MLLGDATA-ANFeb 23, 2024

Physics-constrained polynomial chaos expansion for scientific machine learning and uncertainty quantification

arXiv:2402.15115v228 citationsh-index: 4Comput Method Appl Mech Eng
Originality Incremental advance
AI Analysis

This method addresses the challenge of combining SciML and UQ for researchers in computational science and engineering, offering an incremental improvement by integrating existing techniques with physical constraints.

The paper tackles the integration of scientific machine learning and uncertainty quantification by proposing a physics-constrained polynomial chaos expansion surrogate model, which reduces computational costs and ensures physically realistic predictions across various problems like PDEs and stochastic systems.

We present a novel physics-constrained polynomial chaos expansion as a surrogate modeling method capable of performing both scientific machine learning (SciML) and uncertainty quantification (UQ) tasks. The proposed method possesses a unique capability: it seamlessly integrates SciML into UQ and vice versa, which allows it to quantify the uncertainties in SciML tasks effectively and leverage SciML for improved uncertainty assessment during UQ-related tasks. The proposed surrogate model can effectively incorporate a variety of physical constraints, such as governing partial differential equations (PDEs) with associated initial and boundary conditions constraints, inequality-type constraints (e.g., monotonicity, convexity, non-negativity, among others), and additional a priori information in the training process to supplement limited data. This ensures physically realistic predictions and significantly reduces the need for expensive computational model evaluations to train the surrogate model. Furthermore, the proposed method has a built-in uncertainty quantification (UQ) feature to efficiently estimate output uncertainties. To demonstrate the effectiveness of the proposed method, we apply it to a diverse set of problems, including linear/non-linear PDEs with deterministic and stochastic parameters, data-driven surrogate modeling of a complex physical system, and UQ of a stochastic system with parameters modeled as random fields.

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