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Gaussian process surrogate with physical law-corrected prior for multi-coupled PDEs defined on irregular geometry

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Parametric partial differential equations (PDEs) serve as fundamental mathematical tools for modeling complex physical phenomena, yet repeated high-fidelity numerical simulations across parameter spaces remain computationally prohibitive. In this work, we propose a physical law-corrected prior Gaussian process (LC-prior GP) for efficient surrogate modeling of parametric PDEs. The proposed method employs proper orthogonal decomposition (POD) to represent high-dimensional discrete solutions in a low-dimensional modal coefficient space, significantly reducing the computational cost of kernel optimization compared with standard GP approaches in full-order spaces. The governing physical laws are further incorporated to construct a law-corrected prior to overcome the limitation of existing physics-informed GP methods that rely on linear operator invariance, which enables applications to nonlinear and multi-coupled PDE systems without kernel redesign. Furthermore, the radial basis function-finite difference (RBF-FD) method is adopted for generating training data, allowing flexible handling of irregular spatial domains. The resulting differentiation matrices are independent of solution fields, enabling efficient optimization in the physical correction stage without repeated assembly. The proposed framework is validated through extensive numerical experiments, including nonlinear multi-parameter systems and scenarios involving multi-coupled physical variables defined on different two-dimensional irregular domains to highlight the accuracy and efficiency compared with baseline approaches.

Pucheng Tang, Hongqiao Wang, Wenzhou Lin, Qian Chen, Heng Yong• 2025

Related benchmarks

TaskDatasetResultRank
Surrogate ModelingTwo parameters miscible flooding model (test)
Relative L1 Error0.014
3
Surrogate ModelingThree parameters miscible flooding model (test)
Relative L1 Error1
3
Velocity PredictionNavier-Stokes u in x-direction, t=0.1 (test)
Relative Error (u, t=0.1)2.02
3
Velocity PredictionNavier-Stokes u in y-direction, t=0.1 (test)
Relative Error1.63
3
Parametric mappingReaction-diffusion model (test)
Relative L1 Error2.3
2
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