Publications

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2024
Tolba, A., N. N. Mostafa, A. W. Mohamed, and K. M. Sallam, "Hybrid Deep Learning Approach for Milk Quality Prediction", Precision Livestock, vol. 1, pp. 1-13, 2024. Abstract
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2022
Omar, M., A. M. Abdelalim, N. H. Mohamed, H. M. Abd-Elaty, M. A. Hammouda, Y. Y. Mohamed, M. A. Taifor, and A. W. Mohamed, "Enhancing Parkinson’s Disease Diagnosis Accuracy Through Speech Signal Algorithm Modeling", Computers, Materials & Continua, 2022. Abstract
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Tawfik, R. M., H. A. A. Nomer, S. M. Darweesh, A. W. Mohame, and H. Mostafa, "UAV-Aided Data Acquisition Using Gaining-Sharing Knowledge Optimization Algorithm.", Computers, Materials & Continua, vol. 72, issue 3, 2022. Abstract
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Tawfik, R. M., H. A. A. Nomer, M. Saeed Darweesh, A. W. Mohamed, and H. Mostafa, "UAV-Assisted IoT Data Collection Optimization Using Gaining-Sharing Knowledge Algorithm", Handbook of Nature-Inspired Optimization Algorithms: The State of the Art: Volume II: Solving Constrained Single Objective Real-Parameter Optimization Problems: Springer International Publishing Cham, pp. 135-146, 2022. Abstract
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2021
Hadi, A. A., A. W. Mohamed, and K. M. Jambi, "Single-Objective Real-Parameter Optimization: Enhanced LSHADE-SPACMA Algorithm", Heuristics for Optimization and Learning, Cham, Springer International Publishing, pp. 103 - 121, 2021. Abstract

Hadi, Anas A.Mohamed, Ali W.Jambi, Kamal M.Real parameter optimization is one of the active research fields during the last decade. The performance of LSHADE-SPACMALSHADE was competitive in IEEE CEC’2017 competition on Single Objective Bound Constrained Real-Parameter Single Objective Optimization. Besides, it was ranked fourth among twelve papers were presented on and compared to this new benchmark problems. In this work, an improved version named ELSHADE-SPACMASPACMA is introduced. In LSHADE-SPACMA, p value that controls the greediness of the mutation strategy is constant. While in ELSHADE-SPACMAESHADE, p value is dynamic. Larger value of p will enhance the exploration, while smaller values will enhance the exploitation. We further enhanced the performance of ELSHADE-SPACMA by integrating another directed mutation strategy within the hybridization framework. The proposed algorithm has been evaluated using IEEE CEC’2017 benchmark. According to the comparison results, the proposed ELSHADE-SPACMA algorithm is better than LSHADE and LSHADE-SPACMA. Besides, The comparison results between ELSHADE-SPACMA and the best three algorithms from the IEEE CEC’2017 Competition indicate that ELSHADE-SPACMA algorithm shows overall better performance and it is highly competitive algorithm for solving global optimization problems.

2018
Mohamed, A. K., A. W. Mohamed, E. Z. Elfeky, and M. Saleh, "Enhancing AGDE Algorithm Using Population Size Reduction for Global Numerical Optimization", The International Conference on Advanced Machine Learning Technologies and Applications (AMLTA2018), Cham, Springer International Publishing, pp. 62 - 72, 2018. Abstract

Adaptive guided differential evolution algorithm (AGDE) is a DE algorithm that utilizes the information of good and bad vectors in the population, it introduced a novel mutation rule in order to balance effectively the exploration and exploitation tradeoffs. It divided the population into three clusters (best, better and worst) with sizes 100p%, NP-2 * 100p% and 100p% respectively. Where p is the proportion of the partition with respect to the total number of individuals in the population (NP). AGDE selects three random individuals, one of each partition to implement the mutation process. Besides, a novel adaptation scheme was proposed in order to update the value of crossover rate without previous knowledge about the characteristics of the problems. This paper introduces enhanced AGDE (EAGDE) with non-linear population size reduction, which gradually decreases the population size according to a non-linear function. Moreover, a newly developed rule developed to determine the initial population size, that is related to the dimensionality of the problems.

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