LGCEJun 12, 2025

An Attention-based Spatio-Temporal Neural Operator for Evolving Physics

arXiv:2506.11328v11 citationsh-index: 7Machine Learning: Science and Technology
Originality Incremental advance
AI Analysis

This addresses the problem of making reliable predictions under varying environmental conditions in engineering applications, representing an incremental improvement with a novel hybrid method.

The paper tackles the challenge of learning unknown, evolving physical processes in scientific machine learning by proposing the Attention-based Spatio-Temporal Neural Operator (ASNO), which outperforms existing models on benchmarks for tasks like additive manufacturing.

In scientific machine learning (SciML), a key challenge is learning unknown, evolving physical processes and making predictions across spatio-temporal scales. For example, in real-world manufacturing problems like additive manufacturing, users adjust known machine settings while unknown environmental parameters simultaneously fluctuate. To make reliable predictions, it is desired for a model to not only capture long-range spatio-temporal interactions from data but also adapt to new and unknown environments; traditional machine learning models excel at the first task but often lack physical interpretability and struggle to generalize under varying environmental conditions. To tackle these challenges, we propose the Attention-based Spatio-Temporal Neural Operator (ASNO), a novel architecture that combines separable attention mechanisms for spatial and temporal interactions and adapts to unseen physical parameters. Inspired by the backward differentiation formula (BDF), ASNO learns a transformer for temporal prediction and extrapolation and an attention-based neural operator for handling varying external loads, enhancing interpretability by isolating historical state contributions and external forces, enabling the discovery of underlying physical laws and generalizability to unseen physical environments. Empirical results on SciML benchmarks demonstrate that ASNO outperforms over existing models, establishing its potential for engineering applications, physics discovery, and interpretable machine learning.

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