热传导
热流密度
人工神经网络
反向
计算机科学
反问题
工作(物理)
边界(拓扑)
焊剂(冶金)
统计物理学
物理
人工智能
传热
热力学
材料科学
数学分析
数学
几何学
冶金
作者
Weijia Qian,Xin Hui,Bosen Wang,Zongwei Zhang,Yuzhen Lin,Siheng Yang
出处
期刊:Heat transfer research
[Begell House Inc.]
日期:2022-10-13
卷期号:54 (4): 65-76
被引量:3
标识
DOI:10.1615/heattransres.2022042173
摘要
A physics-informed neural network is developed to infer the unknown heat flux in a 1D inverse heat conduction problem. This is achieved by training the neural network by physics constraints including the governing equation, boundary and initial conditions, and sampled temperature data. When the total training loss is small enough, the neural network can approximate the heat conduction and the heat flux can be obtained from the neural network. The prediction performances of the physics-informed neural network have been examined using different network structures, different activation functions, and different forms of unknown heat flux. The results show that the physics-informed neural network has an overall satisfactory performance in predicting the unknown heat fluxes of different forms and predicting heat fluxes using temperature data with random errors. The present work demonstrates that the physics-informed neural network is a promising approach for solving inverse heat conduction problems with good accuracy and fast efficiency.
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