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An improvement of neuro-fuzzy learning algorithm for tuning fuzzy rules

机译:调整模糊规则的神经模糊学习算法的改进

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Based on the fuzzy clustering method, we improved a neuro-fuzzy learning algorithm. In this improved approach, before learning fuzzy rules we extract typical data from training data by using fuzzy x-means clustering algorithm, in order to remove redundant data and resolve conflicts in data, and make them as practical training data. By these typical data, fuzzy rules can be tuned by using the neuro-fuzzy learning algorithm. Therefore, the learning time can be expected to be reduced and the fuzzy rules generated by the improved approach are reasonable and suitable for the identified system model. Moreover, the efficiency of the improved method is also shown by identifying nonlinear functions.
机译:基于模糊聚类方法,我们改进了一种神经模糊学习算法。在这种改进的方法中,在学习模糊规则之前,我们使用模糊x均值聚类算法从训练数据中提取典型数据,以去除冗余数据并解决数据中的冲突,并将其作为实用的训练数据。通过这些典型数据,可以使用神经模糊学习算法来调整模糊规则。因此,可以期望减少学习时间,并且通过改进的方法生成的模糊规则是合理的并且适合于所识别的系统模型。此外,通过识别非线性函数也显示了改进方法的效率。

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