差分进化和混沌映射操作的混合鲸优化算法

J. Bi, Wenduo Gu, Haitao Yuan
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引用次数: 0

摘要

原始鲸鱼优化算法(Original Whale Optimization Algorithm, WOA)是一种模仿捕鲸而产生的元启发式优化算法。它在许多优化问题中都取得了良好的性能。然而,WOA在迭代过程中容易失去解的多样性,陷入局部最优,使优化过程停滞不前。本文旨在将混沌理论与差分进化(Differential Evolution, DE)算法的思想相结合,增强WOA生成的解的随机性和多样性,使其在迭代过程中尽可能不陷入局部最优解。具体而言,本文提出了一种混沌微分WOA (CDWOA)算法,并对其进行了10个基准函数的测试,得到了最终的优化结果来验证其性能。此外,还进行了高维实验来评价CDWOA的性能。测试了CDWOA对每个问题的运行时间,以验证CDWOA的有效性。实验结果对比表明,该算法在解决单目标优化的低维和高维问题方面都优于同类算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Whale Optimization Algorithm with Differential Evolution and Chaotic Map Operations
Original Whale Optimization Algorithm (WOA) is a meta-heuristic optimization one generated by imitating whale hunting. It has achieved good performance in many optimization problems. However, WOA is prone to lose the diversity of solutions in the iterative process and fall into local optima, which makes the optimization process stagnate. This work aims to solve this problem by combining the chaos theory and the idea of a Differential Evolution (DE) algorithm to enhance the randomness and diversity of solutions generated by WOA, so as not to fall into a locally optimal solution in the iteration as far as possible. Specifically, this work proposes a Chaotic Differential WOA (CDWOA), which is tested with 10 benchmark functions, and final optimization results are obtained to demonstrate its performance. In addition, experiments with higher dimensions are conducted to evaluate the performance of CDWOA. The running time of CDWOA for each problem is tested to demonstrate the efficiency of CDWOA. The comparison of experimental results shows that it outperforms its typical peers in solving both low-dimensional and high-dimensional problems of single-objective optimization.
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