Practical uncertainty quantification for space-dependent inverse heat conduction problem via ensemble physics-informed neural networks

被引:14
|
作者
Jiang, Xinchao [1 ]
Wang, Xin [1 ]
Wen, Ziming [1 ]
Li, Enying [3 ]
Wang, Hu [1 ,2 ]
机构
[1] Hunan Univ, State Key Lab Adv Design & Mfg Technol Vehicle, Changsha 410082, Peoples R China
[2] Shenzhen Automot Res Inst, Beijing Inst Technol, Shenzhen 518000, Peoples R China
[3] Cent South Univ Forestry & Technol, Coll Mech & Elect Engn, Changsha 410082, Peoples R China
基金
中国国家自然科学基金;
关键词
Ensemble physics-informed neural networks; Space-dependent inverse heat conduction; problems; Uncertainty quantification; Adversarial training; Adaptive active sampling; REGULARIZATION; EQUATION;
D O I
10.1016/j.icheatmasstransfer.2023.106940
中图分类号
O414.1 [热力学];
学科分类号
摘要
Inverse heat conduction problems (IHCPs) are problems of estimating unknown quantities of interest (QoIs) of the heat conduction with given temperature observations. The challenge of IHCPs is that it is usually ill-posed since the observations are noisy, and the estimations of QoIs are generally not unique or unstable, especially when there are unknown spatially varying QoIs. In this study, an ensemble physics-informed neural network (E-PINN) is proposed to handle function estimation and uncertainty quantification of space-dependent IHCPs. The distinctive characteristics of E-PINN are ensemble learning and adversarial training (AT). Compared with other data-driven UQ approaches, the suggested method is more than straightforward to implement and also achieves high-quality uncertainty estimates of the QoI. Furthermore, an adaptive active sampling (AS) strategy based on the uncertainty estimates from E-PINNs is also proposed to improve the accuracy of material field inversion problems. Finally, the proposed method is validated through several numerical experiments of IHCPs.
引用
收藏
页数:15
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