基于遗传算法的进化计算并行模型

Xiaogang Wang, Yan‐Bin Bai, Yue Li
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引用次数: 0

摘要

本文提出了一种并行进化计算模型,称为CLA-EC。该模型是细胞学习自动机(CLA)模型和进化模型的结合。在这个新模型中,每个基因组被分配到一个细胞学习自动机的细胞中,每个细胞学习自动机被分配到一组学习自动机。与细胞相关联的自动机所选择的一组行为决定了该细胞的基因组字符串。基于局部规则生成强化信号向量,并将其赋给驻留在单元中的学习自动机集合。根据接收到的信号,每个学习自动机根据学习算法更新其内部结构。重复行动选择和更新内部结构的过程,直到满足预定的标准。该模型可用于求解优化问题。为了证明该模型的有效性,该模型已用于解决实值函数优化和聚类问题等若干优化问题。计算机仿真表明了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallel Model of Evolutionary Computing Based on Genetic Algorithm
In this paper, we propose a Parallel evolutionary computing model, called CLA-EC. This model is a combination of a model called cellular learning automata (CLA) and the evolutionary model. In this new model, each genome is assigned to a cell of cellular learning automata to each of which a set of learning automata is assigned. The set of actions selected by the set of automata associated to a cell determines the genome’s string for that cell. Based on a local rule, a reinforcement signal vector is generated and given to the set learning automata residing in the cell. Based on the received signal, each learning automaton updates its internal structure according to a learning algorithm. The process of action selection and updating the internal structure is repeated until a predetermined criterion is met. This model can be used to solve optimization problems. To show the effectiveness of the proposed model it has been used to solve several optimization problems such as real valued function optimization and clustering problems. Computer simulations have shown the effectiveness of this model.
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