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Weighted fuzzy interpolative reasoning for sparse fuzzy rule-based systems based on piecewise fuzzy entropies of fuzzy sets

机译:基于模糊集分段模糊熵的稀疏模糊规则系统的加权模糊插值推理

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摘要

In this paper, we propose a new method for weighted fuzzy interpolative reasoning in sparse fuzzy rule-based systems based on piecewise fuzzy entropies of fuzzy sets. First, the proposed method uses the representative values of antecedent fuzzy sets, the representative values of observation fuzzy sets, and the representative values of consequence fuzzy sets of fuzzy rules to get the characteristic points of the fuzzy interpolative result represented by a fuzzy set. Then, it calculates the piecewise fuzzy entropies between any two characteristic points of the antecedent fuzzy sets, the piecewise fuzzy entropies between any two characteristic points of the observation fuzzy sets, and the piecewise fuzzy entropies between any two characteristic points of the consequence fuzzy sets of the fuzzy rules, respectively. Then, it calculates the weights of the antecedent fuzzy sets of each fuzzy rule, respectively, and calculates the weight of each fuzzy rule. Then, it calculates the piecewise fuzzy entropies between any two characteristic points of the fuzzy interpolative result. Finally, it uses the secant method to calculate the degree of membership of each obtained characteristic point of the fuzzy interpolative result. The experimental results show that the proposed method outperforms the existing methods for dealing with the multivariate regression problems, the Mackey-Glass chaotic time series prediction problem, and the time series prediction problems. (C) 2015 Elsevier Inc. All rights reserved.
机译:本文提出了一种基于模糊集的分段模糊熵的稀疏模糊规则系统中加权模糊插值推理的新方法。首先,该方法利用先验模糊集的代表值,观察模糊集的代表值,结果和模糊规则的结果模糊集的代表值来获得模糊集表示的模糊插值结果的特征点。然后,它计算先验模糊集的任意两个特征点之间的分段模糊熵,观测模糊集的任意两个特征点之间的分段模糊熵以及结果模糊集的任意两个特征点之间的分段模糊熵。模糊规则。然后,它分别计算每个模糊规则的先前模糊集的权重,并计算每个模糊规则的权重。然后,计算模糊插值结果的任意两个特征点之间的分段模糊熵。最后,它使用割线法来计算每个模糊插值结果特征点的隶属度。实验结果表明,该方法优于现有的多元回归问题,Mackey-Glass混沌时间序列预测问题和时间序列预测问题。 (C)2015 Elsevier Inc.保留所有权利。

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