Yang Liang, Zhang Dongsheng, Zhang Xining, Tian Aifen
School of Mechanical Engineering, Xi'an Jiaotong University, Xi'an 710049, China.
School of Materials Science and Engineering, Xi'an University of Science and Technology, Xi'an 710054, China.
ACS Omega. 2020 Feb 19;5(8):4067-4074. doi: 10.1021/acsomega.9b03725. eCollection 2020 Mar 3.
Ionic polymer-metal composite (IPMC) actuators are one of the most prominent electroactive polymers with expected widespread use in the future. The IPMC bends in response to a small applied electric field as a result of the mobility of cations in the polymer network. This paper proposes a Levenberg-Marquardt algorithm backpropagation neural network (LMA-BPNN) prediction model applicable for Cu/Nafion-based ionic polymer-metal composites to predict the actuation property. The proposed approach takes the dimension ratio (DR) and stimulation voltage as the input layer, displacement and blocking force as the output layer, and trains the LMA-BPNN with the experimental data so as to obtain a mapping relationship between the input and the output and obtain the predicted values of displacement and blocking force. An IPMC actuating system is set up to generate a collection of the IPMC actuating data. Based on the input/output training data, the most suitable structure was found out for the BPNN model to represent the IPMC actuation behavior. After training and verification, a 2-9-3-1 BPNN structure for displacement and a 2-9-4-1 BPNN structure for blocking force indicate that the structure can provide a good reference value for the IPMC. The results showed that the BPNN model based on the LMA could predict the displacement and blocking force of the IPMC. Therefore, this model can become an effective solution for IPMC control applications.
离子聚合物-金属复合材料(IPMC)致动器是最突出的电活性聚合物之一,有望在未来得到广泛应用。由于聚合物网络中阳离子的迁移率,IPMC在施加小电场时会发生弯曲。本文提出了一种适用于基于铜/全氟磺酸的离子聚合物-金属复合材料的Levenberg-Marquardt算法反向传播神经网络(LMA-BPNN)预测模型,以预测其驱动性能。该方法将尺寸比(DR)和激励电压作为输入层,位移和阻塞力作为输出层,并用实验数据训练LMA-BPNN,从而获得输入与输出之间的映射关系,并得到位移和阻塞力的预测值。建立了一个IPMC驱动系统,以生成IPMC驱动数据的集合。基于输入/输出训练数据,找到了最适合的BPNN模型结构来表示IPMC的驱动行为。经过训练和验证,用于位移的2-9-3-1 BPNN结构和用于阻塞力的2-9-4-1 BPNN结构表明,该结构可为IPMC提供良好的参考值。结果表明,基于LMA的BPNN模型能够预测IPMC的位移和阻塞力。因此,该模型可以成为IPMC控制应用的有效解决方案。