水力发电学报
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Journal of Hydroelectric Engineering ›› 2026, Vol. 45 ›› Issue (2): 46-57.doi: 10.11660/slfdxb.20260204

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Application of physics-encoded data-driven constitutive modeling in stress-deformation analysis of rockfill dams

  

  • Online:2026-02-25 Published:2026-02-25

Abstract: In recent years, efforts have been made to apply the Artificial Intelligence for Science (AI4S) paradigm in various fields of hydraulic and hydropower engineering, e.g. the data-driven techniques used in the constitutive modeling of engineering materials. However, data-driven constitutive models often suffer from limited generalizability and robustness; most of the previous studies remained confined to simple numerical examples, leaving applicability to complex engineering problems in need of further verification. This study adopts a Generalized Plasticity Model-Physics-encoded Neural Network (GPM-PeNN), developed by our team, to simulate the stress and deformation of a rockfill dam. This model is trained using a synthetic dataset of rockfill materials from the Lawa high concrete-faced rockfill dam, and it is embedded into the general-purpose finite element code ABAQUS via a user-defined material module (UMAT). It is used to simulate the stress and deformation responses during dam-filling. Compared with finite element analyses based on traditional constitutive models, our simulations-based on the physics-encoded neural network constitutive model-align with general mechanical behaviors, and exhibit high accuracy and good convergence, thereby validating the feasibility of applying data-driven constitutive models in practical engineering applications.

Key words: data-driven, constitutive model, physics-encoded, rockfill dam, stress-deformation analysis

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