论文标题
配备替代模型的动态系统的快速时期策略
A fast time-stepping strategy for dynamical systems equipped with a surrogate model
论文作者
论文摘要
在许多应用中产生的复杂动力系统的模拟在计算上由于其大小和复杂性而具有挑战性。模型订单降低,机器学习和其他类型的替代建模技术提供了更便宜,更简单的方法来描述这些系统的动态,但不确定并引入了其他近似错误。一方面,为了克服完整复杂模型的计算困难,另一方面,替代模型的局限性在另一方面,这项工作提出了一种新的加速时间步变策略,将两者中的信息结合在一起。这种方法基于多阶段的无限通用累加式runge-kutta(MRI-GARK)框架。廉价的替代模型与小时间步长集成以指导解决方案轨迹,并用大型时间步长处理,以偶尔纠正替代模型误差并确保收敛。我们提供了理论上的误差分析和几个数值实验,以表明这种方法比仅使用完整或仅使用替代模型进行集成更有效。
Simulation of complex dynamical systems arising in many applications is computationally challenging due to their size and complexity. Model order reduction, machine learning, and other types of surrogate modeling techniques offer cheaper and simpler ways to describe the dynamics of these systems but are inexact and introduce additional approximation errors. In order to overcome the computational difficulties of the full complex models, on one hand, and the limitations of surrogate models, on the other, this work proposes a new accelerated time-stepping strategy that combines information from both. This approach is based on the multirate infinitesimal general-structure additive Runge-Kutta (MRI-GARK) framework. The inexpensive surrogate model is integrated with a small timestep to guide the solution trajectory, and the full model is treated with a large timestep to occasionally correct for the surrogate model error and ensure convergence. We provide a theoretical error analysis, and several numerical experiments, to show that this approach can be significantly more efficient than using only the full or only the surrogate model for the integration.