14 results on '"Alshorman, Omar"'
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2. Frei-Chen bases based lossy digital image compression technique
- Author
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Al-khassaweneh, Mahmood and AlShorman, Omar
- Published
- 2019
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3. Frei-Chen bases based lossy digital image compression technique.
- Author
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Al-khassaweneh, Mahmood and AlShorman, Omar
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IMAGE compression ,DATA transmission systems ,TELECOMMUNICATION ,BIG data ,COMPRESSION bandages ,PIXELS - Abstract
In the big data era, image compression is of significant importance in today's world. Importantly, compression of large sized images is required for everyday tasks; including electronic data communications and internet transactions. However, two important measures should be considered for any compression algorithm: the compression factor and the quality of the decompressed image. In this paper, we use Frei-Chen bases technique and the Modified Run Length Encoding (RLE) to compress images. The Frei-Chen bases technique is applied at the first stage in which the average subspace is applied to each 3 × 3 block. Those blocks with the highest energy are replaced by a single value that represents the average value of the pixels in the corresponding block. Even though Frei-Chen bases technique provides lossy compression, it maintains the main characteristics of the image. Additionally, the Frei-Chen bases technique enhances the compression factor, making it advantageous to use. In the second stage, RLE is applied to further increase the compression factor. The goal of using RLE is to enhance the compression factor without adding any distortion to the resultant decompressed image. Integrating RLE with Frei-Chen bases technique, as described in the proposed algorithm, ensures high quality decompressed images and high compression rate. The results of the proposed algorithms are shown to be comparable in quality and performance with other existing methods. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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4. Effectiveness of Deep Learning Models for Brain Tumor Classification and Segmentation.
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Irfan, Muhammad, Shaf, Ahmad, Ali, Tariq, Farooq, Umar, Rahman, Saifur, Faraj Mursal, Salim Nasar, Jalalah, Mohammed, Alqhtani, Samar M., and AlShorman, Omar
- Subjects
BRAIN tumors ,DEEP learning ,TUMOR classification ,COMPUTER-aided diagnosis ,CAUSES of death ,CELL growth - Abstract
A brain tumor is a mass or growth of abnormal cells in the brain. In children and adults, brain tumor is considered one of the leading causes of death. There are several types of brain tumors, including benign (non-cancerous) and malignant (cancerous) tumors. Diagnosing brain tumors as early as possible is essential, as this can improve the chances of successful treatment and survival. Considering this problem, we bring forth a hybrid intelligent deep learning technique that uses several pre-trained models (Resnet50, Vgg16, Vgg19, U-Net) and their integration for computer-aided detection and localization systems in brain tumors. These pre-trained and integrated deep learning models have been used on the publicly available dataset from The Cancer Genome Atlas. The dataset consists of 120 patients. The pre-trained models have been used to classify tumor or no tumor images, while integrated models are applied to segment the tumor region correctly. We have evaluated their performance in terms of loss, accuracy, intersection over union, Jaccard distance, dice coefficient, and dice coefficient loss. From pre-trained models, the U-Net model achieves higher performance than other models by obtaining 95% accuracy. In contrast, U-Net with ResNet-50 outperforms all other models from integrated pre-trained models and correctly classified and segmented the tumor region. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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5. Design and Development of Low-cost Wearable Electroencephalograms (EEG) Headset.
- Author
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Muhammad, Riaz, Ali, Ahmed, Anwar, M. Abid, Soomro, Toufique Ahmed, AlShorman, Omar, Alshahrani, Adel, Masadeh, Mahmoud, Ashraf, Ghulam Md, Ali, Naif H., Irfan, Muhammad, and Alexiou, Athanasios
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DISCRETE wavelet transforms ,HEADSETS ,SETUP time - Abstract
Electroencephalogram (EEG) is a method of capturing the electrophysiological signal of the brain. An EEG headset is a wearable device that records electrophysiological data from the brain. This paper presents the design and fabrication of a customized low-cost Electroencephalogram (EEG) headset based on the open-source OpenBCI Ultracortex Mark IV system. The electrode placement locations are modified under a 10-20 standard system. The fabricated headset is then compared to commercially available headsets based on the following parameters: affordability, accessibility, noise, signal quality, and cost. First, the data is recorded from 20 subjects who used the EEG Headset, and signals were recorded. Secondly, the participants marked the accuracy, set up time, participant comfort, and participant perceived ease of set-up on a scale of 1 to 7 (7 being excellent). Thirdly, the self-designed EEG headband is used by 5 participants for slide changing. The raw EEG signal is decomposed into a series of band signals using discrete wavelet transform (DWT). Lastly, these findings have been compared to previously reported studies. We concluded that when used for slide-changing control, our self-designed EEG headband had an accuracy of 82.0 percent. We also concluded from the results that our headset performed well on the cost-effectiveness scale, had a reduced setup time of 2 ± 0.5 min (the shortest among all being compared), and demonstrated greater ease of use. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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6. Week Ahead Electricity Power and Price Forecasting Using Improved DenseNet-121 Method.
- Author
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Irfan, Muhammad, Raza, Ali, Althobiani, Faisal, Ayub, Nasir, Idrees, Muhammad, Ali, Zain, Rizwan, Kashif, Alwadie, Abdullah Saeed, Ghonaim, Saleh Mohammed, Abdushkour, Hesham, Rahman, Saifur, Alshorman, Omar, and Alqhtani, Samar
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ELECTRICITY pricing ,SUPPORT vector machines ,FORECASTING ,DEMAND forecasting ,ELECTRIC power consumption ,LOAD forecasting (Electric power systems) ,BIG data - Abstract
In the Smart Grid (SG) residential environment, consumers change their power consumption routine according to the price and incentives announced by the utility, which causes the prices to deviate from the initial pattern. Thereby, electricity demand and price forecasting play a significant role and can help in terms of reliability and sustainability. Due to the massive amount of data, big data analytics for forecasting becomes a hot topic in the SG domain. In this paper, the changing and non-linearity of consumer consumption pattern complex data is taken as input. To minimize the computational cost and complexity of the data, the average of the feature engineering approaches includes: Recursive Feature Eliminator (RFE), Extreme Gradient Boosting (XGboost), Random Forest (RF), and are upgraded to extract the most relevant and significant features. To this end, we have proposed the DensetNet-121 network and Support Vector Machine (SVM) ensemble with Aquila Optimizer (AO) to ensure adaptability and handle the complexity of data in the classification. Further, the AO method helps to tune the parameters of DensNet (121 layers) and SVM, which achieves less training loss, computational time, minimized overfitting problems and more training/test accuracy. Performance evaluation metrics and statistical analysis validate the proposed model results are better than the benchmark schemes. Our proposed method has achieved a minimal value of the Mean Average Percentage Error (MAPE) rate i.e., 8% by DenseNet-AO and 6% by SVM-AO and the maximum accurateness rate of 92% and 95%, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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7. Kinetics and Adsorption Isotherms of Amine-Functionalized Magnesium Ferrite Produced Using Sol-Gel Method for Treatment of Heavy Metals in Wastewater.
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Irfan, Muhammad, Zaheer, Fareeda, Hussain, Humaira, Naz, Muhammad Yasin, Shukrullah, Shazia, Legutko, Stanislaw, Mahnashi, Mater H., Alsaiari, Mabkhoot A., Ghanim, Abdulnour Ali Jazem, Rahman, Saifur, Alshorman, Omar, Alkahtani, Fahad Salem, Khan, Mohammad K. A., Kruszelnicka, Izabela, and Ginter-Kramarczyk, Dobrochna
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ADSORPTION isotherms ,HEAVY metals ,SOL-gel processes ,LANGMUIR isotherms ,SEWAGE ,ADSORPTION kinetics - Abstract
This study is focused on the kinetics and adsorption isotherms of amine-functionalized magnesium ferrite (MgFe
2 O4 ) for treating the heavy metals in wastewater. A sol-gel route was adopted to produce MgFe2 O4 nanoparticles. The surfaces of the MgFe2 O4 nanoparticles were functionalized using primary amine (ethanolamine). The surface morphology, phase formation, and functionality of the MgFe2 O4 nano-adsorbents were studied using the SEM, UV-visible, FTIR, and TGA techniques. The characterized nanoparticles were tested on their ability to adsorb the Pb2+ , Cu2+ , and Zn2+ ions from the wastewater. The kinetic parameters and adsorption isotherms for the adsorption of the metal ions by the amine-functionalized MgFe2 O4 were obtained using the pseudo-first-order, pseudo-second-order, Langmuir, and Freundlich models. The pseudo-second order and Langmuir models best described the adsorption kinetics and isotherms, implying strong chemisorption via the formation of coordinative bonds between the amine groups and metal ions. The Langmuir equation revealed the highest adsorption capacity of 0.7 mmol/g for the amine-functionalized MgFe2 O4 nano-adsorbents. The adsorption capacity of the nanoadsorbent also changed with the calcination temperature. The MgFe2 O4 sample, calcined at 500 °C, removed the most of the Pb2+ (73%), Cu2+ (59%), and Zn2+ (62%) ions from the water. [ABSTRACT FROM AUTHOR]- Published
- 2022
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8. Frontal lobe real-time EEG analysis using machine learning techniques for mental stress detection.
- Author
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AlShorman, Omar, Masadeh, Mahmoud, Bin Heyat, Md Belal, Akhtar, Faijan, Almahasneh, Hossam, Ashraf, Ghulam Md, and Alexiou, Athanasios
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AUTOMATIC detection in radar , *BRAIN , *ELECTROENCEPHALOGRAPHY , *FAST Fourier transforms , *FRONTAL lobe , *MACHINE learning - Abstract
Stress has become a dangerous health problem in our life, especially in student education journey. Accordingly, previous methods have been conducted to detect mental stress based on biological and biochemical effects. Moreover, hormones, physiological effects, and skin temperature have been extensively used for stress detection. However, based on the recent literature, biological, biochemical, and physiological-based methods have shown inconsistent findings, which are initiated due to hormones' instability. Therefore, it is crucial to study stress using different mechanisms such as Electroencephalogram (EEG) signals. In this research study, the frontal lobes EEG spectrum analysis is applied to detect mental stress. Initially, we apply a Fast Fourier Transform (FFT) as a feature extraction stage to measure all bands' power density for the frontal lobe. After that, we used two type of classifications such as subject wise and mix (mental stress vs. control) using Support Vector Machine (SVM) and Naive Bayes (NB) machine learning classifiers. Our obtained results of the average subject wise classification showed that the proposed technique has better accuracy (98.21%). Moreover, this technique has low complexity, high accuracy, simple and easy to use, no over fitting, and it could be used as a real-time and continuous monitoring technique for medical applications. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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9. A review of intelligent methods for condition monitoring and fault diagnosis of stator and rotor faults of induction machines.
- Author
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Alshorman, Omar and Alshorman, Ahmad
- Subjects
INDUCTION machinery ,STATORS ,INDUCTION motors ,ROLLER bearings ,ROTORS ,MACHINE learning - Abstract
Nowadays, induction motor (IM) is extensively used in industry, including mechanical and electrical applications. However, three main types of IM faults have been discussed in the literature, bearing, stator, and rotor. Importantly, stator and rotor (S/R) faults represent approximately 50%. Traditional condition monitoring (CM) and fault diagnosis (FD) methods require a high processing cost and much experience knowledge. To tackle this challenge, artificial intelligent (AI) based CM and FD techniques are extensively developed. However, there have been many review research papers for intelligent CM and FD machine learning methods of rolling elements bearings of IM in the literature. Whereas there is a lack in the literature, and there are not many review papers for both S/R intelligent CM and FD. Thus, the proposed study's main contribution is in reviewing the CM and FD of IM, especially for the stator and the rotor, based on AI methods. The paper also provides discussions on the main challenges and possible future works. [ABSTRACT FROM AUTHOR]
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- 2021
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10. A review of wearable sensors based monitoring with daily physical activity to manage type 2 diabetes.
- Author
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AlShorman, Omar, AlShorman, Buthaynah, and Alkahtani, Fahed
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PHYSICAL activity ,TYPE 2 diabetes ,BLOOD sugar monitoring ,GLYCEMIC control ,DETECTORS ,ROBOTIC exoskeletons ,BLOOD sugar monitors - Abstract
Globally, the aging and the lifestyle lead to rabidly increment of the number of type two diabetes (T2D) patients. Critically, T2D considers as one of the most challenging healthcare issue. Importantly, physical activity (PA) plays a vital role of improving glycemic control T2D. However, daily monitoring of T2D using wearable devices/ sensors have a crucial role to monitor glucose levels in the blood. Nowadays, daily physical activity (PA) and exercises have been used to manage T2D. The main contribution of the proposed study is to review the literature about managing and monitoring T2D with daily PA through wearable devices and sensors. Finally, challenges and future trends are also highlighted. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
11. A Review of Artificial Intelligence Methods for Condition Monitoring and Fault Diagnosis of Rolling Element Bearings for Induction Motor.
- Author
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AlShorman, Omar, Irfan, Muhammad, Saad, Nordin, Zhen, D., Haider, Noman, Glowacz, Adam, and AlShorman, Ahmad
- Subjects
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ROLLER bearings , *ARTIFICIAL intelligence , *INDUCTION machinery , *MANUFACTURING processes , *ROTATING machinery , *ROLLING contact , *FAULT diagnosis , *INDUCTION motors - Abstract
The fault detection and diagnosis (FDD) along with condition monitoring (CM) and of rotating machinery (RM) have critical importance for early diagnosis to prevent severe damage of infrastructure in industrial environments. Importantly, valuable industrial equipment needs continuous monitoring to enhance the safety, reliability, and availability and to decrease the cost of maintenance of modern industrial systems and applications. However, induction motor (IM) has been extensively used in several industrial processes because it is cheap, reliable, and robust. Rolling bearings are considered to be the main component of IM. Undoubtedly, any failure of this basic component can lead to a serious breakdown of IM and for whole industrial system. Thus, many current methods based on different techniques are employed as a fault prognosis and diagnosis of rolling elements bearing of IM. Moreover, these techniques include signal/image processing, intelligent diagnostics, data fusion, data mining, and expert systems for time and frequency as well as time-frequency domains. Artificial intelligence (AI) techniques have proven their significance in every field of digital technology. Industrial machines, automation, and processes are the net frontiers of AI adaptation. There are quite developed literatures that have been approaching the issues using signals and data processing techniques. However, the key contribution of this work is to present an extensive review of CM and FDD of the IM, especially for rolling elements bearings, based on artificial intelligent (AI) methods. This study highlights the advantages and performance limitations of each method. Finally, challenges and future trends are also highlighted. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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12. Synthesis and Characterization of Manganese-Modified Black TiO 2 Nanoparticles and Their Performance Evaluation for the Photodegradation of Phenolic Compounds from Wastewater.
- Author
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Irfan, Muhammad, Nawaz, Rab, Khan, Javed Akbar, Ullah, Habib, Haneef, Tahir, Legutko, Stanislaw, Rahman, Saifur, Józwik, Jerzy, Alsaiari, Mabkhoot A., Khan, Mohammad Kamal Asif, Mursal, Salim Nasar Faraj, AlKahtani, Fahad Salem, Alshorman, Omar, and Ghanim, Abdulnour Ali Jazem
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PHENOLS ,TITANIUM dioxide ,PHOTODEGRADATION ,ELECTRON-hole recombination ,NANOPARTICLES ,FUEL additives - Abstract
The release of phenolic-contaminated treated palm oil mill effluent (TPOME) poses a severe threat to human and environmental health. In this work, manganese-modified black TiO
2 (Mn-B-TiO2 ) was produced for the photodegradation of high concentrations of total phenolic compounds from TPOME. A modified glycerol-assisted technique was used to synthesize visible-light-sensitive black TiO2 nanoparticles (NPs), which were then calcined at 300 °C for 60 min for conversion to anatase crystalline phase. The black TiO2 was further modified with manganese by utilizing a wet impregnation technique. Visible light absorption, charge carrier separation, and electron–hole pair recombination suppression were all improved when the band structure of TiO2 was tuned by producing Ti3+ defect states. As a result of the enhanced optical and electrical characteristics of black TiO2 NPs, phenolic compounds were removed from TPOME at a rate of 48.17%, which is 2.6 times higher than P25 (18%). When Mn was added to black TiO2 NPs, the Ti ion in the TiO2 lattice was replaced by Mn, causing a large redshift of the optical absorption edges and enhanced photodegradation of phenolic compounds from TPOME. The photodegradation efficiency of phenolic compounds by Mn-B-TiO2 improved to 60.12% from 48.17% at 0.3 wt% Mn doping concentration. The removal efficiency of phenolic compounds from TPOME diminished when Mn doping exceeded the optimum threshold (0.3 wt%). According to the findings, Mn-modified black TiO2 NPs are the most effective, as they combine the advantages of both black TiO2 and Mn doping. [ABSTRACT FROM AUTHOR]- Published
- 2021
- Full Text
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13. A Novel Feature Extraction and Fault Detection Technique for the Intelligent Fault Identification of Water Pump Bearings.
- Author
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Irfan, Muhammad, Alwadie, Abdullah Saeed, Glowacz, Adam, Awais, Muhammad, Rahman, Saifur, Khan, Mohammad Kamal Asif, Jalalah, Mohammad, Alshorman, Omar, and Caesarendra, Wahyu
- Subjects
WATER pumps ,TARDIGRADA ,FEATURE extraction ,ALGORITHMS ,FEATURE selection ,POWER spectra ,INDUCTION motors - Abstract
The reliable and cost-effective condition monitoring of the bearings installed in water pumps is a real challenge in the industry. This paper presents a novel strong feature selection and extraction algorithm (SFSEA) to extract fault-related features from the instantaneous power spectrum (IPS). The three features extracted from the IPS using the SFSEA are fed to an extreme gradient boosting (XBG) classifier to reliably detect and classify the minor bearing faults. The experiments performed on a lab-scale test setup demonstrated classification accuracy up to 100%, which is better than the previously reported fault classification accuracies and indicates the effectiveness of the proposed method. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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14. Fuzzy-Based Fault-Tolerant Control for Omnidirectional Mobile Robot.
- Author
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Alshorman, Ahmad M., Alshorman, Omar, Irfan, Muhammad, Glowacz, Adam, Muhammad, Fazal, and Caesarendra, Wahyu
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MOBILE robots ,ROBOT motion ,ROBOT control systems ,MOTION control devices ,FAULT-tolerant computing ,ALGORITHMS - Abstract
The motion-planning problem is well known in robotics; it aims to find a free-obstacle path from a starting point to a destination. To make use of actuation generosity and the fuzzy fast response behavior compared to other non-linear controllers, a fuzzy-based fault-tolerant control for an omnidirectional mobile robot with four Mecanum wheels is proposed. The objective is to provide the robot with an online scheme to control the robot motion while moving toward the final destination with avoiding obstacles in its environment and providing an adaptive solution for a combination of one or combination of the wheel's faults. The faults happen when the wheel does not receive the control command signal from the controller; in this case, the robot can rotate freely due to the interaction with the ground. The principle of fuzzy-based control proposed by Sugeno is used to develop the motion controller. The motion controller consists of two main controllers: the Run-To-Goal, and the obstacle-avoidance controller. The outputs of these two controllers are superposed to get the net potential force on the robot. By its simplicity, the fuzzy controller can be suitable for online applications (online path planning in our case). To the best of our knowledge, this is the first fuzzy-based fault-tolerant controller for an omnidirectional robot. The proposed controller is tested by a set of simulation scenarios to check the proposed fuzzy tolerant control. Kuka OmniRob is used as an example of the omnidirectional robot in these simulation runs. Matlab is used to build the fuzzy-based fault-tolerant control, and the 3D simulation is developed on the CoppeliaSim software. We examine five distinct scenarios, each one with a different fault state. In all scenarios, the proposed algorithm could control the robot to reach its final destination with the absence and presence of an obstacle in the workspace, despite actuator faults, without crossing the workspace boundaries. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
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