Sharma, C., S. Sharma, S. Kautish, S. A. M. Alsallami, E. M. Khalil, and A. W. Mohamed,
"A new median-average round Robin scheduling algorithm: An optimal approach for reducing turnaround and waiting time",
Alexandria Engineering Journal, vol. 61, issue 12: Elsevier, pp. 10527-10538, 2022.
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Xiong, G., L. Li, A. W. Mohamed, X. Yuan, and J. Zhang,
A new method for parameter extraction of solar photovoltaic models using gaining–sharing knowledge based algorithm,
, vol. 7, pp. 3286 - 3301, 2021.
AbstractFor the solar photovoltaic (PV) system to operate efficiently, it is necessary to effectively establish an equivalent model of PV cell and extract the relevant unknown model parameters accurately. This paper introduces a new metaheuristic algorithm, i.e., gaining-sharing knowledge based algorithm (GSK) to solve the solar PV model parameter extraction problem. This algorithm simulates the process of knowledge acquisition and sharing in the human life cycle and is with strong competitiveness in solving optimization problems. It includes two significant phases. The first phase is the beginner–intermediate or junior acquisition and sharing stage, and the second phase is the intermediate–expert or senior acquisition and sharing stage. In order to verify the effectiveness of GSK, it is applied to five PV models including the single diode model, double diode model, and three PV modules. The influence of population size on the algorithm performance is empirically investigated. Besides, it is further compared with some other excellent metaheuristic algorithms including basic algorithms and advanced algorithms. Among the five PV models, the root mean square error values between the measured data and the calculated data of GSK are 9.8602E−04 ± 2.18E−17, 9.8280E−04 ± 8.72E−07, 2.4251E−03 ± 1.04E−09, 1.7298E−03 ± 6.25E−18, and 1.6601E−02 ± 1.44E−16, respectively. The results show that GSK has overall better robustness, convergence, and accuracy.
Xiong, G., L. Li, A. W. Mohamed, X. Yuan, and J. Zhang,
"A new method for parameter extraction of solar photovoltaic models using gaining–sharing knowledge based algorithm",
Energy Reports, vol. 7: Elsevier, pp. 3286-3301, 2021.
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Xiong, G., L. Li, A. W. Mohamed, X. Yuan, and J. Zhang,
"A new method for parameter extraction of solar photovoltaic models using gaining–sharing knowledge based algorithm",
Energy Reports, vol. 7: Elsevier, pp. 3286-3301, 2021.
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Madhu, G., S. Kautish, K. A. Alnowibet, H. M. Zawbaa, and A. W. Mohamed,
"Nipuna: A novel optimizer activation function for deep neural networks",
Axioms, vol. 12, issue 3: MDPI, pp. 246, 2023.
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El-Quliti, S. A., A. H. M. Ragab, R. Abdelaal, A. W. Mohamed, A. S. Mashat, A. Y. Noaman, and A. H. Altalhi,
"A Nonlinear Goal Programming Model for University Admission Capacity Planning with Modified Differential Evolution Algorithm",
Mathematical Problems in Engineering, vol. 2015: Hindawi Publishing Corporation, pp. 892937, 2015.
AbstractThis paper proposes a nonlinear Goal Programming Model (GPM) for solving the problem of admission capacity planning in academic universities. Many factors of university admission capacity planning have been taken into consideration among which are number of admitted students in the past years, total population in the country, number of graduates from secondary schools, desired ratios of specific specialties, faculty-to-students ratio, and the past number of graduates. The proposed model is general and has been tested at King Abdulaziz University (KAU) in the Kingdom of Saudi Arabia, where the work aims to achieve the key objectives of a five-year development plan in addition to a 25-year future plan (AAFAQ) for universities education in the Kingdom. Based on the results of this test, the proposed GPM with a modified differential evolution algorithm has approved an ability to solve general admission capacity planning problem in terms of high quality, rapid convergence speed, efficiency, and robustness.
El-Quliti, S. A., A. H. M. Ragab, R. Abdelaal, A. W. Mohamed, A. S. Mashat, A. Y. Noaman, and A. H. Altalhi,
"A nonlinear goal programming model for university admission capacity planning with modified differential evolution algorithm",
Mathematical Problems in Engineering, vol. 2015: https://doi.org/10.1155/2015/892937, pp. 13, 2015.
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Agrawal, P., T. Ganesh, and A. W. Mohamed,
A novel binary gaining–sharing knowledge-based optimization algorithm for feature selection,
, vol. 33, issue 11, pp. 5989 - 6008, 2021.
AbstractTo obtain the optimal set of features in feature selection problems is the most challenging and prominent problem in machine learning. Very few human-related metaheuristic algorithms were developed and solved this type of problem. It motivated us to check the performance of recently developed gaining–sharing knowledge-based optimization algorithm (GSK), which is based on the concept of gaining and sharing knowledge of humans throughout their lifespan. It depends on two stages: beginners–intermediate gaining and sharing stage and intermediate–experts gaining and sharing stage. In this study, two approaches are proposed to solve feature selection problems: FS-BGSK: a novel binary version of GSK algorithm that relies on these two stages with knowledge factor 1 and FS-pBGSK: a population reduction technique that is employed on BGSK algorithm to enhance the exploration and exploitation quality of FS-BGSK. The proposed approaches are checked on twenty two feature selection benchmark datasets from UCI repository that contains small, medium and large dimensions datasets. The obtained results are compared with seven state-of-the-art metaheuristic algorithms; binary differential evolution, binary particle swarm optimization algorithm, binary bat algorithm, binary grey wolf optimizer, binary ant lion optimizer, binary dragonfly algorithm and binary salp swarm algorithm. It concludes that FS-pBGSK and FS-BGSK outperform other algorithms in terms of accuracy, convergence and robustness in most of the datasets.
Mohamed, A. W.,
A novel differential evolution algorithm for solving constrained engineering optimization problems,
, vol. 29, issue 3, pp. 659 - 692, 2018.
AbstractThis paper introduces a novel differential evolution (DE) algorithm for solving constrained engineering optimization problems called (NDE). The key idea of the proposed NDE is the use of new triangular mutation rule. It is based on the convex combination vector of the triplet defined by the three randomly chosen vectors and the difference vectors between the best, better and the worst individuals among the three randomly selected vectors. The main purpose of the new approach to triangular mutation operator is the search for better balance between the global exploration ability and the local exploitation tendency as well as enhancing the convergence rate of the algorithm through the optimization process. In order to evaluate and analyze the performance of NDE, numerical experiments on three sets of test problems with different features, including a comparison with thirty state-of-the-art evolutionary algorithms, are executed where 24 well-known benchmark test functions presented in CEC’2006, five widely used constrained engineering design problems and five constrained mechanical design problems from the literature are utilized. The results show that the proposed algorithm is competitive with, and in some cases superior to, the compared ones in terms of the quality, efficiency and robustness of the obtained final solutions.
Hassan, S. A., P. Agrawal, T. Ganesh, and A. W. Mohamed,
"A Novel Discrete Binary Gaining-Sharing Knowledge-Based Optimization Algorithm for the Travelling Counselling Problem for Utilization of Solar Energy",
International Journal of Swarm Intelligence Research (IJSIR), vol. 13, issue 1: IGI Global, pp. 1-24, 2022.
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Hassan, S. A., P. Agrawal, T. Ganesh, and A. W. Mohamed,
"A Novel Multi-Objective Nonlinear Discrete Binary Gaining-Sharing Knowledge-Based Optimization Algorithm: Optimum Scheduling of Flights for Residual Stranded Citizens Due to COVID-19",
International Journal of Applied Metaheuristic Computing (IJAMC), vol. 13, issue 1: IGI Global, pp. 1-25, 2022.
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