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WH-EA: An Evolutionary Algorithm for Wiener-Hammerstein System Identification

机译:WH-EA:用于Wiener-Hammerstein系统识别的进化算法

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摘要

Current methods to identify Wiener-Hammerstein systems using Best Linear Approximation (BLA) involve at least two steps. First, BLA is divided into obtaining front and back linear dynamics of the Wiener-Hammerstein model. Second, a refitting procedure of all parameters is carried out to reduce modelling errors. In this paper, a novel approach to identify Wiener-Hammerstein systems in a single step is proposed. This approach is based on a customized evolutionary algorithm (WH-EA) able to look for the best BLA split, capturing at the same time the process static nonlinearity with high precision. Furthermore, to correct possible errors in BLA estimation, the locations of poles and zeros are subtly modified within an adequate search space to allow a fine-tuning of the model. The performance of the proposed approach is analysed by using a demonstration example and a nonlinear system identification benchmark.
机译:当前使用最佳线性近似(BLA)识别Wiener-Hammerstein系统的方法至少涉及两个步骤。首先,BLA分为获得Wiener-Hammerstein模型的前后线性动力学。其次,对所有参数进行重新拟合以减少建模误差。在本文中,提出了一种在单一步骤中识别Wiener-Hammerstein系统的新颖方法。这种方法基于定制的进化算法(WH-EA),该算法能够寻找最佳的BLA拆分,同时以高精度捕获过程静态非线性。此外,为了纠正BLA估计中的可能误差,在适当的搜索空间内对极点和零点的位置进行了微妙的修改,以允许对模型进行微调。通过一个演示示例和一个非线性系统识别基准,分析了该方法的性能。

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