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NARMAX Model Identification Using Multi-Objective Optimization Differential Evolution

机译:使用多目标优化差分进化的NARMAX模型识别

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摘要

Multi-objective optimization differential evolution (MOODE) algorithm has demonstrated to be an effective algorithm for selecting the structure of nonlinear auto-regressive with exogeneous input (NARX) model in dynamic system modeling. This paper presents the expansion of the MOODE algorithm to obtain an adequate and parsimonious nonlinear auto-regressive moving average with exogenous input (NARMAX) model. A simple methodology for developing the MOODE-NARMAX model is proposed. Two objective functions were considered in the algorithm for optimization; minimizing the number of term of a model structure and minimizing the mean square error between actual and predicted outputs. Two simulated systems and two real systems data were considered for testing the effectiveness of the algorithm. Model validity tests were applied to the set of solutions called the Pareto-optimal set that was generated from the MOODE algorithm in order to select an optimal model. The results show that the MOODE-NARMAX algorithm is able to correctly identify the simulated examples and adequately model real data structures.
机译:在动态系统建模中,多目标优化微分进化(MOODE)算法已被证明是一种有效的算法,可以选择外源输入(NARX)模型的非线性自回归结构。本文提出了MOODE算法的扩展,以利用外来输入(NARMAX)模型获得足够的,简约的非线性自回归移动平均值。提出了一种开发MOODE-NARMAX模型的简单方法。优化算法中考虑了两个目标函数:最小化模型结构的项数,并最小化实际和预测输出之间的均方误差。考虑了两个模拟系统和两个实际系统数据以测试算法的有效性。将模型有效性测试应用于从MOODE算法生成的称为Pareto-最优集的解集中,以选择最佳模型。结果表明,MOODE-NARMAX算法能够正确识别仿真示例并充分建模真实数据结构。

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