McGowan Erin, Gawade Vidita, Guo Weihong Grace
Department of Mathematics, Rutgers University, New Brunswick, Piscataway, NJ 08854, USA.
Department of Industrial and Systems Engineering, Rutgers University, New Brunswick, Piscataway, NJ 08854, USA.
Sensors (Basel). 2022 Jan 10;22(2):494. doi: 10.3390/s22020494.
Physics-informed machine learning is emerging through vast methodologies and in various applications. This paper discovers physics-based custom loss functions as an implementable solution to additive manufacturing (AM). Specifically, laser metal deposition (LMD) is an AM process where a laser beam melts deposited powder, and the dissolved particles fuse to produce metal components. Porosity, or small cavities that form in this printed structure, is generally considered one of the most destructive defects in metal AM. Traditionally, computer tomography scans measure porosity. While this is useful for understanding the nature of pore formation and its characteristics, purely physics-driven models lack real-time prediction ability. Meanwhile, a purely deep learning approach to porosity prediction leaves valuable physics knowledge behind. In this paper, a hybrid model that uses both empirical and simulated LMD data is created to show how various physics-informed loss functions impact the accuracy, precision, and recall of a baseline deep learning model for porosity prediction. In particular, some versions of the physics-informed model can improve the precision of the baseline deep learning-only model (albeit at the expense of overall accuracy).
基于物理知识的机器学习正通过大量方法在各种应用中兴起。本文发现基于物理的自定义损失函数是增材制造(AM)的一种可实施解决方案。具体而言,激光金属沉积(LMD)是一种增材制造工艺,其中激光束熔化沉积的粉末,溶解的颗粒融合以生产金属部件。孔隙率,即在这种打印结构中形成的小孔洞,通常被认为是金属增材制造中最具破坏性的缺陷之一。传统上,计算机断层扫描用于测量孔隙率。虽然这对于理解孔隙形成的本质及其特征很有用,但纯粹基于物理的模型缺乏实时预测能力。同时,单纯的深度学习方法进行孔隙率预测会遗漏宝贵的物理知识。在本文中,创建了一个使用经验性和模拟LMD数据的混合模型,以展示各种基于物理知识的损失函数如何影响用于孔隙率预测的基线深度学习模型的准确性、精确性和召回率。特别是,一些基于物理知识的模型版本可以提高仅使用深度学习的基线模型的精确性(尽管是以牺牲整体准确性为代价)。