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Gradient-Informed Temporal Sampling Improves Rollout Accuracy in PDE Surrogate Training

arXiv cs.LG / 3/20/2026

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Key Points

  • Gradient-Informed Temporal Sampling (GITS) is introduced to optimize data sampling for neural PDE simulators by jointly maximizing local gradient information and set-level temporal coverage.
  • GITS achieves lower rollout error compared with multiple sampling baselines across various PDE systems, model backbones, and sampling ratios.
  • Ablation studies show that both optimization objectives in GITS are necessary and complementary for performance gains.
  • The work also analyzes the sampling patterns produced by GITS and discusses scenarios and PDE-model combinations where GITS may fail.

Abstract

Researchers train neural simulators on uniformly sampled numerical simulation data. But under the same budget, does systematically sampled data provide the most effective information? A fundamental yet unformalized problem is how to sample training data for neural simulators so as to maximize rollout accuracy. Existing data sampling methods either tend to collapse into locally high-information-density regions, or preserve diversity but remain insufficiently model-specific, often leading to performance that is no better than uniform sampling. To address this, we propose a data sampling method tailored to neural simulators, Gradient-Informed Temporal Sampling (GITS). GITS jointly optimizes pilot-model local gradients and set-level temporal coverage, thereby effectively balancing model specificity and dynamical information. Compared with multiple sampling baselines, the data selected by GITS achieves lower rollout error across multiple PDE systems, model backbones and sample ratios. Furthermore, ablation studies demonstrate the necessity and complementarity of the two optimization objectives in GITS. In addition, we analyze the successful sampling patterns of GITS as well as the typical PDE systems and model backbones on which GITS fails.