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Three new fuzzy neural networks learning algorithms based on clustering, training error and genetic algorithm

机译:基于聚类,训练误差和遗传算法的三种新型模糊神经网络学习算法

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摘要

Three new learning algorithms for Takagi-Sugeno-Kang fuzzy system based on training error and genetic algorithm are proposed. The first two algorithms are consisted of two phases. In the first phase, the initial structure of neuro-fuzzy network is created by estimating the optimum points of training data in input-output space using KNN (for the first algorithm) and Mean-Shift methods (for the second algorithm) and keeps adding new neurons based on an error-based algorithm. Then in the second phase, redundant neurons are recognized and removed using a genetic algorithm. The third algorithm then builds the network in one phase using a modified version of error algorithm used in the first two methods. The KNN method is shown to be invariant to parameter K in KNN algorithm and in two simulated examples outperforms other neuro-fuzzy approaches in both performance and network compactness.
机译:提出了三种基于训练误差和遗传算法的高木-Sugeno-Kang模糊系统学习算法。前两个算法由两个阶段组成。在第一阶段,神经模糊网络的初始结构是通过使用KNN(针对第一种算法)和Mean-Shift方法(针对第二种算法)估计输入输出空间中训练数据的最佳点而创建的,并不断添加基于基于错误的算法的新神经元。然后在第二阶段,使用遗传算法识别并去除多余的神经元。然后,第三种算法使用在前两种方法中使用的错误算法的修改版本在一个阶段中构建网络。在KNN算法中,KNN方法对于参数K是不变的,并且在两个模拟示例中,在性能和网络紧凑性方面均优于其他神经模糊方法。

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