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Hysteresis Curve Fitting Optimization of Magnetic Controlled Shape Memory Alloy Actuator

机译:磁控形状记忆合金驱动器的磁滞曲线拟合优化

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As a new actuating material, magnetic controlled shape memory alloys (MSMAs) have excellent characteristics such as a large output strain, fast response, and high energy density. These excellent characteristics are very attractive for precision positioning systems. However, the availability of MSMAs in practical precision positioning is poor, caused by weak repeatability under a certain stimulus. This problem results from the error of a large magnetic hysteresis in an external magnetic field. A suitable hysteresis modelling method can reduce the error and improve the accuracy of the MSMA actuator. After analyzing the original hysteresis modelling methods, three kinds of hysteresis modelling methods are proposed: least squares method, back propagation (BP) artificial neural network, and BP artificial neural network based on genetic algorithms. Comparing the accuracy and convergence rate of three kinds of hysteresis modelling methods, the results show that the convergence rate of least squares method is the fastest, and the convergence accuracy of BP artificial neural networks based on genetic algorithms is the highest.
机译:磁控形状记忆合金(MSMA)作为一种新的致动材料,具有诸如输出应变大,响应速度快和能量密度高等优异特性。这些出色的特性对于精密定位系统非常有吸引力。但是,由于在某些刺激下可重复性较弱,因此在实际精确定位中MSMA的可用性很差。该问题是由于外部磁场中的大磁滞现象引起的。合适的磁滞建模方法可以减少误差并提高MSMA执行器的精度。在分析了最初的磁滞建模方法之后,提出了三种磁滞建模方法:最小二乘法,反向传播人工神经网络和基于遗传算法的人工神经网络。比较三种滞后建模方法的精度和收敛速度,结果表明最小二乘法的收敛速度最快,而基于遗传算法的BP人工神经网络的收敛精度最高。

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