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首页> 外文期刊>Intelligent automation and soft computing >A MODIFIED GENETIC ALGORITHM FOR TRAINING ADAPTIVE FUZZY SYSTEMS
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A MODIFIED GENETIC ALGORITHM FOR TRAINING ADAPTIVE FUZZY SYSTEMS

机译:训练自适应模糊系统的改进遗传算法。

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摘要

Adaptive Fuzzy Logic Systems trained by genetic evolution of their parameters are presented in this work. This technique is based on the aggregation of parameter perturbations. Neither the evaluation function nor the membership functions, have to be differentiable as required in most optimization techniques. In the classical Genetic Algorithms, the solution space of each parameter should be specified in the genetic search. The proposed technique does not specify the solution space of the parameters of the fuzzy logic system. It specifies the ranges of the perturbations of the parameters which will aggregate to find the optimum parameters for the Fuzzy Logic System. Computer simulation showed that the proposed technique reached an optimal solution for the Adaptive Fuzzy Logic parameters with a higher convergence rate than that of the classical GA.
机译:这项工作介绍了通过参数的遗传进化训练的自适应模糊逻辑系统。该技术基于参数摄动的集合。评估函数和隶属函数都不必像大多数优化技术中所要求的那样可区分。在经典的遗传算法中,应在遗传搜索中指定每个参数的解空间。所提出的技术没有指定模糊逻辑系统的参数的解空间。它指定了参数的摄动范围,这些范围将汇总以找到模糊逻辑系统的最佳参数。计算机仿真表明,所提出的技术以比传统遗传算法更高的收敛速度达到了自适应模糊逻辑参数的最优解。

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