Predicting weld pool metrics in laser welding of aluminum alloys using data-driven surrogate modeling: A FEA-DoE-GPRN hybrid approach

A. Duggirala, B. Acherjee, Souren Mitra
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Abstract

Multi-physics computational models based on finite element analysis, offer detailed insights into the dynamics and metrics in the weld pool formed by laser welding. Conversely, data-driven surrogate models provide a cost-effective means to predict desired responses. These models establish statistical or mathematical correlations with input–output data, eliminating the need for additional simulations during design optimization. This study proposes a data-driven surrogate model, employing the Gaussian process regression network (GPRN), to predict weld pool metrics, such as weld width and depth of penetration in laser welding of aluminum alloy. A 3D computational fluid dynamics-based numerical model is initially constructed and experimentally validated to predict weld pool metrics. Subsequent experimental runs, guided by the design of experiments, include various configurations of process parameter settings. The developed numerical model computes weld pool metrics for each experimental run, forming a dataset for training and testing the GPRN model. The GPRN model is evaluated against simulated data, showing adequacy with a mean square error of 1.7 µm and mean absolute percentage error of 10−7, with experimental validation further confirming its accuracy, revealing a minimum error of 1.7%, a maximum error of 8%, and an average error of 3%. The key contribution and novelty of this study lie in the development of the hybrid data-driven model, which accurately predicts weld pool metrics while minimizing experimental and computational efforts.
利用数据驱动的代用模型预测铝合金激光焊接中的焊池指标:FEA-DoE-GPRN 混合方法
以有限元分析为基础的多物理场计算模型可以详细了解激光焊接形成的焊池中的动态和指标。相反,数据驱动的代用模型为预测预期响应提供了一种经济有效的方法。这些模型与输入输出数据建立了统计或数学关联,在优化设计时无需进行额外的模拟。本研究利用高斯过程回归网络(GPRN)提出了一种数据驱动的替代模型,用于预测铝合金激光焊接中的焊缝宽度和熔透深度等焊池指标。最初构建了一个基于三维计算流体动力学的数值模型,并通过实验验证来预测焊池指标。在实验设计的指导下,随后的实验运行包括各种工艺参数设置配置。所开发的数值模型为每次实验运行计算焊池指标,形成用于训练和测试 GPRN 模型的数据集。根据模拟数据对 GPRN 模型进行了评估,结果表明该模型的平均平方误差为 1.7 µm,平均绝对百分比误差为 10-7,实验验证进一步证实了其准确性,显示最小误差为 1.7%,最大误差为 8%,平均误差为 3%。本研究的主要贡献和新颖之处在于开发了数据驱动混合模型,在准确预测焊接熔池指标的同时,最大限度地减少了实验和计算工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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