基于进化规划的多项式非线性系统智能结构选择

Claudio Camasca, A. Swain, N. Patel
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引用次数: 4

摘要

本研究提出了一种基于进化规划(EP)的结构选择或将哪些项包含到具有外生输入的非线性自回归移动平均(NARMAX)模型中的替代方法。该算法使用了一种类似精英主义的策略,即保留一代中最好的染色体并传给下一代。除了最小化均方误差(MSE)外,该方法还引入了一个内部项惩罚(ITP)函数,以在显著噪声的影响下拒绝虚假项。通过遵循自适应突变率并将其限制在50%以内,可以实现更快的收敛。为了进一步提高收敛性,遵循修剪策略,其中通过分配生存时间参数从模型中删除任何无关紧要的项。结合几个非线性系统实例说明了该方法的性能,结果令人满意
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Intelligent Structure Selection of Polynomial Nonlinear Systems using Evolutionary Programming
The present study proposes an alternate method of structure selection or which terms to include into a nonlinear autoregressive moving average with exogenous inputs (NARMAX) model, based on evolutionary programming (EP). The algorithm uses a strategy similar to elitism where the single best chromosome in a generation is retained and passed to the next. In addition to minimizing the mean square error (MSE), the method introduces an internal term penalty (ITP) function to reject spurious terms under the effects of significant noise. By following an adaptive mutation rate and restricting this to vary within 50%, faster convergence is achieved. To further improve the convergence, a pruning strategy is followed where any insignificant terms are removed from the model by assigning them with a time-to-live parameter. The performance of the proposed method is illustrated considering several examples of nonlinear systems and have been found to be satisfactory
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