LGDATA-ANSep 4, 2023

Physics-Informed Polynomial Chaos Expansions

arXiv:2309.01697v137 citationsh-index: 5
Originality Incremental advance
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This work addresses the challenge of building accurate surrogate models for physical systems with limited data, which is incremental by combining existing PCE methods with physics constraints.

The paper tackles surrogate modeling of costly physical systems by introducing physics-informed polynomial chaos expansions (PCE) that incorporate physical constraints like differential equations and boundary conditions, resulting in superior accuracy without significant computational burden, as demonstrated through deterministic examples and uncertainty quantification applications.

Surrogate modeling of costly mathematical models representing physical systems is challenging since it is typically not possible to create a large experimental design. Thus, it is beneficial to constrain the approximation to adhere to the known physics of the model. This paper presents a novel methodology for the construction of physics-informed polynomial chaos expansions (PCE) that combines the conventional experimental design with additional constraints from the physics of the model. Physical constraints investigated in this paper are represented by a set of differential equations and specified boundary conditions. A computationally efficient means for construction of physically constrained PCE is proposed and compared to standard sparse PCE. It is shown that the proposed algorithms lead to superior accuracy of the approximation and does not add significant computational burden. Although the main purpose of the proposed method lies in combining data and physical constraints, we show that physically constrained PCEs can be constructed from differential equations and boundary conditions alone without requiring evaluations of the original model. We further show that the constrained PCEs can be easily applied for uncertainty quantification through analytical post-processing of a reduced PCE filtering out the influence of all deterministic space-time variables. Several deterministic examples of increasing complexity are provided and the proposed method is applied for uncertainty quantification.

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