Data-Driven Snapshot Calibration via Monotonic Feature Matching

09/17/2020
by   Neeraj Sarna, et al.
0

Snapshot matrices of hyperbolic equations have a slow singular value decay, resulting in inefficient reduced-order models. We develop on the idea of inducing a faster singular value decay by computing snapshots on a transformed spatial domain, or the so-called snapshot calibration/transformation. We are particularly interested in problems involving shock collision, shock rarefaction-fan collision, shock formation, etc. For such problems, we propose a realizable algorithm to compute the spatial transform using monotonic feature matching. We consider discontinuities and kinks as features, and by carefully partitioning the parameter domain, we ensure that the spatial transform has properties that are desirable both from a theoretical and an implementation standpoint. We use these properties to prove that our method results in a fast m-width decay of a so-called calibrated manifold. A crucial observation we make is that due to calibration, the m-width does not only depend on m but also on the accuracy of the full order model, which is in contrast to elliptic and parabolic problems that do not need calibration. The method we propose only requires the solution snapshots and not the underlying partial differential equation (PDE) and is therefore, data-driven. We perform several numerical experiments to demonstrate the effectiveness of our method.

READ FULL TEXT
research
05/02/2021

Data-Driven Model Order Reduction for Problems with Parameter-Dependent Jump-Discontinuities

We propose a data-driven model order reduction (MOR) technique for param...
research
09/13/2021

Learning reduced order models from data for hyperbolic PDEs

Given a set of solution snapshots of a hyperbolic PDE, we are interested...
research
10/12/2022

Model order reduction of solidification problems

Advection driven problems are known to be difficult to model with a redu...
research
06/26/2023

Analysis of the Decoder Width for Parametric Partial Differential Equations

Recently, Meta-Auto-Decoder (MAD) was proposed as a novel reduced order ...
research
03/10/2021

A Deep Learning approach to Reduced Order Modelling of Parameter Dependent Partial Differential Equations

Within the framework of parameter dependent PDEs, we develop a construct...
research
04/28/2023

The Kolmogorov N-width for linear transport: Exact representation and the influence of the data

The Kolmogorov N-width describes the best possible error one can achieve...

Please sign up or login with your details

Forgot password? Click here to reset