神经 PDE 求解器的主动学习

Daniel Musekamp, Marimuthu Kalimuthu, David Holzmüller, Makoto Takamoto, Mathias Niepert
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引用次数: 0

摘要

求解偏微分方程(PDE)是工程和科学领域的一个基本问题。虽然神经偏微分方程求解器比现有的数值求解器更高效,但它们通常需要大量的训练数据,而获取这些数据的成本很高。主动学习(Active Learning,AL)可以帮助代用模型以更小的训练集达到相同的精度,方法是用更多信息的初始条件和 PDE 参数查询经典求解器。虽然主动学习在其他领域更为常见,但在神经 PDE 求解器方面还没有广泛的研究。为了弥补这一差距,我们引入了 AL4PDE,这是一种模块化、可扩展的主动学习基准。它为解算器在环设置提供了多个参数化 PDE 和最先进的代理模型,使我们能够评估现有的 PDE 求解方法并开发新的 AL 方法。我们使用该基准来评估批量主动学习算法,如基于不确定性和特征的方法。我们的研究表明,与随机抽样相比,AL 将平均误差降低了 71%,并显著降低了最坏情况下的误差。此外,AL 还能在重复运行中生成相似的数据集,并且在 PDE 参数和初始条件上具有一致的分布。获得的数据集可重复使用,为未参与数据生成的代用模型带来了好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active Learning for Neural PDE Solvers
Solving partial differential equations (PDEs) is a fundamental problem in engineering and science. While neural PDE solvers can be more efficient than established numerical solvers, they often require large amounts of training data that is costly to obtain. Active Learning (AL) could help surrogate models reach the same accuracy with smaller training sets by querying classical solvers with more informative initial conditions and PDE parameters. While AL is more common in other domains, it has yet to be studied extensively for neural PDE solvers. To bridge this gap, we introduce AL4PDE, a modular and extensible active learning benchmark. It provides multiple parametric PDEs and state-of-the-art surrogate models for the solver-in-the-loop setting, enabling the evaluation of existing and the development of new AL methods for PDE solving. We use the benchmark to evaluate batch active learning algorithms such as uncertainty- and feature-based methods. We show that AL reduces the average error by up to 71% compared to random sampling and significantly reduces worst-case errors. Moreover, AL generates similar datasets across repeated runs, with consistent distributions over the PDE parameters and initial conditions. The acquired datasets are reusable, providing benefits for surrogate models not involved in the data generation.
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