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Evolving structure and parameters of fuzzy models with interpretable membership functions

机译:具有可解释隶属函数的模糊模型的演化结构和参数

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摘要

In this paper, a new evolutionary algorithm for optimization of fuzzy models is proposed. For simultaneous optimization of structure and parameters of a fuzzy model, unique encoding scheme and appropriate evolutionary operators are proposed. There are three important aspects in fuzzy modeling: modeling accuracy, rule compactness, and interpretability of input membership functions. Thus, a new fitness function is proposed to consider the three objectives simultaneously. Through simulations on two well-known modeling problems, it is shown that the proposed algorithm is effective in finding an accurate fuzzy model with compact number of fuzzy rules. In addition, the fuzzy model uses well distributed membership functions that helps to increase interpretability of the fuzzy model.
机译:提出了一种新的模糊模型优化进化算法。为了同时优化模糊模型的结构和参数,提出了独特的编码方案和适当的进化算子。模糊建模中有三个重要方面:建模准确性,规则紧凑性和输入隶属度函数的可解释性。因此,提出了一种新的适应度函数来同时考虑这三个目标。通过对两个众所周知的建模问题的仿真,表明所提出的算法可有效地找到具有紧凑数量的模糊规则的精确模糊模型。另外,模糊模型使用分布良好的隶属函数,有助于提高模糊模型的可解释性。

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