Abstract

A classical reduced order model (ROM) for dynamical problems typically involves only the spatial reduction of a given problem. Recently, a novel space–time ROM for linear dynamical problems has been developed [Choi et al., Space–tume reduced order model for large-scale linear dynamical systems with application to Boltzmann transport problems, Journal of Computational Physics, 2020], which further reduces the problem size by introducing a temporal reduction in addition to a spatial reduction without much loss in accuracy. The authors show an order of a thousand speed-up with a relative error of less than 10−5 for a large-scale Boltzmann transport problem. In this work, we present for the first time the derivation of the space–time least-squares Petrov–Galerkin (LSPG) projection for linear dynamical systems and its corresponding block structures. Utilizing these block structures, we demonstrate the ease of construction of the space–time ROM method with two model problems: 2D diffusion and 2D convection diffusion, with and without a linear source term. For each problem, we demonstrate the entire process of generating the full order model (FOM) data, constructing the space–time ROM, and predicting the reduced-order solutions, all in less than 120 lines of Python code. We compare our LSPG method with the traditional Galerkin method and show that the space–time ROMs can achieve O(10−3) to O(10−4) relative errors for these problems. Depending on parameter–separability, online speed-ups may or may not be achieved. For the FOMs with parameter–separability, the space–time ROMs can achieve O(10) online speed-ups. Finally, we present an error analysis for the space–time LSPG projection and derive an error bound, which shows an improvement compared to traditional spatial Galerkin ROM methods.

Highlights

  • Many computational models for physical simulations are formulated as linear dynamical systems

  • The space–time reduced order model (ROM) are used to predict the solution of a parameter that is not included in the trained parameter domain

  • We presented an a posteriori error bound for both Galerkin and least-squares Petrov–Galerkin (LSPG) space–time ROMs

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Summary

Introduction

Many computational models for physical simulations are formulated as linear dynamical systems. Examples of linear dynamical systems include, but are not limited to, the Schrödinger equation that arises in quantum mechanics, the computational model for the signal propagation and interference in electric circuits, storm surge prediction models before an advancing hurricane, vibration analysis in large structures, thermal analysis in various media, neuro-transmission models in the nervous system, various computational models for micro-electro-mechanical systems, and various particle transport simulations. These linear dynamical systems can quickly become large scale and computationally expensive, which prevents fast generation of solutions. The fast and memory-efficient low rank solvers presented in [26,27] can be applied to the large-scale

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