Unveiling the correlation between weld structure and fracture modes in laser welding of aluminum and copper using data-driven methods

IF 7.5 2区 材料科学 Q1 ENGINEERING, INDUSTRIAL Journal of Materials Processing Technology Pub Date : 2025-04-01 Epub Date: 2025-02-05 DOI:10.1016/j.jmatprotec.2025.118752
Kyubok Lee , Teresa J. Rinker , Changbai Tan , Masoud M. Pour , Peihao Geng , Blair E. Carlson , Jingjing Li
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Abstract

In laser welding, the complex characteristics of weld structure features, including weld geometry and defects such as porosities and cracks, pose significant challenges in analyzing the relationship between weld structure and mechanical performance. This study tackles this issue by introducing a data-driven approach to quantify the significance of specific weld structure features and their correlation with mechanical performance in laser-welded aluminum-copper thin sheets. High-resolution, three-dimensional micro-X-ray tomography provides detailed characterization of weld structure features, including weld geometry and defect attributes. Advanced deep learning techniques and interpretable machine learning models are employed to analyze weld geometry and defect features with precision. Importance analysis identifies a strong correlation between weld geometry and fracture behavior. Further investigation demonstrates that weld geometry exerts a significant influence on other structural features, such as porosity and crack characteristics, highlighting its critical role in predicting fracture behavior. To improve predictions of fracture mode, a novel dimensionless failure mode index is proposed and validated using data from this study and existing literature. This index establishes a robust relationship between weld geometry, defect features, and fracture modes, offering a practical and reliable tool for evaluating weld performance.
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利用数据驱动方法揭示铝、铜激光焊接中焊缝结构与断裂模式之间的关系
在激光焊接中,焊缝结构特征的复杂特征,包括焊缝几何形状和气孔、裂纹等缺陷,给分析焊缝结构与力学性能之间的关系带来了重大挑战。本研究通过引入数据驱动的方法来量化激光焊接铝铜薄板中特定焊缝结构特征的重要性及其与机械性能的相关性,从而解决了这一问题。高分辨率的三维微x射线断层扫描提供了焊缝结构特征的详细表征,包括焊缝几何形状和缺陷属性。采用先进的深度学习技术和可解释的机器学习模型,精确分析焊缝几何形状和缺陷特征。重要性分析表明,焊缝几何形状与断裂行为之间存在很强的相关性。进一步的研究表明,焊缝几何形状对其他结构特征(如孔隙率和裂纹特征)有显著影响,突出了其在预测断裂行为方面的关键作用。为了改进断裂模式的预测,提出了一种新的无因次破坏模式指数,并利用本研究和现有文献的数据进行了验证。该指标在焊缝几何形状、缺陷特征和断裂模式之间建立了牢固的关系,为评估焊缝性能提供了实用可靠的工具。
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来源期刊
Journal of Materials Processing Technology
Journal of Materials Processing Technology 工程技术-材料科学:综合
CiteScore
12.60
自引率
4.80%
发文量
403
审稿时长
29 days
期刊介绍: The Journal of Materials Processing Technology covers the processing techniques used in manufacturing components from metals and other materials. The journal aims to publish full research papers of original, significant and rigorous work and so to contribute to increased production efficiency and improved component performance. Areas of interest to the journal include: • Casting, forming and machining • Additive processing and joining technologies • The evolution of material properties under the specific conditions met in manufacturing processes • Surface engineering when it relates specifically to a manufacturing process • Design and behavior of equipment and tools.
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