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2024
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15th International Conference on Applications of Fuzzy Systems, Soft Computing and Artificial Intelligence Tools – ICAFS-2022
Lecture Notes in Networks and Systems,
2023
DOI:10.1007/978-3-031-25252-5_96
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A hybrid genetic–firefly algorithm for engineering design problems
Journal of Computational Design and Engineering,
2022
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Proceedings of the 4th International Conference on Electrical Engineering and Control Applications
Lecture Notes in Electrical Engineering,
2021
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Hybridization of Grasshopper Optimization Algorithm With Genetic Algorithm for Solving System of Non-Linear Equations
IEEE Access,
2020
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Steady-State Sine Cosine Genetic Algorithm Based Chaotic Search for Nonlinear Programming and Engineering Applications
IEEE Access,
2020
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Handbook of Experimental Pharmacology,
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An intelligent computing technique based on a dynamic-size subpopulations for unit commitment problem
OPSEARCH,
2019
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Application of a Binary-Real Coded Cuckoo Search Algorithm for Solving Unit Commitment Problem
2019 International Conference on Advanced Electrical Engineering (ICAEE),
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An enhanced genetic algorithm with new mutation for cluster analysis
Computational Statistics,
2019
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The International Conference on Advanced Machine Learning Technologies and Applications (AMLTA2018)
Advances in Intelligent Systems and Computing,
2018
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Hybrid Genetic Algorithm with K-Means for Clustering Problems
Open Journal of Optimization,
2016
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