传热
对流换热
偏微分方程
对流
传递函数
人工神经网络
功能(生物学)
计算机科学
热方程
特征工程
学习迁移
有限元法
边界(拓扑)
特征(语言学)
应用数学
数学优化
物理
工程类
机械
数学
人工智能
热力学
深度学习
数学分析
电气工程
语言学
哲学
生物
进化生物学
作者
Navid Zobeiry,Keith D. Humfeld
标识
DOI:10.1016/j.engappai.2021.104232
摘要
A physics-informed neural network is developed to solve conductive heat transfer partial differential equation (PDE), along with convective heat transfer PDEs as boundary conditions (BCs), in manufacturing and engineering applications where parts are heated in ovens. Since convective coefficients are typically unknown, current analysis approaches based on trial and error finite element (FE) simulations are slow. The loss function is defined based on errors to satisfy PDE, BCs and initial condition. An adaptive normalizing scheme is developed to reduce loss terms simultaneously. In addition, theory of heat transfer is used for feature engineering. The predictions for 1D and 2D cases are validated by comparing with FE results. It is shown that using engineered features, heat transfer beyond the training zone can be predicted. Trained model allows for fast evaluation of a range of BCs to develop feedback loops, realizing Industry 4.0 concept of active manufacturing control based on sensor data.
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