首页> 外文会议>International Conference on Electrical Machines and Systems(ICEMS 2005) vol.3; 20050927-29; Nanjing(CN) >Parameter Identification of Strain Hysteresis Model for Giant Magnetostrictive Actuators Using a Hybrid Genetic Algorithm
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Parameter Identification of Strain Hysteresis Model for Giant Magnetostrictive Actuators Using a Hybrid Genetic Algorithm

机译:基于混合遗传算法的超磁致伸缩致动器应变滞回模型参数辨识

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摘要

This paper shows a hysteresis model of giant magnetostrictive actuator (GMA), and proposes a hybrid genetic algorithm (HGA) to identify the parameters of the model. In the HGA, the trust region algorithm (TRA) is taken as a local search operator which parallels to the selection, crossover and mutation operators of a float-coded genetic algorithm (FCGA). The HGA is paid attention to both the advantages of the TRA and the genetic algorithm. It not only has a rather high convergence speed, but also can find the best parameter with a rather large probability. The simulation and experimental results verify the effectiveness of the model and the HGA.
机译:本文展示了巨磁致伸缩致动器(GMA)的磁滞模型,并提出了一种混合遗传算法(HGA)来识别模型的参数。在HGA中,将信任区域算法(TRA)用作本地搜索算子,该算子与浮点编码遗传算法(FCGA)的选择,交叉和变异算子平行。 HGA同时关注TRA和遗传算法的优势。它不仅具有相当高的收敛速度,而且可以以相当大的概率找到最佳参数。仿真和实验结果验证了模型和HGA的有效性。

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