History-Aware Neural Operator: Robust Data-Driven Constitutive Modeling of Path-Dependent Materials
Binyao Guo, Zihan Lin, QiZhi He

TL;DR
This paper introduces HANO, a neural operator framework for modeling path-dependent inelastic materials that is discretization-invariant, robust to complex loading conditions, and outperforms existing models in accuracy and stability.
Contribution
The paper develops HANO, a history-aware neural operator that predicts material responses without hidden states, overcoming limitations of RNNs and enabling robust, discretization-invariant modeling of path-dependent materials.
Findings
HANO outperforms baseline models in accuracy and robustness.
HANO is stable under irregular sampling and noisy data.
HANO effectively models complex inelastic material behaviors.
Abstract
This study presents an end-to-end learning framework for data-driven modeling of path-dependent inelastic materials using neural operators. The framework is built on the premise that irreversible evolution of material responses, governed by hidden dynamics, can be inferred from observable data. We develop the History-Aware Neural Operator (HANO), an autoregressive model that predicts path-dependent material responses from short segments of recent strain-stress history without relying on hidden state variables, thereby overcoming self-consistency issues commonly encountered in recurrent neural network (RNN)-based models. Built on a Fourier-based neural operator backbone, HANO enables discretization-invariant learning. To enhance its ability to capture both global loading patterns and critical local path dependencies, we embed a hierarchical self-attention mechanism that facilitates…
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Taxonomy
TopicsModel Reduction and Neural Networks · Machine Learning in Materials Science · Composite Material Mechanics
