bajaj, Ateeq Ur Rehman, Muhammad Shafiq, and Habib Hamam
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Biometry ,Databases, Factual ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Iris ,Biochemistry ,Atomic and Molecular Physics, and Optics ,Analytical Chemistry ,Fingers ,ComputingMethodologies_PATTERNRECOGNITION ,Humans ,Neural Networks, Computer ,Electrical and Electronic Engineering ,FKP ,iris ,SIFT ,SURF ,biometric fusion ,FAR ,FRR ,log Gabor wavelet ,Instrumentation - Abstract
Biometrics is the term for measuring human characteristics. If the term is divided into two parts, bio means life, and metric means measurement. The measurement of humans through different computational methods is performed to authorize a person. This measurement can be performed via a single biometric or by using a combination of different biometric traits. The combination of multiple biometrics is termed biometric fusion. It provides a reliable and secure authentication of a person at a higher accuracy. It has been introduced in the UIDIA framework in India (AADHAR: Association for Development and Health Action in Rural) and in different nations to figure out which biometric characteristics are suitable enough to authenticate the human identity. Fusion in biometric frameworks, especially FKP (finger–knuckle print) and iris, demonstrated to be a solid multimodal as a secure framework. The proposed approach demonstrates a proficient and strong multimodal biometric framework that utilizes FKP and iris as biometric modalities for authentication, utilizing scale-invariant feature transform (SIFT) and speeded up robust features (SURF). Log Gabor wavelet is utilized to extricate the iris feature set. From the extracted region, features are computed using principal component analysis (PCA). Both biometric modalities, FKP and iris, are combined at the match score level. The matching is performed using a neuro-fuzzy neural network classifier. The execution and accuracy of the proposed framework are tested on the open database Poly-U, CASIA, and an accuracy of 99.68% is achieved. The accuracy is higher compared to a single biometric. The neuro-fuzzy approach is also tested in comparison to other classifiers, and the accuracy is 98%. Therefore, the fusion mechanism implemented using a neuro-fuzzy classifier provides the best accuracy compared to other classifiers. The framework is implemented in MATLAB 7.10.
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- 2022
21. Forensic Analysis on Internet of Things (IoT) Device Using Machine-to-Machine (M2M) Framework
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Muhammad Shoaib Mazhar, Yasir Saleem, Ahmad Almogren, Jehangir Arshad, Mujtaba Hussain Jaffery, Ateeq Ur Rehman, Muhammad Shafiq, and Habib Hamam
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Computer Networks and Communications ,Hardware and Architecture ,Control and Systems Engineering ,Signal Processing ,cyber security ,machine learning ,internet of things (IoT) ,forensic analysis ,machine-to-machine (M2M) ,attack detection ,Electrical and Electronic Engineering - Abstract
The versatility of IoT devices increases the probability of continuous attacks on them. The low processing power and low memory of IoT devices have made it difficult for security analysts to keep records of various attacks performed on these devices during forensic analysis. The forensic analysis estimates how much damage has been done to the devices due to various attacks. In this paper, we have proposed an intelligent forensic analysis mechanism that automatically detects the attack performed on IoT devices using a machine-to-machine (M2M) framework. Further, the M2M framework has been developed using different forensic analysis tools and machine learning to detect the type of attacks. Additionally, the problem of an evidence acquisition (attack on IoT devices) has been resolved by introducing a third-party logging server. Forensic analysis is also performed on logs using forensic server (security onion) to determine the effect and nature of the attacks. The proposed framework incorporates different machine learning (ML) algorithms for the automatic detection of attacks. The performance of these models is measured in terms of accuracy, precision, recall, and F1 score. The results indicate that the decision tree algorithm shows the optimum performance as compared to the other algorithms. Moreover, comprehensive performance analysis and results presented validate the proposed model.
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- 2022
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22. Investigation and Field Measurements for Demand Side Management Control Technique of Smart Air Conditioners located at Residential, Commercial, and Industrial Sites
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Bilal Masood, Song Guobing, Jamel Nebhen, Ateeq Ur Rehman, Muhammad Naveed Iqbal, Iftikhar Rasheed, Mohit Bajaj, Muhammad Shafiq, and Habib Hamam
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demand response ,demand side management ,low voltage ,medium voltage ,narrowband power line communications ,Control and Optimization ,Renewable Energy, Sustainability and the Environment ,Energy Engineering and Power Technology ,Electrical and Electronic Engineering ,Engineering (miscellaneous) ,Energy (miscellaneous) - Abstract
This paper investigates the response and characteristics of the narrowband power line communication (NB-PLC) technique for the effective control of electric appliances such as smart air conditioners (SACs) for demand side management (DSM) services. The expression for temperature sensitivity by examining the influence of atmospheric temperature variations on power consumption profile of all possible types of loads, i.e., residential, commercial, and industrial loads is derived and analyzed. Comprehensive field measurements on these power consumers are carried out in Lahore, Pakistan. The responses of low voltage channels, medium voltage channels, and transformer bridge for a 3–500 kHz NB-PLC frequency range are presented for DSM services. The master control room transmits control commands for the thermostat settings of SACs over power lines, crossing the transformer bridge to reach the SACs of power consumers by using communication protocol smart energy profile 1.0. The comparison of hourly and daily power consumption profiles under evaluation loads, by analyzing typical and variable frequency air conditioners on setting thermostat temperature at 25 °C and 27 °C conventionally and then by using DSM control technique, is analyzed. A prominent reduction in power consumption is found with the implementation of the DSM control technique.
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- 2022
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23. Dynamic Learning Framework for Smooth-Aided Machine-Learning-Based Backbone Traffic Forecasts
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Mohamed Khalafalla Hassan, Sharifah Hafizah Syed Ariffin, N. Effiyana Ghazali, Mutaz Hamad, Mosab Hamdan, Monia Hamdi, Habib Hamam, and Suleman Khan
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Big Data ,Machine Learning ,Memory, Long-Term ,traffic forecast ,slice ,local smoothing ,LSTM ,dynamic learning ,Neural Networks, Computer ,Electrical and Electronic Engineering ,I190 ,Biochemistry ,Instrumentation ,Atomic and Molecular Physics, and Optics ,Analytical Chemistry ,Forecasting - Abstract
Recently, there has been an increasing need for new applications and services such as big data, blockchains, vehicle-to-everything (V2X), the Internet of things, 5G, and beyond. Therefore, to maintain quality of service (QoS), accurate network resource planning and forecasting are essential steps for resource allocation. This study proposes a reliable hybrid dynamic bandwidth slice forecasting framework that combines the long short-term memory (LSTM) neural network and local smoothing methods to improve the network forecasting model. Moreover, the proposed framework can dynamically react to all the changes occurring in the data series. Backbone traffic was used to validate the proposed method. As a result, the forecasting accuracy improved significantly with the proposed framework and with minimal data loss from the smoothing process. The results showed that the hybrid moving average LSTM (MLSTM) achieved the most remarkable improvement in the training and testing forecasts, with 28% and 24% for long-term evolution (LTE) time series and with 35% and 32% for the multiprotocol label switching (MPLS) time series, respectively, while robust locally weighted scatter plot smoothing and LSTM (RLWLSTM) achieved the most significant improvement for upstream traffic with 45%; moreover, the dynamic learning framework achieved improvement percentages that can reach up to 100%.
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- 2022
24. Automated Detection of Alzheimer’s via Hybrid Classical Quantum Neural Networks
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Tayyaba Shahwar, Junaid Zafar, Ahmad Almogren, Haroon Zafar, Ateeq Rehman, Muhammad Shafiq, and Habib Hamam
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Computer Networks and Communications ,Hardware and Architecture ,Control and Systems Engineering ,Signal Processing ,machine learning ,deep neural network ,quantum computing ,quantum machine learning ,quantum neural network ,Alzheimer’s disease ,Electrical and Electronic Engineering - Abstract
Deep Neural Networks have offered numerous innovative solutions to brain-related diseases including Alzheimer’s. However, there are still a few standpoints in terms of diagnosis and planning that can be transformed via quantum Machine Learning (QML). In this study, we present a hybrid classical–quantum machine learning model for the detection of Alzheimer’s using 6400 labeled MRI scans with two classes. Hybrid classical–quantum transfer learning is used, which makes it possible to optimally pre-process complex and high-dimensional data. Classical neural networks extract high-dimensional features and embed informative feature vectors into a quantum processor. We use resnet34 to extract features from the image and feed a 512-feature vector to our quantum variational circuit (QVC) to generate a four-feature vector for precise decision boundaries. Adam optimizer is used to exploit the adaptive learning rate corresponding to each parameter based on first- and second-order gradients. Furthermore, to validate the model, different quantum simulators (PennyLane, qiskit.aer and qiskit.basicaer) are used for the detection of the demented and non-demented images. The learning rate is set to 10−4 for and optimized quantum depth of six layers, resulting in a training accuracy of 99.1% and a classification accuracy of 97.2% for 20 epochs. The hybrid classical–quantum network significantly outperformed the classical network, as the classification accuracy achieved by the classical transfer learning model was 92%. Thus, a hybrid transfer-learning model is used for binary detection, in which a quantum circuit improves the performance of a pre-trained ResNet34 architecture. Therefore, this work offers a method for selecting an optimal approach for detecting Alzheimer’s disease. The proposed model not only allows for the automated detection of Alzheimer’s but would also speed up the process significantly in clinical settings.
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- 2022
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25. Performance Analysis of Mars-Powered Descent-Based Landing in a Constrained Optimization Control Framework
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Adnan Khalid, Mujtaba Hussain Jaffery, Muhammad Yaqoob Javed, Adnan Yousaf, Jehangir Arshad, Ateeq Ur Rehman, Aun Haider, Maha M. Althobaiti, Muhammad Shafiq, and Habib Hamam
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Mars landing ,powered descent ,explicit model predictive control ,unmanned aerial vehicle (UAV) ,Technology ,Control and Optimization ,Renewable Energy, Sustainability and the Environment ,Energy Engineering and Power Technology ,Electrical and Electronic Engineering ,Engineering (miscellaneous) ,Energy (miscellaneous) - Abstract
It is imperative to find new places other than Earth for the survival of human beings. Mars could be the alternative to Earth in the future for us to live. In this context, many missions have been performed to examine the planet Mars. For such missions, planetary precision landing is a major challenge for the precise landing on Mars. Mars landing consists of different phases (hypersonic entry, parachute descent, terminal descent comprising gravity turn, and powered descent). However, the focus of this work is the powered descent phase of landing. Firstly, the main objective of this study is to minimize the landing error during the powered descend landing phase. The second objective involves constrained optimization in a predictive control framework for landing at non-cooperative sites. Different control algorithms like PID and LQR have been developed for the stated problem; however, the predictive control algorithm with constraint handling’s ability has not been explored much. This research discusses the Model Predictive Control algorithm for the powered descent phase of landing. Model Predictive Control (MPC) considers input/output constraints in the calculation of the control law and thus it is very useful for the stated problem as shown in the results. The main novelty of this work is the implementation of Explicit MPC, which gives comparatively less computational time than MPC. A comparison is done among MPC variants in terms of feasibility, constraints handling, and computational time. Moreover, other conventional control algorithms like PID and LQR are compared with the proposed predictive algorithm. These control algorithms are implemented on quadrotor UAV (which emulates the dynamics of a planetary lander) to verify the feasibility through simulations in MATLAB.
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- 2021
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26. Prioritising Organisational Factors Impacting Cloud ERP Adoption and the Critical Issues Related to Security, Usability, and Vendors: A Systematic Literature Review
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Sayeed Salih, Mosab Hamdan, Abdelzahir Abdelmaboud, Ahmed Abdelaziz, Samah Abdelsalam, Maha M. Althobaiti, Omar Cheikhrouhou, Habib Hamam, and Faiz Alotaibi
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cloud enterprise resource planning (CERP) ,Chemical technology ,enterprise resource planning (ERP) ,cloud computing ,Commerce ,TP1-1185 ,security ,vendors ,critical success factor (CSF) ,Biochemistry ,Atomic and Molecular Physics, and Optics ,Article ,Analytical Chemistry ,impacting factor ,usability ,Electrical and Electronic Engineering ,integrative model ,Instrumentation ,adoption - Abstract
Cloud ERP is a type of enterprise resource planning (ERP) system that runs on the vendor’s cloud platform instead of an on-premises network, enabling companies to connect through the Internet. The goal of this study was to rank and prioritise the factors driving cloud ERP adoption by organisations and to identify the critical issues in terms of security, usability, and vendors that impact adoption of cloud ERP systems. The assessment of critical success factors (CSFs) in on-premises ERP adoption and implementation has been well documented; however, no previous research has been carried out on CSFs in cloud ERP adoption. Therefore, the contribution of this research is to provide research and practice with the identification and analysis of 16 CSFs through a systematic literature review, where 73 publications on cloud ERP adoption were assessed from a range of different conferences and journals, using inclusion and exclusion criteria. Drawing from the literature, we found security, usability, and vendors were the top three most widely cited critical issues for the adoption of cloud-based ERP; hence, the second contribution of this study was an integrative model constructed with 12 drivers based on the security, usability, and vendor characteristics that may have greater influence as the top critical issues in the adoption of cloud ERP systems. We also identified critical gaps in current research, such as the inconclusiveness of findings related to security critical issues, usability critical issues, and vendor critical issues, by highlighting the most important drivers influencing those issues in cloud ERP adoption and the lack of discussion on the nature of the criticality of those CSFs. This research will aid in the development of new strategies or the revision of existing strategies and polices aimed at effectively integrating cloud ERP into cloud computing infrastructure. It will also allow cloud ERP suppliers to determine organisations’ and business owners’ expectations and implement appropriate tactics. A better understanding of the CSFs will narrow the field of failure and assist practitioners and managers in increasing their chances of success.
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- 2021
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27. A Detailed Testing Procedure of Numerical Differential Protection Relay for EHV Auto Transformer
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Umer Ehsan, Muhammad Jawad, Umar Javed, Khurram Shabih Zaidi, Ateeq Ur Rehman, Anton Rassõlkin, Maha M. Althobaiti, Habib Hamam, and Muhammad Shafiq
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current measurement ,Technology ,Control and Optimization ,Renewable Energy, Sustainability and the Environment ,Energy Engineering and Power Technology ,relays ,testing ,power transformers ,current transformers ,power system protection ,Electrical and Electronic Engineering ,Engineering (miscellaneous) ,Energy (miscellaneous) - Abstract
In power systems, the programmable numerical differential relays are widely used for the protection of generators, bus bars, transformers, shunt reactors, and transmission lines. Retrofitting of relays is the need of the hour because lack of proper testing techniques and misunderstanding of vital procedures may result in under performance of the overall protection system. Lack of relay’s proper testing provokes an unpredictability in its behavior, that may prompt tripping of a healthy power system. Therefore, the main contribution of the paper is to prepare a step-by-step comprehensive procedural guideline for practical implementation of relay testing procedures and a detailed insight analysis of relay’s settings for the protection of an Extra High Voltage (EHV) auto transformer. The experimental results are scrutinized to document a detailed theoretical and technical analysis. Moreover, the paper also covers shortcomings of existing literature by documenting specialized literature that covers all aspects of protection relays, i.e., from basics of electromechanical domain to the technicalities of the numerical differential relay covering its detailed testing from different reputed manufacturers. A secondary injection relay test set is used for detailed testing of differential relay under test, and the S1 Agile software is used for protection relay settings, configuration modification, and detailed analysis.
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- 2021
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28. Design and Optimization of Microwave Sensor for the Non-Contact Measurement of Pure Dielectric Materials
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Luqman Ali, Cong Wang, Inam Ullah, Adnan Yousaf, Wali Ullah Khan, Shafi Ullah, Rahim Khan, Fawaz Alassery, Habib Hamam, and Muhammad Shafiq
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non-contact ,TK7800-8360 ,air gap ,electric field ,microwave sensor ,optimized ,Computer Networks and Communications ,Hardware and Architecture ,Control and Systems Engineering ,Signal Processing ,Electrical and Electronic Engineering ,Electronics - Abstract
This article presents an optimized microwave sensor for the non-contact measurement of complex permittivity and material thickness. The layout of the proposed sensor comprises the parallel combination of an interdigital capacitor (IDC) loaded at the center of the symmetrical differential bridge-type inductor fabricated on an RF-35 substrate (εr = 3.5 and tanδ = 0.0018). The bridge-type differential inductor is introduced to obtain a maximum inductance value with high quality (Q) factor and low tunable resonant frequency. The central IDC structure is configured as a spur-line structure to create a high-intensity coupled electric field (e-field) zone, which significantly interacts with the materials under test (MUTs), resulting in an increased sensitivity. The proposed sensor prototype with optimized parameters generates a resonant frequency at 1.38 GHz for measuring the complex permittivity and material thickness. The experimental results indicated that the resonant frequency of the designed sensor revealed high sensitivities of 41 MHz/mm for thickness with a linear response (r2 = 0.91567), and 53 MHz/Δεr for permittivity with a linear response (r2 = 0.98903). The maximum error ratio for measuring MUTs with a high gap of 0.3 mm between the testing sample and resonator is 6.52%. The presented performance of the proposed sensor authenticates its application in the non-contact measurement of samples based on complex permittivity and thickness.
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- 2021
29. Energy Efficient UAV Flight Path Model for Cluster Head Selection in Next-Generation Wireless Sensor Networks
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Syed Kamran Haider, Aimin Jiang, Ahmad Almogren, Ateeq Ur Rehman, Abbas Ahmed, Wali Ullah Khan, and Habib Hamam
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cluster balanced structure ,Chemical technology ,next-generation wireless sensor network ,clustering ,UAV flight path modeling ,TP1-1185 ,Electrical and Electronic Engineering ,Biochemistry ,Instrumentation ,Atomic and Molecular Physics, and Optics ,Article ,Analytical Chemistry - Abstract
Wireless sensor networks (WSNs) are one of the fundamental infrastructures for Internet of Things (IoTs) technology. Efficient energy consumption is one of the greatest challenges in WSNs because of its resource-constrained sensor nodes (SNs). Clustering techniques can significantly help resolve this issue and extend the network’s lifespan. In clustering, WSN is divided into various clusters, and a cluster head (CH) is selected in each cluster. The selection of appropriate CHs highly influences the clustering technique, and poor cluster structures lead toward the early death of WSNs. In this paper, we propose an energy-efficient clustering and cluster head selection technique for next-generation wireless sensor networks (NG-WSNs). The proposed clustering approach is based on the midpoint technique, considering residual energy and distance among nodes. It distributes the sensors uniformly creating balanced clusters, and uses multihop communication for distant CHs to the base station (BS). We consider a four-layer hierarchical network composed of SNs, CHs, unmanned aerial vehicle (UAV), and BS. The UAV brings the advantage of flexibility and mobility; it shortens the communication range of sensors, which leads to an extended lifetime. Finally, a simulated annealing algorithm is applied for the optimal trajectory of the UAV according to the ground sensor network. The experimental results show that the proposed approach outperforms with respect to energy efficiency and network lifetime when compared with state-of-the-art techniques from recent literature.
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- 2021
30. Financial Hazard Prediction Due to Power Outages Associated with Severe Weather-Related Natural Disaster Categories
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Rafal Ali, Ikramullah Khosa, Ammar Armghan, Jehangir Arshad, Sajjad Rabbani, Naif Alsharabi, and Habib Hamam
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Control and Optimization ,electric power ,severe weather disasters ,revenue loss ,prediction ,Renewable Energy, Sustainability and the Environment ,Energy Engineering and Power Technology ,Building and Construction ,Electrical and Electronic Engineering ,Engineering (miscellaneous) ,Energy (miscellaneous) - Abstract
Severe weather conditions not only damage electric power infrastructure, and energy systems, but also affect millions of users, including residential, commercial or industrial consumers. Moreover, power outages due to weather-related natural disasters have been causing financial losses worth billions of US dollars. In this paper, we analyze the impact of power outages on the revenue of electric power suppliers, particularly due to the top five weather-related natural disasters. For this purpose, reliable and publicly available power outage events data are considered. The data provide the time of the outage event, the geographic region, electricity consumption and tariffs, social and economic indicators, climatological annotation, consumer category distribution, population and land area, and so forth. An exploratory analysis is carried out to reveal the impact of weather-related disasters and the associated electric power revenue risk. The top five catastrophic weather-related natural disaster categories are investigated individually to predict the related revenue loss. The most influencing parameters contributing to efficient prediction are identified and their partial dependence on revenue loss is illustrated. It was found that the electric power revenue associated with weather-related natural disasters is a function of several parameters, including outage duration, number of customers, tariffs and economic indicators. The findings of this research will help electric power suppliers estimate revenue risk, as well as authorities to make risk-informed decisions regarding the energy infrastructure and systems planning.
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- 2022
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31. Agricultural Lightweight Embedded Blockchain System: A Case Study in Olive Oil
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Jalel Ktari, Tarek Frikha, Faten Chaabane, Monia Hamdi, and Habib Hamam
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olive oil ,Ethereum ,Quorum ,traceability ,raspberry PI ,IoT ,Blockchain ,smart contract ,Computer Networks and Communications ,Hardware and Architecture ,Control and Systems Engineering ,Signal Processing ,Electrical and Electronic Engineering - Abstract
In Tunisia, one of the major problems of the olive oil industry is marketing. Several factors have an impact, such as quality, originality, lobbying, subsidies and the certification of extra virgin olive oil. The major problem remains the traceability of the production process to guarantee the origin of the food at all times. This fine-grained traceability can be achieved by applying Blockchain technologies. Blockchain can be used as a solution that could bring visibility to the oil supply chain. It is proposed in order to guarantee the veracity of the product information at different stages. In this paper, a multi-Blockchain, multi-sensor traceability system using IoT will be presented. Two Blockchains that can be programmed via Smart Contract will be used. The first one is Quorum, which is a private Blockchain used by the actors of our system, and the second one is Ethereum, which is public and connects the different actors who have access to our system. This smart contract allows us to conta our system to track the olive oil manufacturing process from the farmer, through the oil mill, the transporter and the quality controller to the customer. A general approach for managing the olive oil supply chain is presented. This approach offers the possibility for the system to be configurable. It is based on smart contracts and applications that interact with the same smart contracts. The IoT is used to configure sensors. These sensors are the source of data for the supply chain process. These sensors are connected to the embedded platforms that host Quorum.
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- 2022
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32. Optimal Scheduling of Campus Microgrid Considering the Electric Vehicle Integration in Smart Grid
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Safdar Raza, Muhammad Abrar, Faiza Qayyum, Habib Hamam, Tehreem Nasir, Harun Jamil, Fawaz Alassery, Omar Cheikhrouhou, and Hafiz Abd ul Muqeet
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business.product_category ,energy management ,Energy management ,Computer science ,TP1-1185 ,Biochemistry ,Article ,Energy storage ,Automotive engineering ,Analytical Chemistry ,distributed energy resources ,Electric vehicle ,Electrical and Electronic Engineering ,Instrumentation ,distributed generation ,business.industry ,Chemical technology ,Energy consumption ,renewable energy ,Atomic and Molecular Physics, and Optics ,Renewable energy ,microgrid ,Smart grid ,Distributed generation ,Microgrid ,business ,time of use tariff - Abstract
High energy consumption, rising environmental concerns and depleting fossil fuels demand an increase in clean energy production. The enhanced resiliency, efficiency and reliability offered by microgrids with distributed energy resources (DERs) have shown to be a promising alternative to the conventional grid system. Large-sized commercial customers like institutional complexes have put significant efforts to promote sustainability by establishing renewable energy systems at university campuses. This paper proposes the integration of a photovoltaic (PV) system, energy storage system (ESS) and electric vehicles (EV) at a University campus. An optimal energy management system (EMS) is proposed to optimally dispatch the energy from available energy resources. The problem is mapped in a Linear optimization problem and simulations are carried out in MATLAB. Simulation results showed that the proposed EMS ensures the continuous power supply and decreases the energy consumption cost by nearly 45%. The impact of EV as a storage tool is also observed. EVs acting as a source of energy reduced the energy cost by 45.58% and as a load by 19.33%. The impact on the cost for continuous power supply in case of a power outage is also analyzed.
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- 2021
33. An Optimized Fuzzy Based Control Solution for Frequency Oscillation Reduction in Electric Grids
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Hina Maqbool, Adnan Yousaf, Rao Muhammad Asif, Ateeq Ur Rehman, Elsayed Tag Eldin, Muhammad Shafiq, and Habib Hamam
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Control and Optimization ,Renewable Energy, Sustainability and the Environment ,Energy Engineering and Power Technology ,Building and Construction ,Electrical and Electronic Engineering ,Engineering (miscellaneous) ,distributed generation ,cascaded controller ,fuzzy PD-PI controller ,grasshopper optimization algorithm ,Energy (miscellaneous) - Abstract
The demand for uninterruptible electricity supply is increasing, and the power engineering sector has started researching alternative solutions. Distributed generation (DG) dissemination into the electric grid to cope with the accelerating demand for electricity is taken into consideration. However, its integration with the traditional grid is a key task as sudden changes in load and their fickle nature cause the frequency to deviate from its adjusted range and affect the grid’s reliability. Moreover, the increased use of DG will significantly impact power system frequency response, posing a new challenge to the traditional power system frequency framework. Therefore, maintaining the frequency within the nominal range can improve its reliability. This deviation should be removed within a few seconds to keep the system’s frequency stable so that supply and demand are balanced. In a traditional grid system, the controllers installed at the generation side help to control the system’s frequency. These generators have capital installation costs that are not desirable for system operators. Therefore, this article proposed a comprehensive control framework to enable high penetration of DG while still providing adequate frequency response. This is accomplished by investigating a grasshopper optimization algorithm-based (GOA) fuzzy PD-PI controller (FPD-PI) for analyzing frequency control and optimizing the FPD-PI controller gains to minimize the frequency fluctuations. In this paper, interconnected hybrid power systems (HPS) are considered. In this study, the response of a system is analyzed, and the results validate that the oscillations in frequency are substantially reduced by the proposed controller. Moreover, our model is the best option for controlling frequency instead of conventional controllers, as it is efficient and fast to regulate frequency by switching the preferred loads on or off.
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- 2022
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34. Cooperative Energy-Efficient Routing Protocol for Underwater Wireless Sensor Networks
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Irfan Ahmad, Taj Rahman, Asim Zeb, Inayat Khan, Mohamed Tahar Ben Othman, and Habib Hamam
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UWSNs ,energy-efficient routing ,CEER ,PDR ,cooperative routing ,sink node ,Electrical and Electronic Engineering ,Biochemistry ,Instrumentation ,Atomic and Molecular Physics, and Optics ,Analytical Chemistry - Abstract
Underwater wireless sensor networks (UWSNs) contain sensor nodes that sense the data and then transfer them to the sink node or base station. Sensor nodes are operationalized through limited-power batteries. Therefore, improvement in energy consumption becomes critical in UWSNs. Data forwarding through the nearest sensor node to the sink or base station reduces the network’s reliability and stability because it creates a hotspot and drains the energy early. In this paper, we propose the cooperative energy-efficient routing (CEER) protocol to increase the network lifetime and acquire a reliable network. We use the sink mobility scheme to reduce energy consumption by eliminating the hotspot issue. We have divided the area into multiple sections for better deployment and deployed the sink nodes in each area. Sensor nodes generate the data and send it to the sink nodes to reduce energy consumption. We have also used the cooperative technique to achieve reliability in the network. Based on simulation results, the proposed scheme performed better than existing routing protocols in terms of packet delivery ratio (PDR), energy consumption, transmission loss, and end-to-end delay.
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- 2022
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35. Improved Recursive DV-Hop Localization Algorithm with RSSI Measurement for Wireless Sensor Networks
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Sana Messous, Habib Hamam, Omar Cheikhrouhou, and Hend Liouane
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Polynomial ,Computer science ,DV-Hop ,02 engineering and technology ,TP1-1185 ,Biochemistry ,Article ,localization ,Analytical Chemistry ,multi-hop algorithms ,Position (vector) ,0202 electrical engineering, electronic engineering, information engineering ,Computer Science::Networking and Internet Architecture ,RSSI ,Electrical and Electronic Engineering ,Instrumentation ,online sequential computation ,Recursive computation ,Chemical technology ,ComputerSystemsOrganization_COMPUTER-COMMUNICATIONNETWORKS ,Process (computing) ,020206 networking & telecommunications ,Atomic and Molecular Physics, and Optics ,Distance-vector routing protocol ,Received signal strength indication ,020201 artificial intelligence & image processing ,localization accuracy ,Hop (telecommunications) ,Wireless sensor network ,Algorithm - Abstract
As localization represents the main backbone of several wireless sensor networks applications, several localization algorithms have been proposed in the literature. There is a growing interest in the multi-hop localization algorithms as they permit the localization of sensor nodes even if they are several hops away from anchor nodes. One of the most famous localization algorithms is the Distance Vector Hop (DV-Hop). Aiming to minimize the large localization error in the original DV-Hop algorithm, we propose an improved DV-Hop algorithm in this paper. The distance between unknown nodes and anchors is estimated using the received signal strength indication (RSSI) and the polynomial approximation. Moreover, the proposed algorithm uses a recursive computation of the localization process to improve the accuracy of position estimation. Experimental results show that the proposed localization technique minimizes the localization error and improves the localization accuracy.
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- 2021
36. Integration and Applications of Fog Computing and Cloud Computing Based on the Internet of Things for Provision of Healthcare Services at Home
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Alam Noor, Ling Lin, Gang Li, Omar Cheikhrouhou, Muhammad Ijaz, Habib Hamam, and Repositório Científico do Instituto Politécnico do Porto
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Internet of things ,Patients ,TK7800-8360 ,Computer Networks and Communications ,Computer science ,media_common.quotation_subject ,Reliability (computer networking) ,MEDLINE ,Cloud computing ,02 engineering and technology ,User requirements document ,patients ,home hospitalization ,Health care ,0202 electrical engineering, electronic engineering, information engineering ,Quality (business) ,Electrical and Electronic Engineering ,Implementation ,Edge computing ,media_common ,business.industry ,cloud computing ,020206 networking & telecommunications ,Data science ,Healthcare staff ,internet of things ,health care ,Hardware and Architecture ,Control and Systems Engineering ,Signal Processing ,Fog computing ,020201 artificial intelligence & image processing ,fog computing ,Electronics ,business ,Home hospitalization - Abstract
Due to the COVID-19 pandemic, the world has faced a significant challenge in the increase of the rate of morbidity and mortality among people, particularly the elderly aged patients. The risk of acquiring infections may increase during the visit of patients to the hospitals. The utilisation of technology such as the “Internet of Things (IoT)” based on Fog Computing and Cloud Computing turned out to be efficient in enhancing the healthcare quality services for the patients. The present paper aims at gaining a better understanding and insights into the most effective and novel IoT-based applications such as Cloud Computing and Fog Computing and their implementations in the healthcare field. The research methodology employed the collection of the information from the databases such as PubMed, Google Scholar, MEDLINE, and Science Direct. There are five research articles selected after 2015 based on the inclusion and exclusion criteria set for the study. The findings of the studies included in this paper indicate that IoT-based Fog Computing and Cloud Computing increase the delivery of healthcare quality services to patients. The technology showed high efficiency in terms of convenience, reliability, safety, and cost-effectiveness. Future studies are required to incorporate the models that provided the best quality services using the Fog and Cloud Computation techniques for the different user requirements. Moreover, edge computing could be used to significantly enhance the provision of health services at home., This research was funded by Taif University Researchers supporting project number (TURSP-2020/55), Taif University, Taif, Saudi Arabia. Omar Cheikhrouhou thanks Taif university for its support under the project Taif University Researchers supporting project number (TURSP-2020/55), Taif University, Taif, Saudi Arabia.
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- 2021
37. Analysis of Security Attacks and Taxonomy in Underwater Wireless Sensor Networks
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Irfan Ahmad, Taj Rahman, Asim Zeb, Inayat Khan, Inam Ullah, Habib Hamam, and Omar Cheikhrouhou
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Technology ,Computer Networks and Communications ,Telecommunication ,ComputerSystemsOrganization_SPECIAL-PURPOSEANDAPPLICATION-BASEDSYSTEMS ,TK5101-6720 ,Electrical and Electronic Engineering ,Information Systems - Abstract
Underwater Wireless Sensor Networks (UWSN) have gained more attention from researchers in recent years due to their advancement in marine monitoring, deployment of various applications, and ocean surveillance. The UWSN is an attractive field for both researchers and the industrial side. Due to the harsh underwater environment, own capabilities, and open acoustic channel, it is also vulnerable to malicious attacks and threats. Attackers can easily take advantage of these characteristics to steal the data between the source and destination. Many review articles are addressed some of the security attacks and taxonomy of the Underwater Wireless Sensor Networks. In this study, we have briefly addressed the taxonomy of the UWSNs from the most recent research articles related to the well-known research databases. This paper also discussed the security threats on each layer of the Underwater Wireless sensor networks. This study will help the researchers design the routing protocols to cover the known security threats and help industries manufacture the devices to observe these threats and security issues.
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- 2021
38. Early-Stage Alzheimer’s Disease Categorization Using PET Neuroimaging Modality and Convolutional Neural Networks in the 2D and 3D Domains
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Ahsan Bin Tufail, Nazish Anwar, Mohamed Tahar Ben Othman, Inam Ullah, Rehan Ali Khan, Yong-Kui Ma, Deepak Adhikari, Ateeq Ur Rehman, Muhammad Shafiq, and Habib Hamam
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Alzheimer Disease ,Positron-Emission Tomography ,Alzheimer’s disease ,binary classification ,multiclass classification ,statistical evaluation ,positron emission tomography ,deep learning ,data augmentation ,Humans ,Cognitive Dysfunction ,Neuroimaging ,Neural Networks, Computer ,Electrical and Electronic Engineering ,Magnetic Resonance Imaging ,Biochemistry ,Instrumentation ,Atomic and Molecular Physics, and Optics ,Analytical Chemistry - Abstract
Alzheimer’s Disease (AD) is a health apprehension of significant proportions that is negatively impacting the ageing population globally. It is characterized by neuronal loss and the formation of structures such as neurofibrillary tangles and amyloid plaques in the early as well as later stages of the disease. Neuroimaging modalities are routinely used in clinical practice to capture brain alterations associated with AD. On the other hand, deep learning methods are routinely used to recognize patterns in underlying data distributions effectively. This work uses Convolutional Neural Network (CNN) architectures in both 2D and 3D domains to classify the initial stages of AD into AD, Mild Cognitive Impairment (MCI) and Normal Control (NC) classes using the positron emission tomography neuroimaging modality deploying data augmentation in a random zoomed in/out scheme. We used novel concepts such as the blurring before subsampling principle and distant domain transfer learning to build 2D CNN architectures. We performed three binaries, that is, AD/NC, AD/MCI, MCI/NC and one multiclass classification task AD/NC/MCI. The statistical comparison revealed that 3D-CNN architecture performed the best achieving an accuracy of 89.21% on AD/NC, 71.70% on AD/MCI, 62.25% on NC/MCI and 59.73% on AD/NC/MCI classification tasks using a five-fold cross-validation hyperparameter selection approach. Data augmentation helps in achieving superior performance on the multiclass classification task. The obtained results support the application of deep learning models towards early recognition of AD.
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- 2022
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39. A Hybrid Deep Learning-Based Approach for Brain Tumor Classification
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Asaf Raza, Huma Ayub, Javed Ali Khan, Ijaz Ahmad, Ahmed S. Salama, Yousef Ibrahim Daradkeh, Danish Javeed, Ateeq Ur Rehman, and Habib Hamam
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deep learning ,brain tumor ,MRI ,transfer learning ,convolutional neural network ,Computer Networks and Communications ,Hardware and Architecture ,Control and Systems Engineering ,Signal Processing ,Electrical and Electronic Engineering - Abstract
Brain tumors (BTs) are spreading very rapidly across the world. Every year, thousands of people die due to deadly brain tumors. Therefore, accurate detection and classification are essential in the treatment of brain tumors. Numerous research techniques have been introduced for BT detection as well as classification based on traditional machine learning (ML) and deep learning (DL). The traditional ML classifiers require hand-crafted features, which is very time-consuming. On the contrary, DL is very robust in feature extraction and has recently been widely used for classification and detection purposes. Therefore, in this work, we propose a hybrid deep learning model called DeepTumorNet for three types of brain tumors (BTs)—glioma, meningioma, and pituitary tumor classification—by adopting a basic convolutional neural network (CNN) architecture. The GoogLeNet architecture of the CNN model was used as a base. While developing the hybrid DeepTumorNet approach, the last 5 layers of GoogLeNet were removed, and 15 new layers were added instead of these 5 layers. Furthermore, we also utilized a leaky ReLU activation function in the feature map to increase the expressiveness of the model. The proposed model was tested on a publicly available research dataset for evaluation purposes, and it obtained 99.67% accuracy, 99.6% precision, 100% recall, and a 99.66% F1-score. The proposed methodology obtained the highest accuracy compared with the state-of-the-art classification results obtained with Alex net, Resnet50, darknet53, Shufflenet, GoogLeNet, SqueezeNet, ResNet101, Exception Net, and MobileNetv2. The proposed model showed its superiority over the existing models for BT classification from the MRI images.
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- 2022
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40. Intelligent Load-Balancing Framework for Fog-Enabled Communication in Healthcare
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Swati Malik, Kamali Gupta, Deepali Gupta, Aman Singh, Muhammad Ibrahim, Arturo Ortega-Mansilla, Nitin Goyal, and Habib Hamam
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Computer Networks and Communications ,Hardware and Architecture ,Control and Systems Engineering ,Signal Processing ,Electrical and Electronic Engineering - Abstract
The present technological era significantly makes use of Internet-of-Things (IoT) devices for offering and implementing healthcare services. Post COVID-19, the future of the healthcare system is highly reliant upon the inculcation of Artificial-Intelligence (AI) mechanisms in its day-to-day procedures, and this is realized in its implementation using sensor-enabled smart and intelligent IoT devices for providing extensive care to patients relative to the symmetric concept. The offerings of such AI-enabled services include handling the huge amount of data processed and sensed by smart medical sensors without compromising the performance parameters, such as the response time, latency, availability, cost and processing time. This has resulted in a need to balance the load of the smart operational devices to avoid any failure of responsiveness. Thus, in this paper, a fog-based framework is proposed that can balance the load among fog nodes for handling the challenging communication and processing requirements of intelligent real-time applications.
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- 2022
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41. AdPSO: Adaptive PSO-Based Task Scheduling Approach for Cloud Computing
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Said Nabi, Masroor Ahmad, Muhammad Ibrahim, and Habib Hamam
- Subjects
task scheduling ,Chemical technology ,PSO ,makespan ,TP1-1185 ,Cloud Computing ,inertia-weight ,Biochemistry ,meta-heuristic ,Atomic and Molecular Physics, and Optics ,Analytical Chemistry ,Heuristics ,Industry ,cloud ,throughput ,Electrical and Electronic Engineering ,Instrumentation ,Algorithms - Abstract
Cloud computing has emerged as the most favorable computing platform for researchers and industry. The load balanced task scheduling has emerged as an important and challenging research problem in the Cloud computing. Swarm intelligence-based meta-heuristic algorithms are considered more suitable for Cloud scheduling and load balancing. The optimization procedure of swarm intelligence-based meta-heuristics consists of two major components that are the local and global search. These algorithms find the best position through the local and global search. To achieve an optimized mapping strategy for tasks to the resources, a balance between local and global search plays an effective role. The inertia weight is an important control attribute to effectively adjust the local and global search process. There are many inertia weight strategies; however, the existing approaches still require fine-tuning to achieve optimum scheduling. The selection of a suitable inertia weight strategy is also an important factor. This paper contributed an adaptive Particle Swarm Optimisation (PSO) based task scheduling approach that reduces the task execution time, and increases throughput and Average Resource Utilization Ratio (ARUR). Moreover, an adaptive inertia weight strategy namely Linearly Descending and Adaptive Inertia Weight (LDAIW) is introduced. The proposed scheduling approach provides a better balance between local and global search leading to an optimized task scheduling. The performance of the proposed approach has been evaluated and compared against five renown PSO based inertia weight strategies concerning makespan and throughput. The experiments are then extended and compared the proposed approach against the other four renowned meta-heuristic scheduling approaches. Analysis of the simulated experimentation reveals that the proposed approach attained up to 10%, 12% and 60% improvement for makespan, throughput and ARUR respectively.
- Published
- 2022
- Full Text
- View/download PDF
42. Feasibility of Solar Grid-Based Industrial Virtual Power Plant for Optimal Energy Scheduling: A Case of Indian Power Sector
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Harpreet Sharma, Sachin Mishra, Javed Dhillon, Naveen Kumar Sharma, Mohit Bajaj, Rizwan Tariq, Ateeq Ur Rehman, Muhammad Shafiq, and Habib Hamam
- Subjects
virtual power plant ,Technology ,Control and Optimization ,Renewable Energy, Sustainability and the Environment ,Energy Engineering and Power Technology ,solar PV ,net-metering ,distributed energy resources ,battery storage ,Electrical and Electronic Engineering ,Engineering (miscellaneous) ,Energy (miscellaneous) - Abstract
The increased popularity of small-scale DER has replaced the well-established concept of conventional generating plants around the world. In the present energy scenario, a significant share of energy production now comes from the grid integrated DERs installed at various consumer premises. These DERs are being renewable-based generates only intermittent power, which in turn makes the scheduling of electrical dispatch a tough task. The Virtual Power Plant (VPP) is a potential solution to this challenge, which coordinates and aggregates the DERs generation into a single controllable profile. In this paper, a modified PSO-based multi-objective optimization is proposed for the VPP scheduling in distribution network applications such as energy cost minimization, peak shaving, and reliability improvement. For feasibility analysis of the VPP, a case study of state power utility is taken, which includes a 90 bus industrial feeder with grid integrated PVs as DER. The optimized results are computed in both grid-connected and autonomous mode reveal that the operating cost, peak demand, and EENS are declined by 31.70%, 23.59%, and 62.30% respectively. The overall results obtained are compared by the results obtained from other well-established optimization techniques and it is found that the proposed technique is comparatively more cost-effective than others.
- Published
- 2022
- Full Text
- View/download PDF
43. Current Harmonic Aggregation Cases for Contemporary Loads
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Kamran Daniel, Lauri Kütt, Muhammad Naveed Iqbal, Noman Shabbir, Ateeq Ur Rehman, Muhammad Shafiq, and Habib Hamam
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Technology ,Control and Optimization ,hosting capacity ,Renewable Energy, Sustainability and the Environment ,Energy Engineering and Power Technology ,LED lighting ,power quality ,photovoltaics ,voltage distortions ,current harmonics ,electric vehicles ,Electrical and Electronic Engineering ,Engineering (miscellaneous) ,Energy (miscellaneous) - Abstract
Power electronic circuits in modern power supplies have improved the conversion efficiency on the one hand but have also increased harmonic emissions. Harmonic currents from the operation of these units affect the voltage waveforms of the network and could compromise the reliability of the network. Load and source non-linearity can, therefore, limit the renewable source’s hosting capacity in the grid, as a large number of inverter units may increase the harmonic distortions. As a result, voltage and current distortions could reach unbearable levels in devices connected to the network. Harmonic estimation modelling often relies on measurement data, and differences may appear in mathematical simulations as the harmonic aggregation or cancellation may generate different results due to the inaccuracies and limitations of the measurement device. In this paper, the effect of harmonic currents cancellation on the aggregation of different load currents is evaluated to show its impact in the network by presenting a comparison between the measurement and mathematical aggregation of harmonics. Furthermore, the harmonic cancellation phenomenon is also qualified for multiple loads connected to the power supply.
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- 2022
- Full Text
- View/download PDF
44. Rapid prototyping of MIMO-OFDM based on parity bit selected and permutation spreading
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Sherif Moussa, Habib Hamam, Claude D'Amours, Adel Omar Dahmane, and Ahmed M. Abdel Razik
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Orthogonal frequency-division multiplexing ,Computer science ,Fast Fourier transform ,MIMO ,020206 networking & telecommunications ,020302 automobile design & engineering ,Data_CODINGANDINFORMATIONTHEORY ,02 engineering and technology ,Spectral efficiency ,MIMO-OFDM ,Computer Science Applications ,0203 mechanical engineering ,Gate array ,Modeling and Simulation ,0202 electrical engineering, electronic engineering, information engineering ,Bit error rate ,Electronic engineering ,Electrical and Electronic Engineering ,Computer Science::Information Theory ,Parity bit - Abstract
In this paper, a novel MIMO-OFDM transmission scheme is developed to effectively enable multi-access by joint code design across multiple antennas, subcarriers, OFDM frames, and users. It achieves better spectrum efficiency while improving bit error rate performance. The proposed scheme uses either parity bit selected or permutation techniques to assign spreading codes at the transmitter side. As a result, the detection at the receiver is greatly improved because of the fact that identifying the spreading codes directly yields the transmitted data symbols. The paper also investigates the field-programmable gate array implementation of the proposed algorithms; optimization techniques are proposed to reduce area, power, and time. These techniques include a pipelined architecture for inverse FFT/FFT blocks, an efficient low complexity algorithm for despreading based on counters and comparators and an optimized architecture for complex matrix inversion using Gauss-Jordan elimination GJ-elimination. Finally, the fixed-point optimized field-programmable gate array architecture for MIMO-OFDM transceiver is developed, where the maximum allowed performance loss because of quantization is defined, the tradeoffs between BER performance and area reduction are investigated. Copyright © 2015 John Wiley & Sons, Ltd.
- Published
- 2015
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45. Effect of clear atmospheric turbulence on quality of free space optical communications in Yemen
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Habib Hamam, Khaleel Saeed Altowij, and Abdulsalam Alkholidi
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Physics ,Scintillation ,business.industry ,Transmitter ,Optical communication ,Clear-air turbulence ,Electronic, Optical and Magnetic Materials ,Optics ,Signal-to-noise ratio ,Broadband ,Bit error rate ,Wireless ,Electrical and Electronic Engineering ,business - Abstract
Free space optical (FSO) communication is one of the most recently developed modes of wireless communication. FSO is a technique used to convey data carried by a laser beam through the atmosphere. While FSO offers a broadband service, it requires a line of sight communication between the transmitter and receiver. The atmosphere has effects on the laser beam passing through it. For instance, the quality of data received is affected by the scattering and atmospheric turbulence. The atmospheric turbulence is caused by both temporary and special random fluctuations of the refractive index along the optical propagation path. Clear air turbulence impairs the performance of the FSO due to the fluctuation in the intensity of the laser beam. By referring to the two criteria, namely bit error rate (BER) and signal to noise ratio (SNR), this work includes analysis of the effect of atmospheric turbulence on FSO systems in Yemen by using an appropriate model.
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- 2010
- Full Text
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46. Web-Based Engine for Program Curriculum Designers
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S. Loucif and Habib Hamam
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Emergent curriculum ,Engineering ,business.industry ,Process (engineering) ,Education ,Engineering management ,Engineering education ,Curriculum mapping ,ComputingMilieux_COMPUTERSANDEDUCATION ,Curriculum development ,Web application ,Electrical and Electronic Engineering ,business ,Software engineering ,Curriculum ,Accreditation - Abstract
Educational institutions pay careful attention to the design of program curricula, which represent a framework to meet institutional goals and missions. Of course, the success of any institution depends highly on the quality of its program curriculum. The development of such a curriculum and, more importantly, the evaluation of its quality are complex and time-consuming processes. This traditional approach requires many cumbersome manual iterations, making it a long and error-prone process. To overcome these problems, this paper proposes a new curriculum support engine as an alternative approach. The proposed curriculum support engine is a Web-based application that helps in designing any program curriculum in real time. The engine incorporates several important features, allowing the verification of the proposed curriculum coherence and the generation of statistics necessary for academic and accreditation purposes. Useful viewing and editing tools are also provided. The proposed curriculum support engine is flexible and allows additional criteria that the curriculum designer can specify to be incorporated. In particular, the engine covers the Accreditation of Canadian Engineering Programs (CEAB), the Accreditation Board for Engineering and Technology (ABET), and the Commission of Academic Accreditation of the Ministry of Higher Education and Scientific Research of UAE (CAA-UAE).
- Published
- 2009
- Full Text
- View/download PDF
47. Double fusion filtering based multi-view face recognition
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M. Farhat, Ayman Alfalou, Habib Hamam, and Christian Brosseau
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Computer science ,business.industry ,Filter (signal processing) ,Facial recognition system ,Atomic and Molecular Physics, and Optics ,Electronic, Optical and Magnetic Materials ,Image (mathematics) ,Domain (software engineering) ,symbols.namesake ,Optics ,Fourier transform ,Face (geometry) ,symbols ,Electrical and Electronic Engineering ,Physical and Theoretical Chemistry ,Focus (optics) ,business ,Rotation (mathematics) - Abstract
Two-dimensional (2D) face recognition by correlation is a key challenge of telecommunication and optical information processing. Although this issue has been the focus of intense research, its utilization still has some drawbacks especially when the face is in rotation. In this paper, we propose an alternative method based on a newly designed optical correlation filter which allows recognizing faces with different view angles. This filter called “Multi-View Binary Phase-Only Filter” is based on a double fusion of reference images allowing an optimisation of the use of the spatial-bandwidth product (SBWP) in the filter Fourier plane. The first fusion is performed in the image (space) domain, and the second one is conducted in the spectral domain. Simulations results with the Pointing Head Pose Image Database illustrate the performance of the designed correlation filter for multi-view face recognition.
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- 2009
- Full Text
- View/download PDF
48. A new approach for optical colored image compression using the JPEG standards
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Habib Hamam, Abdulsalam Alkholidi, and Ayman Alfalou
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Color image ,business.industry ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Image processing ,Data_CODINGANDINFORMATIONTHEORY ,computer.file_format ,Lossy compression ,JPEG ,Control and Systems Engineering ,Computer Science::Computer Vision and Pattern Recognition ,Signal Processing ,Discrete cosine transform ,Computer vision ,Computer Vision and Pattern Recognition ,Artificial intelligence ,Electrical and Electronic Engineering ,Quantization (image processing) ,business ,computer ,Software ,Mathematics ,Data compression ,Image compression - Abstract
Image compression consists in reducing information volume representing an image. Elimination of redundancies and non-pertinent information enables memory space minimization and thus faster data transmission. The present work aims to improve the quality of the compressed image while minimizing the time required for compression by using the principle of coherent optics. We present an optical adaptation of the method of JPEG compression technique for binary, gray-level and color images. Illustrative simulations will be given at the end to validate our architecture and to evaluate the performance on different types of images (binary, gray and color). An optical implementation setup is proposed and validated experimentally.
- Published
- 2007
- Full Text
- View/download PDF
49. Split-Step Algorithm Based Propagation Modelling of Dark Soliton-Like Pulses
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Yassine Bouslimani, Habib Hamam, and H. Apithy
- Subjects
Physics ,Optical fiber ,business.industry ,Physics::Optics ,Soliton (optics) ,law.invention ,Split-step method ,Nonlinear system ,symbols.namesake ,Optics ,Fourier transform ,Light propagation ,Hardware and Architecture ,Mechanics of Materials ,law ,Modeling and Simulation ,Dispersion (optics) ,symbols ,Electrical and Electronic Engineering ,business ,Nonlinear Schrödinger equation ,Software - Abstract
Many methods exist to model light propagation in optical fibers. Recently, a new method called "split-step method," based on the Fourier transform, has emerged. This method shows well the interplay between the dispersion and nonlinear effects in the optical fiber. We present here some results for this method applied to dark soliton-like pulses in normal dispersion regime.
- Published
- 2007
- Full Text
- View/download PDF
50. Simulation methods in optical propagation
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Y. Bouslimaniet, H. Apithy, and Habib Hamam
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Multi-mode optical fiber ,Transmission (telecommunications) ,Hardware and Architecture ,Computer science ,Numerical analysis ,Mathematical analysis ,Fast Fourier transform ,Single-mode optical fiber ,Electronic engineering ,Polarization-maintaining optical fiber ,Electrical and Electronic Engineering ,Waveguide (optics) ,Graded-index fiber - Abstract
(Paper written in French) This paper presents a synthesis of the various numerical methods used to study and simulate optical propagation. Then, in the results part, the split-step method is presented, based on the fast Fourier transform applied to a particular type of wave important for high-rate transmission: clear solitons of hyperbolic secant type.
- Published
- 2005
- Full Text
- View/download PDF
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