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首页> 外文期刊>Computational Mechanics: Solids, Fluids, Fracture Transport Phenomena and Variational Methods >Physics-informed deep learning for three-dimensional transient heat transfer analysis of functionally graded materials
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Physics-informed deep learning for three-dimensional transient heat transfer analysis of functionally graded materials

机译:基于物理的深度学习,用于功能梯度材料的三维瞬态传热分析

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摘要

We present a physics-informed deep learning model for the transient heat transfer analysis of three-dimensional functionally graded materials (FGMs) employing a Runge-Kutta discrete time scheme. Firstly, the governing equation, associated boundary conditions and the initial condition for transient heat transfer analysis of FGMs with exponential material variations are presented. Then, the deep collocation method with the Runge-Kutta integration scheme for transient analysis is introduced. The prior physics that helps to generalize the physics-informed deep learning model is introduced by constraining the temperature variable with discrete time schemes and initial/boundary conditions. Further the fitted activation functions suitable for dynamic analysis are presented. Finally, we validate our approach through several numerical examples on FGMs with irregular shapes and a variety of boundary conditions. From numerical experiments, the predicted results with PIDL demonstrate well agreement with analytical solutions and other numerical methods in predicting of both temperature and flux distributions and can be adaptive to transient analysis of FGMs with different shapes, which can be the promising surrogate model in transient dynamic analysis.
机译:我们提出了一个基于物理的深度学习模型,用于采用Runge-Kutta离散时间方案的三维功能梯度材料(FGM)的瞬态传热分析。首先,给出了材料指数变化的FGM瞬态传热分析的控制方程、相关边界条件和初始条件;然后,介绍了基于Runge-Kutta积分方案的暂态分析深度搭配方法。通过使用离散时间方案和初始/边界条件约束温度变量,引入了有助于推广物理信息深度学习模型的先验物理场。此外,还给出了适用于动态分析的拟合激活函数。最后,我们通过几个具有不规则形状和各种边界条件的FGM的数值算例验证了我们的方法。数值实验结果表明,PIDL的预测结果与解析解和其他数值方法在温度和通量分布的预测方面具有较好的一致性,并且能够适应不同形状的FGM的瞬态分析,可以作为暂态动力学分析中很有前途的替代模型。

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