乙状窦函数
磁致伸缩
极限学习机
磁流变液
材料科学
超参数
磁致伸缩材料
计算机科学
极限(数学)
人工智能
人工神经网络
磁场
结构工程
数学
阻尼器
物理
工程类
数学分析
量子力学
作者
Muhamad Amirul Sunni Rohim,Nurhazimah Nazmi,Irfan Bahiuddin,Saiful Amri Mazlan,Rizuan Norhaniza,Shin-ichiroh YAMAMOTO,Nur Azmah Nordin,Siti Aishah Abdul Aziz
摘要
Abstract Magnetorheological (MR) foam is a magnetic polymer composite (MPC) that can be used for soft sensors and actuators in soft robotics. Modeling mechanical properties and magnetostriction behavior of MR foam is critical to developing into MR foam devices. This study uses extreme learning machines (ELM) and artificial neural networks (ANN) to predict magnetostriction behavior. These models describe the nonlinear relationship between different carbonyl iron particle compositions, magnetic field, strain, and normal force. The model's hyperparameters (learning algorithms and activation functions) are varied. For ANN, RMSProp, and ADAM learning algorithms were used with sigmoid and ReLU activation functions. The ELM model considered the Hard limit, ReLU, and sigmoid activation function. The model was then evaluated for both training and testing data. Based on the results, ANN RMSProp Sigmoid, ELM with activation function ReLU, and Hard limit are more accurate than other models. However, the correlation analysis and comparison between prediction and experimental data show ELM Hard limit are more generalized in predicting strain and normal force with , 0.999, and RMSE less than 0.002. In conclusion, the ELM Hard limit model accurately predicts the magnetostriction behavior of MR foam, paving the way for future MR foam device development.
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