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Nonlinear dynamic system identification using Volterra series: Multi-objective optimization approach

机译:基于Volterra级数的非线性动态系统辨识:多目标优化方法。

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In this paper, system identification of the non-linear dynamic system based on optimized Volterra model structure is considered. Model structure selection is an important step in system identification, which involves the selection of variables and terms of a model. The important issue is choosing a compact model representation where only significant terms are selected among all the possible ones beside good performance. An automated algorithm based on multi-objective optimization is proposed. The developed model should fulfil two criteria or objectives namely good predictive accuracy and optimum model structure. Genetic algorithm is applied to search the significant Volterra kernels among all possible candidate model combinations. The result shows that the proposed algorithm is able to correctly identify the simulated examples and adequately model the nonlinear discrete dynamic system.
机译:本文考虑了基于优化的Volterra模型结构的非线性动力系统的系统辨识。模型结构的选择是系统识别的重要步骤,其中涉及选择变量和模型项。重要的问题是选择一个紧凑的模型表示形式,其中除了良好的性能外,仅在所有可能的术语中选择重要的术语。提出了一种基于多目标优化的自动算法。开发的模型应满足两个标准或目标,即良好的预测准确性和最佳的模型结构。应用遗传算法在所有可能的候选模型组合中搜索重要的Volterra内核。结果表明,该算法能够正确识别仿真实例,并对非线性离散动力系统进行充分建模。

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