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Genetic fuzzy logic controllers

机译:遗传模糊逻辑控制器

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摘要

The conventional fuzzy logic controller (CFLC) is limited in application, because its logic rules and membership functions have to be preset with expert knowledge. To avoid such drawbacks, a genetic fuzzy logic controller (GFLC) is proposed by employing an iterative evolution algorithm to promote the learning performance of logic rules and the tuning effectiveness of membership functions from examples In sequence. In addition, an encoding method is developed to overcome the difficulties in dealing with numerous constraints while employing genetic algorithms in tuning membership functions. A case of GM car-following behaviors is experimented to verify the applicability and robustness of GFLC. The results demonstrate that GFLC can predict the car-following behaviors precisely. Due to the similarity between fuzzy neural networks (FNN) and GFLC, a comparison is also made and the results indicate that GFLC performs superior to FNN.
机译:常规模糊逻辑控制器(CFLC)的应用受到限制,因为它的逻辑规则和隶属函数必须通过专家知识进行预设。为了避免这种弊端,提出了一种遗传模糊逻辑控制器(GFLC),该算法采用迭代进化算法来提升逻辑规则的学习性能和实例函数对隶属函数的调节效率。另外,开发了一种编码方法以克服在使用遗传算法调整隶属函数时处理众多约束的困难。 GM汽车追随行为的案例进行了实验,以验证GFLC的适用性和鲁棒性。结果表明,GFLC可以准确地预测跟车行为。由于模糊神经网络(FNN)和GFLC之间的相似性,还进行了比较,结果表明GFLC的性能优于FNN。

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