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Genetic identification of dynamical systems with static nonlinearities

机译:具有静态非线性的动力系统的遗传辨识

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This paper describes the application of genetic algorithms (GA) to identify a class of nonlinear SISO models composed of a memoryless nonlinearity in series with a linear transfer function. In contrast with recent literature on the considered problem, we encode in the chromosomes also the structure of the model (type of nonlinearity, number of zeros and poles), and use the GA to identify both the optimal structure and the associated parameters. New operators for mutation and crossover to deal with chromosomes with variable length are introduced. The effectiveness of the approach is tested on a set of case studies derived from literature.
机译:本文介绍了遗传算法(GA)识别由线性传递函数串联的无记忆非线性组成的一类非线性SISO模型的应用。与最近的文献相比,在考虑的问题上,我们也在染色体中编码模型的结构(非线性类型,零和​​杆的数量),并使用GA识别最佳结构和相关参数。介绍了用于处理具有可变长度的染色体的突变和交叉的新操作员。该方法的有效性在来自文献的一组案例研究中进行了测试。

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