物理
人工神经网络
度量(数据仓库)
传热
流量(数学)
机械
能量(信号处理)
喷射(流体)
动量(技术分析)
传递函数
领域(数学)
压缩性
流速
温度测量
功能(生物学)
矢量场
数据点
算法
合成射流
动量转移
统计物理学
不可压缩流
能量-动量关系
应用数学
数学分析
经典力学
作者
Yubao Yang,Yang Xu,Hongping Wang,Yiping Liu,Jinjun Wang
出处
期刊:Physics of Fluids
[American Institute of Physics]
日期:2025-09-01
卷期号:37 (9)
被引量:2
摘要
Flow temperature fields are more challenging to measure than the velocity fields. Accurate reconstruction of temperature distributions from the velocity data is crucial in heat transfer problems, especially for experimental data analysis. We apply a physics-informed neural network (PINN) to accurately infer temperature fields at arbitrary space-time points within the measurement domain, using only the velocity data and initial temperature field. The PINN minimizes a composite loss function that incorporates residuals from both the Navier–Stokes and energy equations. We validate this approach using three representative two-dimensional heat transfer cases: steady flow around a heated cylinder, synthetic jet impinging on a heated wall, and Rayleigh–Bénard convection. Recognizing that the energy and momentum equations are decoupled under incompressible conditions, we introduce an alternative network architecture in which the temperature is predicted via a dedicated subnetwork. This modification improves reconstruction accuracy by approximately 10%.
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