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Multiobjective Identification of Takagi-Sugeno Fuzzy Models

机译:Takagi-Sugeno模糊模型的多目标辨识

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The problem of identifying the parameters of the constituent local linear models of Takagi-Sugeno fuzzy models is considered. In order to address the tradeoff between global model accuracy and interpretability of the local models as linearizations of a nonlinear system, two multiobjective identification algorithms are studied. Particular attention is paid to the analysis of conflicts between objectives, and we show that such information can be easily computed from the solution of the multiobjective optimization. This information is useful to diagnose the model and tune the weighting/priorities of the multiobjective optimization. Moreover, the result of the conflict analysis can be used as a constructive tool to modify the fuzzy model structure (including membership functions) in order to meet the multiple objectives. Simple illustrative examples as well as experimental results show the usefulness of the method.
机译:考虑了识别Takagi-Sugeno模糊模型的局部局部线性模型的参数的问题。为了解决作为非线性系统线性化的全局模型精度和局部模型的可解释性之间的折衷,研究了两种多目标识别算法。特别关注目标之间的冲突的分析,并且我们表明可以从多目标优化的解决方案中轻松计算出此类信息。此信息对于诊断模型和调整多目标优化的权重/优先级很有用。此外,冲突分析的结果可以用作构造工具,以修改模糊模型结构(包括隶属函数),以满足多个目标。简单的说明性示例以及实验结果表明了该方法的实用性。

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