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Master-slave model-based parallel chaos optimization algorithm for parameter identification problems

机译:基于主从模型的参数识别问题并行混沌优化算法

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摘要

The parameter identification problem can be formalized as a multi-dimensional optimization problem, where an objective function is established minimizing the error between the estimated and measured data. In this article, a master-slave model (MSM)-based parallel chaos optimization algorithm (PCOA) (denoted as MSM-PCOA) is proposed for parameter identification problems. The MSM-PCOA is a novel global optimization algorithm, where twice carrier wave chaos search is employed as the master model, while the migration and crossover operation are used as the slave model. The MSM-PCOA is applied to the parameter identification of two different complex systems: bidirectional inductive power transfer system and chaotic systems. Simulation results, compared with other optimization algorithms, show that MSM-PCOA has better parameter identification performance.
机译:参数识别问题可以形式化为多维优化问题,其中建立目标函数以最小化估计数据和测量数据之间的误差。本文提出了一种基于主从模型(MSM)的并行混沌优化算法(PCOA)(称为MSM-PCOA)来解决参数识别问题。 MSM-PCOA是一种新颖的全局优化算法,其中两次载波混沌搜索用作主模型,而迁移和交叉操作用作从模型。 MSM-PCOA用于两个不同的复杂系统的参数识别:双向感应功率传输系统和混沌系统。仿真结果表明,与其他优化算法相比,MSM-PCOA具有更好的参数识别性能。

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