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Saxena, A., A. F. Alrasheedi, K. A. Alnowibet, A. M. Alshamrani, S. Shekhawat, and A. W. Mohamed, "Local Grey Predictor Based on Cubic Polynomial Realization for Market Clearing Price Prediction", Axioms, vol. 11, issue 11: MDPI, pp. 627, 2022. Abstract
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Said Ali El-Quliti, A. W. M., "A Large-Scale Nonlinear Mixed-Binary Goal Programming Model to Assess Candidate Locations for Solar Energy Stations: An Improved Binary Differential Evolution Algorithm with a Case Study", Journal of Computational and Theoretical Nanoscience, vol. 13, issue 11: American Scientific Publishers, pp. 7909–7921, 2016. Abstract
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Mohamed, A. W., A. A. Hadi, A. M. Fattouh, and K. M. Jambi, "LSHADE with semi-parameter adaptation hybrid with CMA-ES for solving CEC 2017 benchmark problems", 2017 IEEE Congress on evolutionary computation (CEC): IEEE, pp. 145-152, 2017. Abstract
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Mohamed, A. W., A. A. Hadi, A. M. Fattouh, and K. M. Jambi, "LSHADE with semi-parameter adaptation hybrid with CMA-ES for solving CEC 2017 benchmark problems", 2017 IEEE Congress on evolutionary computation (CEC): IEEE, pp. 145-152, 2017. Abstract
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Mohamed, A. W., A. A. Hadi, A. M. Fattouh, and K. M. Jambi, "LSHADE with semi-parameter adaptation hybrid with CMA-ES for solving CEC 2017 benchmark problems", 2017 IEEE Congress on Evolutionary Computation (CEC), pp. 145 - 152, 5-8 June 2017, Submitted. Abstract
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Hadi, A. A., A. W. Mohamed, and K. M. Jambi, "LSHADE-SPA memetic framework for solving large-scale optimization problems", Complex & Intelligent Systems, vol. 5, issue 1: Springer International Publishing Cham, pp. 25-40, 2019. Abstract
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Hadi, A. A., A. W. Mohamed, and K. M. Jambi, "LSHADE-SPA memetic framework for solving large-scale optimization problems", Complex & Intelligent Systems, vol. 5, issue 1: Springer International Publishing Cham, pp. 25-40, 2019. Abstract
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Hadi, A. A., A. W. Mohamed, and K. M. Jambi, LSHADE-SPA memetic framework for solving large-scale optimization problems, , vol. 5, issue 1, pp. 25 - 40, 2019. AbstractWebsite

During the last decade, large-scale global optimization has been one of the active research fields. Optimization algorithms are affected by the curse of dimensionality associated with this kind of complex problems. To solve this problem, a new memetic framework for solving large-scale global optimization problems is proposed in this paper. In the proposed framework, success history-based differential evolution with linear population size reduction and semi-parameter adaptation (LSHADE-SPA) is used for global exploration, while a modified version of multiple trajectory search is used for local exploitation. The framework introduced in this paper is further enhanced by the concept of divide and conquer, where the dimensions are randomly divided into groups, and each group is solved separately. The proposed framework is evaluated using IEEE CEC2010 and the IEEE CEC2013 benchmarks designed for large-scale global optimization. The comparison results between our framework and other state-of-the-art algorithms indicate that our proposed framework is competitive in solving large-scale global optimization problems.

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Goudos, S. K., A. D. Boursianis, A. W. Mohamed, S. Wan, P. Sarigiannidis, G. K. Karagiannidis, and P. N. Suganthan, "Large Scale Global Optimization Algorithms for IoT Networks: A Comparative Study", 2021 17th International Conference on Distributed Computing in Sensor Systems (DCOSS): IEEE, pp. 272-279, 2021. Abstract
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Garg, V., K. Deep, K. A. Alnowibet, A. W. Mohamed, M. Shokouhifar, and F. Werner, "LX-BBSCA: Laplacian biogeography-based sine cosine algorithm for structural engineering design optimization", AIMS Mathematics, vol. 8, issue 12, pp. 30610-30638, 2023. Abstract
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