Machine learning-guided study of residual stress, distortion, and peak temperature in stainless steel laser welding

IF 2.5 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY Applied Physics A Pub Date : 2024-12-19 DOI:10.1007/s00339-024-08145-8
Yapeng Yang, Nagaraj Patil, Shavan Askar, Abhinav Kumar
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Abstract

This paper presents a machine learning (ML) approach using Kernel Ridge Regression (KRR) to predict peak temperature, residual stress, and distortion in stainless steels during oscillating laser welding. The model was trained using reliable data from numerical simulations, which incorporated both welding parameters and material properties of stainless steels. The KRR model’s regression analysis demonstrated high accuracy with R2 values of 0.968, 0.951, and 0.928, and RMSE values of 3.35%, 4.51%, and 5.78% for peak temperature, maximum residual stress, and distortion degree, respectively. However, slight prediction deviations were observed, particularly at higher distortion levels. The study also highlighted the critical role of input feature weight functions in optimizing predictions. Peak temperature was predominantly influenced by physical material properties, while residual stress and distortion were governed by both mechanical and physical factors. Moreover, at lower peak temperatures, predictions were more sensitive to laser oscillation frequency, amplitude, and welding speed, whereas higher temperatures were more affected by preheating and sample thickness. Additionally, increased residual stress and distortion levels were strongly linked to the weight functions of laser oscillation frequency and amplitude.

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基于机器学习的不锈钢激光焊接残余应力、变形和峰值温度研究
本文提出了一种机器学习(ML)方法,使用核岭回归(KRR)来预测振荡激光焊接过程中不锈钢的峰值温度、残余应力和变形。该模型采用可靠的数值模拟数据进行训练,同时考虑了不锈钢的焊接参数和材料性能。KRR模型的回归分析精度较高,峰值温度、最大残余应力和变形程度的R2值分别为0.968、0.951和0.928,RMSE值分别为3.35%、4.51%和5.78%。然而,轻微的预测偏差被观察到,特别是在较高的失真水平。该研究还强调了输入特征权重函数在优化预测中的关键作用。峰值温度主要受材料物理性能的影响,而残余应力和变形受机械和物理因素的共同影响。此外,在较低的峰值温度下,预测对激光振荡频率、振幅和焊接速度更敏感,而在较高的温度下,预测更受预热和样品厚度的影响。此外,残余应力和变形水平的增加与激光振荡频率和振幅的权函数密切相关。
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来源期刊
Applied Physics A
Applied Physics A 工程技术-材料科学:综合
CiteScore
4.80
自引率
7.40%
发文量
964
审稿时长
38 days
期刊介绍: Applied Physics A publishes experimental and theoretical investigations in applied physics as regular articles, rapid communications, and invited papers. The distinguished 30-member Board of Editors reflects the interdisciplinary approach of the journal and ensures the highest quality of peer review.
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