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A nonlinear system identification approach based on Fuzzy Wavelet Neural Network

机译:基于模糊小波神经网络的非线性系统辨识方法

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This paper concerns the use of an alternative Fuzzy Wavelet Neural Network (FWNN) to model the input-output maps of nonlinear dynamic systems. The analyzed structure uses only wavelet functions in the consequent part of its fuzzy rules. The advantages and disadvantages of using this FWNN in model identification tasks are listed considering a comparative study performed with other FWNN structures found in literature. The evaluations are carried out using a real multisection liquid storage tank with abrupt transitions between its sections. The analysis is based on usual criteria such as: mean quadratic error, number of training epochs, number of adjustable parameters, quadratic error variance, among others. The results indicate that the modified FWNN structure maintains the capability of generalization and other important characteristics presented by traditional networks FWNN, despite the reduction in the complexity of the structure.
机译:本文涉及使用替代的模糊小波神经网络(FWNN)对非线性动态系统的输入-输出图进行建模。所分析的结构在其模糊规则的后续部分中仅使用小波函数。考虑到与文献中发现的其他FWNN结构进行的比较研究,列出了在模型识别任务中使用此FWNN的优缺点。使用真正的多部分储液罐进行评估,各储罐之间会突然过渡。该分析基于通常的标准,例如:平均二次误差,训练时期数,可调整参数的数量,二次误差方差等。结果表明,尽管结构的复杂度有所降低,但改进的FWNN结构仍保留了传统网络FWNN所具有的泛化能力和其他重要特征。

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