Enhancing Differential Evolution Algorithm: Adaptation for CEC 2017 and CEC 2021 Test Suites

Rohit Salgotra, Seyedali Mirjalili, A. Gandomi
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Abstract

Differential evolution (DE) has proved its significance for optimizing various real-world applications and standard benchmarks. In this work, a self-adaptive version of DE is proposed namely LSHADESPA by employing three major modifications, i) proportional shrinking population mechanism for reducing computational burden, ii) simulated annealing-based scaling factor (F) for improving the exploration properties, and iii) oscillating inertia weight-based crossover rate (CR) for a balancing exploitation and exploration. The proposed algorithm has been experimentally tested on IEEE CEC 2017 and IEEE CEC 2021 benchmarks. For performance evaluation, a comparison with respect to JADE, SaDE, SHADE, LSHADE, MVMO, and others has been performed. Experimental and statistical results affirm the superior performance of the proposed LSHADESPA algorithms with respect to other algorithms.
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改进差分进化算法:适应CEC 2017和CEC 2021测试套件
差分进化(DE)已经证明了它在优化各种实际应用程序和标准基准方面的重要性。在这项工作中,提出了一个自适应的DE版本,即LSHADESPA,通过三个主要修改:1)减少计算负担的比例缩小人口机制;2)基于模拟退火的缩放因子(F)以改善勘探性能;3)基于振荡惯性权重的交叉率(CR)以平衡开采和勘探。该算法已在IEEE CEC 2017和IEEE CEC 2021基准上进行了实验测试。为了进行性能评价,对JADE、SaDE、SHADE、LSHADE、MVMO等进行了比较。实验和统计结果证实了LSHADESPA算法相对于其他算法的优越性能。
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