Multi-layer thermal simulation using physics-informed neural network

IF 10.3 1区 工程技术 Q1 ENGINEERING, MANUFACTURING
Bohan Peng, Ajit Panesar
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引用次数: 0

Abstract

This paper presents a physics-informed neural network (PINN)-based solution framework that predicts the thermal history during a multi-layer Directed Energy Deposition (DED) process. The meshless nature and the readily available derivative information of PINN solution opens up new opportunities for modelling the thermally induced distortion in metal Additive Manufacturing (AM). The proposed framework incorporates simple yet effective strategies that enable PINN to overcome the usual shortfall of neural networks (NNs) in dealing with discontinuities. It is a critical step for applying PINN to the multi-layer problem which intrinsically contains discontinuities due to the layer-by-layer nature of DED and other metal AM processes. The accuracy of the proposed framework is validated via a benchmark test against ANSYS simulation. Leveraging the possibility of initialisation with prior knowledge, PINN is also demonstrating potential computational time-savings, especially for larger parts. Furthermore, remarks on strategies to improve ease of training and prediction accuracy by PINN for the particular use case in DED temperature history prediction have been made. The proposed framework sets the foundation for the subsequent exploration of applying scientific machine learning (SciML) techniques to real-life engineering applications.
利用物理信息神经网络进行多层热模拟
本文介绍了一种基于物理信息神经网络(PINN)的解决方案框架,可预测多层定向能量沉积(DED)过程中的热历史。PINN 解决方案的无网格性和随时可用的衍生信息为金属增材制造(AM)中的热诱导变形建模开辟了新的机遇。所提出的框架采用了简单而有效的策略,使 PINN 能够克服神经网络 (NN) 在处理不连续性方面的通常不足。这是将 PINN 应用于多层问题的关键一步,由于 DED 和其他金属 AM 工艺的逐层性质,多层问题本质上包含不连续性。针对 ANSYS 仿真的基准测试验证了所建议框架的准确性。PINN 还利用先验知识初始化的可能性,展示了节省计算时间的潜力,特别是对于较大的零件。此外,PINN 还针对 DED 温度历史预测中的特定用例,提出了提高训练简便性和预测准确性的策略。所提出的框架为后续探索将科学机器学习(SciML)技术应用于实际工程应用奠定了基础。
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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来源期刊
Additive manufacturing
Additive manufacturing Materials Science-General Materials Science
CiteScore
19.80
自引率
12.70%
发文量
648
审稿时长
35 days
期刊介绍: Additive Manufacturing stands as a peer-reviewed journal dedicated to delivering high-quality research papers and reviews in the field of additive manufacturing, serving both academia and industry leaders. The journal's objective is to recognize the innovative essence of additive manufacturing and its diverse applications, providing a comprehensive overview of current developments and future prospects. The transformative potential of additive manufacturing technologies in product design and manufacturing is poised to disrupt traditional approaches. In response to this paradigm shift, a distinctive and comprehensive publication outlet was essential. Additive Manufacturing fulfills this need, offering a platform for engineers, materials scientists, and practitioners across academia and various industries to document and share innovations in these evolving technologies.
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