CaAIS:基于细胞自动机的动态环境人工免疫系统

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Algorithms Pub Date : 2023-12-30 DOI:10.3390/a17010018
Alireza Rezvanian, S. M. Vahidipour, A. Saghiri
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引用次数: 0

摘要

人工免疫系统(AIS)作为受自然启发的算法,已被开发用于解决从机器学习到优化等各类问题。本文提出了一种结合了蜂窝自动机(CA)的新型混合人工免疫系统模型,即基于蜂窝自动机的人工免疫系统(CaAIS),专门用于解决环境随时间变化的动态优化问题。在提出的模型中,代表标称解决方案的抗体分布在与搜索空间相对应的蜂窝网格中。这些抗体通过与相邻细胞并行交互,在不同时间产生超突变克隆,从而产生不同的解决方案。通过相邻细胞间的局部相互作用,近似最佳参数和近似最佳解决方案会传播到整个搜索空间。在每个单元中并行迭代,保留最有效的抗体作为记忆。相反,弱抗体会被移除并用新抗体替换,直到达到停止标准。CaAIS 结合了细胞自动机的计算能力和 AIS 的优化能力。为了评估 CaAIS 的性能,我们在移动峰基准上进行了多次实验。这些实验考虑了不同的配置,如邻域大小和抗体的重新随机化。模拟结果从统计学角度证明了 CaAIS 在大多数情况下优于其他人工免疫系统算法,尤其是在动态环境中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CaAIS: Cellular Automata-Based Artificial Immune System for Dynamic Environments
Artificial immune systems (AIS), as nature-inspired algorithms, have been developed to solve various types of problems, ranging from machine learning to optimization. This paper proposes a novel hybrid model of AIS that incorporates cellular automata (CA), known as the cellular automata-based artificial immune system (CaAIS), specifically designed for dynamic optimization problems where the environment changes over time. In the proposed model, antibodies, representing nominal solutions, are distributed across a cellular grid that corresponds to the search space. These antibodies generate hyper-mutation clones at different times by interacting with neighboring cells in parallel, thereby producing different solutions. Through local interactions between neighboring cells, near-best parameters and near-optimal solutions are propagated throughout the search space. Iteratively, in each cell and in parallel, the most effective antibodies are retained as memory. In contrast, weak antibodies are removed and replaced with new antibodies until stopping criteria are met. The CaAIS combines cellular automata computational power with AIS optimization capability. To evaluate the CaAIS performance, several experiments have been conducted on the Moving Peaks Benchmark. These experiments consider different configurations such as neighborhood size and re-randomization of antibodies. The simulation results statistically demonstrate the superiority of the CaAIS over other artificial immune system algorithms in most cases, particularly in dynamic environments.
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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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