压电作动器Bouc-Wen滞回模型参数辨识的适应度函数

A. Saleem, Serein Al-Ratrout, M. Mesbah
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引用次数: 10

摘要

压电致动器具有刚度高、响应速度快、结构紧凑、精度高等优点,在微纳定位系统中得到了广泛的应用。然而,由于遗传迟滞,粒子群的非线性行为往往会降低粒子群的跟踪性能。因此,许多研究工作都致力于模拟PAs的迟滞行为。文献中提出了许多非线性模型,如Bouc- Wen (BW)模型。优化算法的类型和所采用的适应度函数对BW参数的辨识性能有很大影响。一个广泛使用的适应度函数是均方误差(MSE)。这种选择通常会导致在位移波形的峰值和低谷处产生相对较高的误差。本文提出了一种新的基于信号峰谷误差的优化适应度函数。利用该适应度函数,利用粒子群优化(PSO)技术估计模型参数。实验和仿真结果表明,这种适应度函数的选择在峰值和低谷处的性能提高了90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fitness function for parameters identification of Bouc-Wen hysteresis model for piezoelectric actuators
Piezoelectric actuators (PA) are widely used in micro and nano positioning systems owing to their high stiffness, fast response, compact structure, and high precision. However, nonlinear behaviors of PAs, due to inherited hysteresis, tend to deteriorate their tracking performance. Therefore, many research works have been devoted to the modeling the hysteresis behavior in PAs. A number of nonlinear models were proposed in the literature such as Bouc- Wen (BW). The performance of identification of BW parameters is highly affected by the type of optimization algorithm and the adopted fitness function. One widely used fitness function is the mean square error (MSE). This choice often results in a relatively high error at the peaks and valleys of the displacement waveform. In this paper, a new optimization fitness function, based on the error in the signal peaks and valleys, is proposed. This fitness function is used to estimate the BW model parameters using the particle swarm optimization (PSO) technique. Experimental and simulation results show that this choice of fitness function improved the performance by up to 90% at the peaks and valleys.
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