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A hopfield neural network-based Bouc-Wen model for magnetic shape memory alloy actuator

机译:用于磁形记忆合金执行器的基于Hopfield神经网络的BOUC-WEN模型

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摘要

Magnetic shape memory alloy (MSMA) actuator has potential application value in the aerospace, robotics and precision positioning due to the advantages such as small size, high precision, long stroke length and large energy density. However, the asymmetrical rate-dependent hysteresis between input and output of the MSMA actuator makes it difficult to build precise model of the MSMA actuator-based micropositioning system, so that the application of the MSMA actuator is seriously hindered. In this paper, a Bouc-Wen (BW) model is adopted to describe the hysteresis of the MSMA actuator. The parameters of BW model are identified online by Hopfield neural network (HNN). Then, the effectiveness of HNN-based BW model is fully certified using the experiments. The experimental results show that the BW model identified in this paper can accurately describe the hysteresis of the MSMA actuator at different input excitation.
机译:磁性形状记忆合金(MSMA)执行器由于小尺寸,精度高,行程长度和大的能量密度等优点,具有潜在的应用价值。然而,MSMA致动器的输入和输出之间的不对称率依赖性滞后使得难以构建基于MSMA致动器的微电入系统的精确模型,从而严重阻碍MSMA致动器的应用。本文采用BOUC-WEN(BW)模型来描述MSMA执行器的滞后。 BW模型的参数由Hopfield神经网络(HNN)在线在线识别。然后,使用实验完全认证了基于HNN的BW模型的有效性。实验结果表明,本文中鉴定的BW模型可以准确地描述MSMA致动器在不同输入激励下的滞后。

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