预测铝合金力学行为的机器学习方法

A. Dorbane, F. Harrou, Y. Sun
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引用次数: 0

摘要

预测金属材料的力学行为,如应力-应变曲线,对研究材料的塑性行为具有重要意义。本文旨在研究机器学习方法在不同温度水平下预测铝合金应力-应变曲线的能力。具体而言,采用高斯过程回归(GPR)、神经网络(NN)和提升树(BT)三种机器学习方法预测了Al6061- T6在25℃、100℃、200℃和300℃不同温度下的应力-应变响应。通过对Al6061-T6进行单轴拉伸试验收集的实际应变-应力测量数据,验证了所研究的机器学习方法的性能。采用四种统计分数来评价预测的准确性。结果揭示了机器学习方法在预测应变-应力测量方面的潜力。此外,结果表明,NN模型的预测平均平均绝对误差百分比为0.213,优于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Methods for Predicting Mechanical Behavior of Aluminum Alloys
Predicting the mechanical behavior of metallic materials, such as stress-strain curves, is important for studying the plastic behavior of materials. This paper intends to investigate machine learning methods’ capacity to predict the aluminum alloy’s stress-strain curves under different temperature levels. Specifically, three machine learning methods (Gaussian process regression (GPR), neural network (NN), and boosted trees (BT) were employed to predict the stress-strain response of Al6061- T6 at different temperatures, including 25°C, 100°C, 200°C, and 300°C. The performance of the studied machine learning methods has been verified using actual strain-stress measurements collected using uniaxial tensile testing on Al6061-T6. Four statistical scores have been adopted to evaluate the prediction accuracy. Results revealed the potential of machine learning methods in predicting strain-stress measurements. Furthermore, results showed that the NN model dominates the other models by providing a prediction with an averaged mean absolute error percentage of 0.213.
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