Fuzzy Controller Design by Ant Colony Optimization

Chia-Feng Juang, Hao-Jung Huang, Chun-Ming Lu
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引用次数: 14

Abstract

An ant colony optimization (ACO) application to a fuzzy controller design, called ACO-FC, is proposed in this paper for improving design efficiency. A fuzzy controller's antecedent part, i.e., the "if" part of its composing fuzzy if-then rules, is partitioned in grid-type, and all candidate rule consequent values are then listed. An ant tour is regarded as a combination of consequent values selected from every rule. A pheromone matrix among all candidate consequent values is constructed. Searching for the best one among all combinations of rule consequent values is based mainly on the pheromone matrix. The proposed ACO-FC performance is shown to be better than other evolutionary design methods on one simulation example.
基于蚁群优化的模糊控制器设计
为了提高模糊控制器的设计效率,将蚁群算法应用于模糊控制器的设计中。将模糊控制器的先行部分,即构成模糊if-then规则的“if”部分以网格形式划分,列出所有候选规则的结果值。蚁游被视为从每个规则中选择的结果值的组合。构造了所有候选结果值之间的信息素矩阵。在所有规则结果值组合中寻找最佳组合主要基于信息素矩阵。仿真结果表明,该算法的性能优于其他进化设计方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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