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PARAMETER ESTIMATION FOR TIME-VARYING SYSTEM BASED ON COMBINATORIAL PSO

机译:基于组合PSO的时变系统参数估计

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摘要

In this paper, a novel Particle Swarm Optimization (PSO) identification algorithm for time-varying systems with a colored noise is presented Presented criterion function can show not only outside system output error but also inside parameters error in order to explain more difference between actual and estimative system. Identification algorithm may consist of many different PSO algorithms that are named the combinatorial PSO. The estimating and tracking of parameters make use of characteristics of different PSO algorithms. The simulation and result show that the identification algorithm for time-varying systems with noise was indeed more efficient and robust in combinatorial PSO comparing with the original particle swarm optimization.
机译:本文提出了一种针对有色噪声的时变系统的新型粒子群优化(PSO)识别算法。提出的判据函数不仅可以显示系统外部输出误差,而且可以显示系统内部参数误差,以解释实际与实际之间的更多差异。估计系统。识别算法可能包含许多不同的PSO算法,这些算法称为组合PSO。参数的估计和跟踪利用了不同PSO算法的特征。仿真和结果表明,与原始粒子群优化算法相比,组合PSO的带噪声时变系统识别算法确实更有效,更鲁棒。

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