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A new encoding method of genetic algorithms towards parameter identification of fuzzy expert systems

机译:一种新的遗传算法编码方法对模糊专家系统的参数识别

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摘要

The membership functions of fuzzy expert systems need a systematic, self-learning method instead of a subjective tuning method in order to increase the performance of the fuzzy model. The genetic-algorithm learning method is consequently employed. The rule-based encoding scheme would bring the redundant information for the genetic algorithm by repeatedly representing the similar membership function in an individual. The new encoding method, which is a parameter-based encoding scheme, would diminish the redundant representation of fuzzy parameters. This method would separate the data structures of fuzzy rules and fuzzy parameters in the genetic-algorithm learning method. This method should efficiently use the memory resources of computers and increase the dimensions of the solved problem. Then, a numerical example and the learning results are demonstrated. Discussions about the effects of population size, reproduction method, crossover rate, mutation rate and fitness scaling are included. Finally, some conclusions are presented.
机译:模糊专家系统的成员函数需要系统,自学习方法,而不是主观调整方法,以提高模糊模型的性能。因此采用了遗传算法学习方法。基于规则的编码方案将通过重复表示个人中的类似隶属函数来引入遗传算法的冗余信息。作为基于参数的编码方案的新编码方法将减少模糊参数的冗余表示。该方法将在遗传算法学习方法中分离模糊规则和模糊参数的数据结构。此方法应有效地使用计算机的存储器资源并增加解决问题的尺寸。然后,证明了数值示例和学习结果。包括讨论群体规模,再现方法,交叉速率,突变率和健身缩放的影响。最后,提出了一些结论。

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