基于应力-应变迟滞环的不确定金属疲劳寿命预测机器学习模型。

IF 3.2 3区 材料科学 Q3 CHEMISTRY, PHYSICAL
Materials Pub Date : 2025-09-16 DOI:10.3390/ma18184336
Xian-Ci Zhong, Zhi-Yong Luo, Ke-Shi Zhang
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引用次数: 0

摘要

本文报道了通过从迟滞回路中提取应力-应变数据来预测不确定条件下金属疲劳寿命的机器学习模型。首先,分析了Q235B在应变控制恒幅加载下的磁滞回线。在疲劳过程的早期阶段,从每个迟滞回线中提取6个关键点的应力和应变值,并将其转换为极坐标。其次,通过将施加的应变幅值和选择的应力-应变值扩展到区间来量化不确定性。为了应对小型疲劳试验数据集的挑战,在每个区间随机生成大量数据。第三,构建了3个机器学习模型,其中利用留一交叉验证技术对反向传播神经网络模型的参数进行了优化,并对支持向量回归和随机森林模型进行了优选。通过对Q235B低周疲劳寿命的点和区间预测,验证了所建模型的可行性和优越性。研究结果有助于确定如何通过结合机器学习模型和应力-应变滞后回路来理解材料的疲劳行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Stress-Strain Hysteresis Loop-Based Machine Learning Models for Predicting Metal Fatigue Life Under Uncertainty.

Stress-Strain Hysteresis Loop-Based Machine Learning Models for Predicting Metal Fatigue Life Under Uncertainty.

Stress-Strain Hysteresis Loop-Based Machine Learning Models for Predicting Metal Fatigue Life Under Uncertainty.

Stress-Strain Hysteresis Loop-Based Machine Learning Models for Predicting Metal Fatigue Life Under Uncertainty.

This paper reports machine learning models for predicting metal fatigue life under uncertainty by extracting stress-strain data from hysteresis loops. First, the hysteresis loops of Q235B under strain-controlled constant amplitude loading are analyzed. The values of stress and strain in six key points are extracted from each hysteresis loop at the earliest stages of the fatigue process, and transformed into polar coordinates. Second, the uncertainty is quantified by extending the applied strain amplitude and the selected stress-strain values to intervals. A great deal of data are generated randomly in each interval for coping with the challenge of a small fatigue test dataset. Third, three machine learning models are constructed, where the parameters of the back-propagation neural network model are optimized by using the leave-one-out cross-validation technique, and the models of support vector regression and random forest are selected carefully. The point and interval predictions of the low-cycle-fatigue life of Q235B are reported to reveal the feasibility and advantage of the proposed models. The results help to identify how to understand the fatigue behavior of materials by combining machine learning models and stress-strain hysteresis loops.

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来源期刊
Materials
Materials MATERIALS SCIENCE, MULTIDISCIPLINARY-
CiteScore
5.80
自引率
14.70%
发文量
7753
审稿时长
1.2 months
期刊介绍: Materials (ISSN 1996-1944) is an open access journal of related scientific research and technology development. It publishes reviews, regular research papers (articles) and short communications. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. Therefore, there is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Materials provides a forum for publishing papers which advance the in-depth understanding of the relationship between the structure, the properties or the functions of all kinds of materials. Chemical syntheses, chemical structures and mechanical, chemical, electronic, magnetic and optical properties and various applications will be considered.
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