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Dynamic Modeling for Dielectric Elastomer Actuators Based on LSTM Deep Neural Network

机译:基于LSTM深度神经网络的介电弹性体驱动器动态建模。

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This paper proposes a dynamic model for dielectric elastomer actuators (DEAs) based on the long-short term memory (LSTM) deep neural network. The fabrication of the DEA and the framework of the experimental platform are introduced firstly. The behaviors of the DEA are analyzed through several sets of experiments, which shows the DEA has obvious memory behavior (i.e., the hysteresis behavior and creep behavior), where the hysteresis behavior is a symmetry and rate-dependence. Considering that the traditional neural network is difficult to describe the memory property, the LSTM deep neural network is constructed as the dynamic model of the DEA. Then, such neural network is trained according to the experimental data. Finally, the comparation results of the experimental data and the model output verify the effectiveness as well as the generalization ability of the dynamic model.
机译:本文提出了一种基于长期短期记忆(LSTM)深层神经网络的介电弹性体致动器(DEA)的动力学模型。首先介绍了DEA的制作和实验平台的框架。通过几组实验分析了DEA的行为,这表明DEA具有明显的记忆行为(即磁滞行为和蠕变行为),其中磁滞行为是对称且与速率相关的。考虑到传统的神经网络难以描述其记忆特性,因此将LSTM深度神经网络构建为DEA的动态模型。然后,根据实验数据对这种神经网络进行训练。最后,将实验数据与模型输出进行比较,验证了该模型的有效性和泛化能力。

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