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基于最大Lyapunov指数的多混沌黏菌算法用于实际优化

Maximum Lyapunov exponent-based multiple chaotic slime mold algorithm for real-world optimization.

作者信息

Yang Jiaru, Zhang Yu, Jin Ting, Lei Zhenyu, Todo Yuki, Gao Shangce

机构信息

Faculty of Engineering, University of Toyama, Toyama-shi, 930-8555, Japan.

School of Science, Nanjing Forestry University, Nanjing, 210037, China.

出版信息

Sci Rep. 2023 Aug 7;13(1):12744. doi: 10.1038/s41598-023-40080-1.

Abstract

Slime mold algorithm (SMA) is a nature-inspired algorithm that simulates the biological optimization mechanisms and has achieved great results in various complex stochastic optimization problems. Owing to the simulated biological search principle of slime mold, SMA has a unique advantage in global optimization problem. However, it still suffers from issues of missing the optimal solution or collapsing to local optimum when facing complicated problems. To conquer these drawbacks, we consider adding a novel multi-chaotic local operator to the bio-shock feedback mechanism of SMA to compensate for the lack of exploration of the local solution space with the help of the perturbation nature of the chaotic operator. Based on this, we propose an improved algorithm, namely MCSMA, by investigating how to improve the probabilistic selection of chaotic operators based on the maximum Lyapunov exponent (MLE), an inherent property of chaotic maps. We implement the comparison between MCSMA with other state-of-the-art methods on IEEE Congress on Evolution Computation (CEC) i.e., CEC2017 benchmark test suits and CEC2011 practical problems to demonstrate its potency and perform dendritic neuron model training to test the robustness of MCSMA on classification problems. Finally, the parameters' sensitivities of MCSMA, the utilization of the solution space, and the effectiveness of the MLE are adequately discussed.

摘要

黏菌算法(SMA)是一种受自然启发的算法,它模拟了生物优化机制,并且在各种复杂的随机优化问题中取得了优异的成果。由于黏菌模拟的生物搜索原理,SMA在全局优化问题中具有独特的优势。然而,在面对复杂问题时,它仍然存在错过最优解或陷入局部最优的问题。为了克服这些缺点,我们考虑在SMA的生物冲击反馈机制中添加一种新颖的多混沌局部算子,借助混沌算子的扰动特性来弥补局部解空间探索的不足。基于此,我们通过研究如何基于混沌映射的固有属性最大Lyapunov指数(MLE)来改进混沌算子的概率选择,提出了一种改进算法,即MCSMA。我们在IEEE进化计算大会(CEC)上,即CEC2017基准测试套件和CEC2011实际问题上,将MCSMA与其他先进方法进行了比较,以证明其有效性,并进行树突神经元模型训练,以测试MCSMA在分类问题上的鲁棒性。最后,充分讨论了MCSMA的参数敏感性、解空间的利用率以及MLE的有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ed4c/10406909/d60fd1a356da/41598_2023_40080_Fig1_HTML.jpg

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