19 results on '"Sarhan, Shahenda"'
Search Results
2. Improved SNS algorithm with high exploitative strategy for dynamic combined heat and power dispatch in co-generation systems
- Author
-
Gafar, Mona, Ginidi, Ahmed, El-Sehiemy, Ragab, and Sarhan, Shahenda
- Published
- 2022
- Full Text
- View/download PDF
3. Centralized vs. Decentralized Cloud Computing in Healthcare.
- Author
-
Abughazalah, Mona, Alsaggaf, Wafaa, Saifuddin, Shireen, and Sarhan, Shahenda
- Subjects
HEALTH information exchanges ,CLOUD computing ,ACCESS to information ,HEALTH facilities ,OPERATING costs ,SERVER farms (Computer network management) - Abstract
Healthcare is one of the industries that seeks to deliver medical services to patients on time. One of the issues it currently grapples with is real-time patient data exchange between various healthcare organizations. This challenge was solved by both centralized and decentralized cloud computing architecture solutions. In this paper, we review the current state of these two cloud computing architectures in the health sector with regard to the effect on the efficiency of Health Information Exchange (HIE) systems. Our study seeks to determine the relevance of these cloud computing approaches in assisting healthcare facilities in the decision-making process to adopt HIE systems. This paper considers the system performance, patient data privacy, and cost and identifies research directions in each of the architectures. This study shows that there are some benefits in both cloud architectures, but there are also some drawbacks. The prominent characteristic of centralized cloud computing is that all data and information are stored together at one location, known as a single data center. This offers many services, such as integration, effectiveness, simplicity, and rapid information access. However, it entails providing data privacy and confidentiality aspects because it will face the hazard of a single point of failure. On the other hand, decentralized cloud computing is built to safeguard data privacy and security whereby data are distributed to several nodes as a way of forming mini-data centers. This increases the system's ability to cope with a node failure. Thus, continuity and less latency are achieved. Nevertheless, it poses integration issues because managing data from several sites could be a problem, and the costs of operating several data centers are higher and complex. This paper also pays attention to the differences in aspects like efficiency, capacity, and cost. This paper assists healthcare organizations in determining the most suitable cloud architecture strategy for deploying secure and effective HIE systems. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
4. Developing a Neural Network Model for Type 2 Diabetes Detection.
- Author
-
Alsulami, Noha, Sarhan, Shahenda, Almasre, Miada, and Alsaggaf, Wafaa
- Subjects
- *
ARTIFICIAL neural networks , *TYPE 2 diabetes , *ROUGH sets , *DIABETES , *TRAINING needs - Abstract
Worldwide, the healthcare system is greatly impacted by the changing requirements of the people. Diabetes is a long-lasting condition that can lead to serious complications if not controlled correctly. It is divided into Type 1 (TID) and Type 2 (T2D) diabetes. Research shows that almost 90% of Diabetes cases are T2D, with TID making up around 10% of all Diabetes cases. This paper suggests a Rough-Neuro classification model for identifying Type 2 Diabetes, which includes a two-stage process. The approach includes utilising Rough sets JohnsonReducer to eliminate unnecessary features or characteristics and multi-layer perceptron for illness categorization. The suggested technique seeks to reduce the amount of input characteristics, which results in a reduction in the time needed to train the neural network and the storage space required. The findings show that decreasing the amount of input characteristics results in a lower neural network training time, enhances model performance, and reduces storage needs by 63%. It is worth mentioning that a smaller neural network with only seven hidden layers, trained for 1000 epochs with a learning rate of 0.01, attained the best performance, but time and storage were much decreased. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
5. Deep Learning Models for Type 2 Diabetes Detection in Saudi Arabia.
- Author
-
Alsulami, Noha, Almasre, Miada, Sarhan, Shahenda, and Alsaggaf, Wafaa
- Subjects
ARTIFICIAL neural networks ,DEEP learning ,TYPE 2 diabetes ,CONVOLUTIONAL neural networks ,MACHINE learning - Abstract
One of the predominant health issues affecting Saudi Arabia and leading to many complications is Type 2 diabetes (T2D). Early detection and significant preventative measures lead to curbing and controlling the health issue. There are fewer datasets in the literature for the detection of T2D in the Saudi population. Past studies using Saudi data have favoured machine learning algorithms to classify T2D. Although the application of this data in machine learning is evident, no studies exist in the literature that compare this data, especially those related to deep learning algorithms. This study's objective is to use specific Saudi data to develop multiple deep learning models that could be used to detect T2D. The research uses a Deep Neural Network (DNN), an Autoencoder (AE), and a Convolutional Neural Network (CNN) to create predictive models and compare their performance with a traditional machine learning classifier used on the same dataset that outperformed other machine learning algorithms such as a Decision Forest (DF). Various metrics were used to evaluate the effectiveness of the models, such as accuracy, precision, recall, F1 score and area under the ROC curve (AUC) where the ROC acts as a receiver operating characteristic curve. There are two cases in this paper: (i) uses all features of the dataset and (ii) uses six of the ten features, such as DF. In case (i), the results were shown that AE outperformed other models with the highest accuracy for imbalanced and balanced data 81.12% and 79.16%, respectively. The results for case (ii) showed that AE scored the highest 81.01% accuracy with imbalanced data compared to DF and DF achieved the highest accuracy of 82.1% with balanced data. As a result, both cases explored in this study revealed that AE has a constant superior performance if imbalanced data is used. In contrast, DF demonstrated the highest accuracy when a balanced dataset was used with a feature set reduction. They help to identify the undiagnosed T2D, and they are essential for professionals in Saudi Arabia in the health sector to promote health connections, identify risks and contain or improve their diabetes management. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
6. Multimodal Biometric Systems: A Comparative Study
- Author
-
Sarhan, Shahenda, Alhassan, Shaaban, and Elmougy, Samir
- Published
- 2017
- Full Text
- View/download PDF
7. Enhancing recurrent neural network-based language models by word tokenization
- Author
-
Noaman, Hatem M., Sarhan, Shahenda S., and Rashwan, Mohsen. A. A.
- Published
- 2018
- Full Text
- View/download PDF
8. Human injected by Botox age estimation based on active shape models, speed up robust features, and support vector machine
- Author
-
Sarhan, Shahenda, Hamad, Sabaa, and Elmougy, Samir
- Published
- 2016
- Full Text
- View/download PDF
9. An Augmented Social Network Search Algorithm for Optimal Reactive Power Dispatch Problem.
- Author
-
Sarhan, Shahenda, Shaheen, Abdullah, El-Sehiemy, Ragab, and Gafar, Mona
- Subjects
- *
REACTIVE power , *SOCIAL networks , *SEARCH algorithms , *BOOSTING algorithms , *ELECTRIC power distribution grids , *TEST systems - Abstract
Optimal Reactive Power Dispatch (ORPD) is one of the main challenges in power system operations. ORPD is a non-linear optimization task that aims to reduce the active power losses in the transmission grid, minimize voltage variations, and improve the system voltage stability. This paper proposes an intelligent augmented social network search (ASNS) algorithm for meeting the previous aims compared with the social network search (SNS) algorithm. The social network users' dialogue, imitation, creativity, and disputation moods drive the core of the SNS algorithm. The proposed ASNS enhances SNS performance by boosting the search capability surrounding the best possible solution, with the goal of improving its globally searched possibilities while attempting to avoid getting locked in a locally optimal one. The performance of ASNS is evaluated compared with SNS on three IEEE standard grids, IEEE 30-, 57-, and 118-bus test systems, for enhanced results. Diverse comparisons and statistical analyses are applied to validate the performance. Results indicated that ASNS supports the diversity of populations in addition to achieving superiority in reducing power losses up to 22% and improving voltage profiles up to 90.3% for the tested power grids. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
10. A novel hybrid of Shortest job first and round Robin with dynamic variable quantum time task scheduling technique
- Author
-
Elmougy, Samir, Sarhan, Shahenda, and Joundy, Manar
- Published
- 2017
- Full Text
- View/download PDF
11. Enhanced Teaching Learning-Based Algorithm for Fuel Costs and Losses Minimization in AC-DC Systems.
- Author
-
Sarhan, Shahenda, Shaheen, Abdullah M., El-Sehiemy, Ragab A., and Gafar, Mona
- Subjects
- *
FUEL costs , *EVOLUTIONARY algorithms , *ALGORITHMS , *REACTIVE power , *SWARM intelligence , *HYBRID power systems - Abstract
The Teaching Learning-Based Algorithm (TLBA) is a powerful and effective optimization approach. TLBA mimics the teaching-learning process in a classroom, where TLBA's iterative computing process is separated into two phases, unlike standard evolutionary algorithms and swarm intelligence algorithms, and each phase conducts an iterative learning operation. Advanced technologies of Voltage Source Converters (VSCs) enable greater active and reactive power regulation in these networks. Various objectives are addressed for optimal energy management, with the goal of attaining economic and technical advantages by decreasing overall production fuel costs and transmission power losses in AC-DC transmission networks. In this paper, the TLBA is applied for various sorts of nonlinear and multimodal functioning of hybrid alternating current (AC) and multi-terminal direct current (DC) power grids. The proposed TLBA is evaluated on modified IEEE 30-bus and IEEE 57-bus AC-DC networks and compared to other published methods in the literature. Numerical results demonstrate that the proposed TLBA has great effectiveness and robustness indices over the others. Economically, the reduction percentages of 13.84 and 21.94% are achieved for the IEEE 30-bus and IEEE 57-bus test systems when the fuel costs are minimized. Technically, significant improvement in the transmission power losses with reduction 28.01% and 69.83%, are found for the IEEE 30-bus and IEEE 57-bus test system compared to the initial case. Nevertheless, TLBA has faster convergence, higher quality for the final optimal solution, and more power for escaping from convergence to local optima compared to other published methods in the literature. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
12. A Multi-Objective Teaching–Learning Studying-Based Algorithm for Large-Scale Dispatching of Combined Electrical Power and Heat Energies.
- Author
-
Sarhan, Shahenda, Shaheen, Abdullah, El-Sehiemy, Ragab, and Gafar, Mona
- Subjects
- *
FUEL costs , *ALGORITHMS , *GENETIC algorithms , *GLOBAL optimization , *GREENHOUSE gas mitigation - Abstract
This paper proposes a multi-objective teaching–learning studying-based algorithm (MTLSBA) to handle different objective frameworks for solving the large-scale Combined Heat and Power Economic Environmental Dispatch (CHPEED) problem. It aims at minimizing the fuel costs and emissions by managing the power-only, CHP and heat-only units. TLSBA is a modified version of TLBA to increase its global optimization performance by merging a new studying strategy. Based on this integrated tactic, every participant gathers knowledge from someone else randomly to improve his position. The position is specified as the vector of the design variables, which are the power and heat outputs from the power-only, CHP and heat-only units. TLSBA has been upgraded to include an extra Pareto archiving to capture and sustain the non-dominated responses. The objective characteristic is dynamically adapted by systematically modifying the shape of the applicable objective model. Likewise, a decision-making approach based on the fuzzy concept is used to select the most suitable CHPEED solution for large-scale dispatching of combined electrical power and heat energies. The proposed MTLSBA is assigned to multiple testing of 5-unit, 7-unit and 96-unit systems. It is contrasted with other reported techniques in the literature. According to numerical data, the suggested MTLSBA outperforms the others in terms of effectiveness and robustness indices. For the 5-unit system, the proposed MTLSBA achieves improvement in the fuel costs of 0.6625% and 0.3677% and reduction in the emissions of 2.723% and 7.4669% compared to non-dominated sorting genetic algorithm (NSGA-II) and strength Pareto evolutionary algorithm (SPEA 2), respectively. For the 7-unit system, the proposed MTLSBA achieves improvement in the fuel costs of 2.927% and 3.041% and reduction in the emissions of 40.156% and 40.050% compared to NSGA-II and SPEA 2, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
13. Turbulent Flow of Water-Based Optimization for Solving Multi-Objective Technical and Economic Aspects of Optimal Power Flow Problems.
- Author
-
Sarhan, Shahenda, El-Sehiemy, Ragab, Abaza, Amlak, and Gafar, Mona
- Subjects
- *
TURBULENT flow , *TURBULENCE , *LARGE scale systems , *FUEL costs - Abstract
The optimal operation of modern power systems aims at achieving the increased power demand requirements regarding economic and technical aspects. Another concern is preserving the emissions within the environmental limitations. In this regard, this paper aims at finding the optimal scheduling of power generation units that are able to meet the load requirements based on a multi-objective optimal power flow framework. In the proposed multi-objective framework, objective functions, technical economical, and emissions are considered. The solution methodology is performed based on a developed turbulent flow of a water-based optimizer (TFWO). Single and multi-objective functions are employed to minimize the cost of fuel, emission level, power losses, enhance voltage deviation, and voltage stability index. The proposed algorithm is tested and investigated on the IEEE 30-bus and 57-bus systems, and 17 cases are studied. Four additional cases studied are applied on four large scale test systems to prove the high scalability of the proposed solution methodology. Evaluation of the effectiveness and robustness of the proposed TFWO is proven through a comparison of the simulation results, convergence rate, and statistical indices to other well-known recent algorithms in the literature. We concluded from the current study that TFWO is efficient, effective, robust, and superior in solving OPF optimization problems. It has better convergence rates compared with other well-known algorithms with significant technical and economical improvements. A reduction in the range of 4.6–33.12% is achieved by the proposed TFWO for the large scale tested system. For the tested system, the proposed solution methodology leads to a more competitive solution with significant improvement in the techno-economic aspects. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
14. An Enhanced Slime Mould Optimizer That Uses Chaotic Behavior and an Elitist Group for Solving Engineering Problems.
- Author
-
Sarhan, Shahenda, Shaheen, Abdullah Mohamed, El-Sehiemy, Ragab A., and Gafar, Mona
- Subjects
- *
GROUP problem solving , *MYXOMYCETES , *MATHEMATICAL optimization , *ELECTRICAL load , *INDUSTRIAL costs - Abstract
This article suggests a novel enhanced slime mould optimizer (ESMO) that incorporates a chaotic strategy and an elitist group for handling various mathematical optimization benchmark functions and engineering problems. In the newly suggested solver, a chaotic strategy was integrated into the movement updating rule of the basic SMO, whereas the exploitation mechanism was enhanced via searching around an elitist group instead of only the global best dependence. To handle the mathematical optimization problems, 13 benchmark functions were utilized. To handle the engineering optimization problems, the optimal power flow (OPF) was handled first, where three studied cases were considered. The suggested scheme was scrutinized on a typical IEEE test grid, and the simulation results were compared with the results given in the former publications and found to be competitive in terms of the quality of the solution. The suggested ESMO outperformed the basic SMO in terms of the convergence rate, standard deviation, and solution merit. Furthermore, a test was executed to authenticate the statistical efficacy of the suggested ESMO-inspired scheme. The suggested ESMO provided a robust and straightforward solution for the OPF problem under diverse goal functions. Furthermore, the combined heat and electrical power dispatch problem was handled by considering a large-scale test case of 84 diverse units. Similar findings were drawn, where the suggested ESMO showed high superiority compared with the basic SMO and other recent techniques in minimizing the total production costs of heat and electrical energies. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
15. Enhancing video games policy based on least-squares continuous action policy iteration: case study on StarCraft Brood War and Glest RTS games and the 8 queens board game
- Author
-
Sarhan, Shahenda, Abu ElSoud, Mohamed, and Rashed, Hebatullah
- Subjects
Video games -- Case studies -- Authorship ,Algorithms -- Case studies -- Research ,Applied research ,Algorithm ,Computers and office automation industries - Abstract
With the rapid advent of video games recently and the increasing numbers of players and gamers, only a tough game with high policy, actions, and tactics survives. How the game responds to opponent actions is the key issue of popular games. Many algorithms were proposed to solve this problem such as Least-Squares Policy Iteration (LSPI) and State-Action-Reward-State-Action (SARSA) but they mainly depend on discrete actions, while agents in such a setting have to learn from the consequences of their continuous actions, in order to maximize the total reward over time. So in this paper we proposed a new algorithm based on LSPI called Least-Squares Continuous Action Policy Iteration (LSCAPI). The LSCAPI was implemented and tested on three different games: one board game, the 8 Queens, and two real-time strategy (RTS) games, StarCraft Brood War and Glest. The LSCAPI evaluation proved superiority over LSPI in time, policy learning ability, and effectiveness., 1. Introduction An agent is anything that can be viewed as perceiving its environment through sensors and acting in that environment through actuators as in Figure 1, while a rational [...]
- Published
- 2016
- Full Text
- View/download PDF
16. Multipose Face Recognition-Based Combined Adaptive Deep Learning Vector Quantization.
- Author
-
Sarhan, Shahenda, Nasr, Aida A., and Shams, Mahmoud Y.
- Subjects
- *
VECTOR quantization , *HUMAN facial recognition software , *DEEP learning , *CONVOLUTIONAL neural networks , *SUPPORT vector machines , *PLURALITY voting - Abstract
Multipose face recognition system is one of the recent challenges faced by the researchers interested in security applications. Different researches have been introduced discussing the accuracy improvement of multipose face recognition through enhancing the face detector as Viola-Jones, Real Adaboost, and Cascade Object Detector while others concentrated on the recognition systems as support vector machine and deep convolution neural networks. In this paper, a combined adaptive deep learning vector quantization (CADLVQ) classifier is proposed. The proposed classifier has boosted the weakness of the adaptive deep learning vector quantization classifiers through using the majority voting algorithm with the speeded up robust feature extractor. Experimental results indicate that, the proposed classifier provided promising results in terms of sensitivity, specificity, precision, and accuracy compared to recent approaches in deep learning, statistical, and classical neural networks. Finally, the comparison is empirically performed using confusion matrix to ensure the reliability and robustness of the proposed system compared to the state-of art. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
17. Omitting Code Clones Based on Ranking the Called Clones.
- Author
-
Sarhan, Shahenda and Dhafer, Zyad
- Subjects
CODING theory ,DATA compression ,ADAPTIVE codes ,CLONES (Algebra) ,COMPUTER algorithms - Abstract
Code clones represent a stumbling blocking the way of having a more readable, maintainable and less complicated source codes, free of bugs and errors. Many studies had been proposed for detecting and omitting the four types of cloned codes based on pattern matching, syntax parsing, tree parsing and refactoring which is the most commonly used technique to remove the code clones from software, while maintaining its original behavior. In this paper, we propose an automated refactoring technique and its correspondence algorithm to omit code clones of type 1 and type 2. The proposed technique performance was tested and evaluated using four open source Java projects JFreeChart, JRuby, JCommon and Apache ant. The performance of the source codes was indicated based on number of metrics as the lines of code, number of blank lines, method's count and cyclomatic complexity before and after applying the proposed technique. The experimentation results indicated that the proposed technique had showed superiority over the state-of-the-art through omitting the cloned codes with the possibility of maintaining the stability and correctness of behavior of the source codes under consideration. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
18. Automatic Arabic Spelling Errors Detection and Correction Based on Confusion Matrix-Noisy Channel Hybrid System.
- Author
-
Noaman, Hatem M., Sarhan, Shahenda S., and Rashwan, M. A. A.
- Subjects
SPELLING errors ,ARABIC language ,OPTICAL character recognition ,MACHINE translating ,ERROR detection (Information theory) - Abstract
Arabic spelling errors occur in different types of documents, such as handwritten by non experienced users, optical character recognition (OCR) documents and machine translated documents. Many researchers had tried to solve this dilemma but till now there is no a radical solution. This paper proposes a hybrid system based on the confusion matrix and the noisy channel spelling correction model to detect and correct automatically Arabic spelling errors. The proposed system is based on building a robust error confusion matrix using 163,452 pairs of spelling errors, and its corrected form extracted from Qatar Arabic Language Bank (QALP) and using this matrix with language model to generate list of candidates and choose the most appropriate candidate for given misspelled word. Comparing the proposed system results shows that system result outperform other systems results. [ABSTRACT FROM AUTHOR]
- Published
- 2016
19. Enhancing Agile Software Development Process Using Learn, Information, Change and Progress Activities.
- Author
-
Sarhan, Shahenda, El Soud, Mohamed Abu, and Bakry, Noha
- Subjects
COMPUTER software development ,CUSTOMER satisfaction ,LEARNING ability ,COMPUTER programming ,TECHNOLOGICAL innovations - Abstract
Agile software development methodology is an incremental software development methodology, that provides a fast and simple way of software developing based on the customer involvement which grantee project quality and customer satisfaction. In spite of these advantages but agile still suffers from shortage in handling requirements change during the system building which causes more time and money also the difficulty in arranging the user story which causes belated risk detection. In this paper we have introduced a set of activities called LICP (Learn-Information-Change- Progress), where each activity endorses the agile principles and rules to help the team in enhancing his performance, achieving customer satisfaction and reducing time and cost. The proposed activities were evaluated using two methods building SMS application using scrum methodology enhanced with the LICP activities and a questionnaire filled by 30 different positions employees in 3 different companies working in the software development field. The evaluation results indicate the effectiveness of LICP activities in enhancing the scrum methodology performance through the earlier risk detection, better handling of user stories changes and enhancing team communication and learning ability. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.