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A physics and data co-driven surrogate modeling method for high-dimensional rare event simulation

Jianhua Xian, Ziqi Wang

2024Journal of Computational Physics21 citationsDOIOpen Access PDF

Abstract

This paper presents a physics and data co-driven surrogate modeling method for efficient rare event simulation of civil and mechanical systems with high-dimensional input uncertainties. The method fuses interpretable low-fidelity physical models with data-driven error corrections. The hypothesis is that a well-designed and well-trained simplified physical model can preserve salient features of the original model, while data-fitting techniques can fill the remaining gaps between the surrogate and original model predictions. The coupled physics-data-driven surrogate model is adaptively trained using active learning, aiming to achieve a high correlation and small bias between the surrogate and original model responses in the critical parametric region of a rare event. A final importance sampling step is introduced to correct the surrogate model-based probability estimations. Static and dynamic problems with input uncertainties modeled by random field and stochastic process are studied to demonstrate the proposed method.

Topics & Concepts

Statistical physicsRare eventsEvent (particle physics)Event dataComputer scienceComputational sciencePhysicsUncertainty quantificationApplied mathematicsMathematicsData miningStatisticsMachine learningQuantum mechanicsAnalyticsNuclear reactor physics and engineeringNuclear physics research studiesProbabilistic and Robust Engineering Design
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