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Genetic algorithm based identification of nonlinear systems by sparse Volterra filters

机译:基于遗传算法的稀疏Volterra滤波器辨识非线性系统

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摘要

A parsimonious parameterization scheme is proposed to model the sparse Volterra filter so that the number of Volterra kernels to be estimated is greatly reduced. Representing the Volterra filter using a linear vector equation, the genetic algorithm is applied to search the significant terms among all possible candidate vectors. As the significant terms are detected, the associated Volterra kernels are estimated using the least square error method. The problem to be solved is, in essence, the application of the genetic algorithm to combinatorial optimization. An operator called forced mutation is proposed along with the genetic algorithm to overcome the difficulties usually encountered when applying the genetic algorithm to combinatorial optimization.
机译:提出了一种简化的参数化方案来对稀疏的Volterra滤波器建模,从而大大减少了要估计的Volterra核的数量。代表使用线性向量方程的Volterra滤波器,遗传算法被应用于在所有可能的候选向量中搜索有效项。当检测到有效项时,使用最小二乘误差法估计相关的Volterra内核。本质上,要解决的问题是遗传算法在组合优化中的应用。提出了一种称为强制突变的算子以及遗传算法,以克服将遗传算法应用于组合优化时通常遇到的困难。

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