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A New Fuzzy Membership Function with Applications in Interpretability Improvement of Neurofuzzy Models

机译:一种新的模糊隶属度函数及其在神经模糊模型可解释性改进中的应用

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摘要

Local model interpretability is a very important issue in neurofuzzy local linear models applied to nonlinear state estimation, process modelling and control. This paper proposes a new fuzzy membership function with desirable properties for improving the interpretability of neurofuzzy models. A learning algorithm for constructing neurofuzzy models based on this new membership function and a hybrid objective function is derived as well, which aims to achieve optimal balance between global model accuracy and local model interpretability. Experimental results have shown that the proposed approach is simple and effective in improving the interpretability of Takagi-Sugeno fuzzy models while preserving the model accuracy at a satisfactory level.
机译:局部模型的可解释性是神经模糊局部线性模型中用于非线性状态估计,过程建模和控制的一个非常重要的问题。本文提出了一种新的具有良好性质的模糊隶属函数,以提高神经模糊模型的可解释性。并基于该新的隶属度函数和混合目标函数,构造了一种神经模糊模型的学习算法,旨在实现全局模型精度与局部模型可解释性之间的最佳平衡。实验结果表明,该方法在提高Takagi-Sugeno模糊模型的可解释性的同时又保持了令人满意的模型准确性,是简单有效的。

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