Jiang Feilong, Xia Min, Hu Yaowu
The Institute of Technological Sciences, Wuhan University, Wuhan, China.
Department of Engineering, Lancaster University, Lancaster, United Kingdom.
3D Print Addit Manuf. 2024 Aug 20;11(4):e1679-e1689. doi: 10.1089/3dp.2022.0363. eCollection 2024 Aug.
The temperature distribution and melt pool size have a great influence on the microstructure and mechanical behavior of metal additive manufacturing process. The numerical method can give relatively accurate results but is time-consuming and, therefore, unsuitable for in-process prediction. Owing to its remarkable capabilities, machine learning methods have been applied to predict melt pool size and temperature distribution. However, the success of traditional data-driven machine learning methods is highly dependent on the amount and quality of the training data, which is not always convenient to access. This article proposes a physics-informed machine learning (PIML) method, which integrates data and physics laws in the training parts, overcoming the problems of low speed and data availability. An artificial neural network constrained by the heat transfer equation and a small amount of labeled data is developed to predict the melt pool size and temperature distribution. Besides, the locally adaptive activation function is utilized to improve the prediction performance. The result shows that the developed PIML model can accurately predict the temperature and melt pool dimension under different scanning speeds with a small amount of labeled data, which shows significant potential in practical application.
温度分布和熔池尺寸对金属增材制造过程的微观结构和力学行为有很大影响。数值方法可以给出相对准确的结果,但耗时较长,因此不适合进行过程中的预测。由于其显著的能力,机器学习方法已被应用于预测熔池尺寸和温度分布。然而,传统的数据驱动机器学习方法的成功高度依赖于训练数据的数量和质量,而这些数据并不总是便于获取。本文提出了一种物理信息机器学习(PIML)方法,该方法在训练部分将数据和物理定律相结合,克服了速度慢和数据可用性的问题。开发了一种受传热方程和少量标记数据约束的人工神经网络,用于预测熔池尺寸和温度分布。此外,利用局部自适应激活函数来提高预测性能。结果表明,所开发的PIML模型能够利用少量标记数据准确预测不同扫描速度下的温度和熔池尺寸,在实际应用中显示出巨大潜力。