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用于磁流变弹性体磁场相关复模量的非参数多输入预测模型

Non-parametric multiple inputs prediction model for magnetic field dependent complex modulus of magnetorheological elastomer.

作者信息

Saharuddin Kasma Diana, Ariff Mohd Hatta Mohammed, Bahiuddin Irfan, Ubaidillah Ubaidillah, Mazlan Saiful Amri, Aziz Siti Aishah Abdul, Nazmi Nurhazimah, Fatah Abdul Yasser Abdul, Shapiai Mohd Ibrahim

机构信息

Malaysia Japan International Institute of Technology, Universiti Teknologi Malaysia, Jalan Sultan Yahya Petra, 54100, Kuala Lumpur, Malaysia.

Department of Mechanical Engineering, Vocational College, Universitas Gadjah Mada, Yogyakarta, Indonesia.

出版信息

Sci Rep. 2022 Feb 17;12(1):2657. doi: 10.1038/s41598-022-06643-4.

Abstract

This study introduces a novel platform to predict complex modulus variables as a function of the applied magnetic field and other imperative variables using machine learning. The complex modulus prediction of magnetorheological (MR) elastomers is a challenging process, attributable to the material's highly nonlinear nature. This problem becomes apparent when considering various possible fabrication parameters. Furthermore, traditional parametric modeling methods are limited when applied to solve larger-scale cases involving large databases. Consequently, the application of non-parametric modeling such as machine learning has gained increasing attraction in recent years. Therefore, this work proposes a data-driven approach for predicting multiple input-dependent complex moduli using feedforward neural networks. Besides excitation frequency and magnetic flux density as operating conditions, the inputs consider compositions and curing conditions represented by magnetic particle weight percentage and the curing magnetic field, respectively. Extreme learning machines and artificial neural networks were used to train the models. The simulation results obtained at various curing conditions and other inputs confirm that the predicted complex modulus has high accuracy with an R of about 0.997, as compared to the experimental results. Furthermore, the predicted complex modulus pattern and magnetorheological effect agree with the experimental data using both the learned and unlearned data.

摘要

本研究引入了一种新颖的平台,利用机器学习将复模量变量预测为外加磁场及其他重要变量的函数。磁流变(MR)弹性体的复模量预测是一个具有挑战性的过程,这归因于该材料高度非线性的特性。在考虑各种可能的制造参数时,这个问题变得很明显。此外,传统的参数建模方法在应用于解决涉及大型数据库的大规模案例时存在局限性。因此,近年来非参数建模(如机器学习)的应用越来越受到关注。所以,这项工作提出了一种数据驱动的方法,使用前馈神经网络预测多个输入相关的复模量。除了将激励频率和磁通密度作为运行条件外,输入分别考虑由磁性颗粒重量百分比和固化磁场表示的成分和固化条件。使用极限学习机和人工神经网络对模型进行训练。在各种固化条件和其他输入下获得的模拟结果证实,与实验结果相比,预测的复模量具有高精度,相关系数R约为0.997。此外,使用已学习数据和未学习数据时,预测的复模量模式和磁流变效应均与实验数据相符。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e83d/8854704/283348d00198/41598_2022_6643_Fig1_HTML.jpg

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