Machine-Learned Preconditioners for Linear Solvers in Geophysical Fluid Flows

10/06/2020
by   Jan Ackmann, et al.
0

It is tested whether machine learning methods can be used for preconditioning to increase the performance of the linear solver – the backbone of the semi-implicit, grid-point model approach for weather and climate models. Embedding the machine-learning method within the framework of a linear solver circumvents potential robustness issues that machine learning approaches are often criticized for, as the linear solver ensures that a sufficient, pre-set level of accuracy is reached. The approach does not require prior availability of a conventional preconditioner and is highly flexible regarding complexity and machine learning design choices. Several machine learning methods are used to learn the optimal preconditioner for a shallow-water model with semi-implicit timestepping that is conceptually similar to more complex atmosphere models. The machine-learning preconditioner is competitive with a conventional preconditioner and provides good results even if it is used outside of the dynamical range of the training dataset.

READ FULL TEXT

page 6

page 19

research
03/30/2021

Mixed-precision for Linear Solvers in Global Geophysical Flows

Semi-implicit time-stepping schemes for atmosphere and ocean models requ...
research
11/01/2022

Informed Priors for Knowledge Integration in Trajectory Prediction

Informed machine learning methods allow the integration of prior knowled...
research
05/31/2019

GENO -- GENeric Optimization for Classical Machine Learning

Although optimization is the longstanding algorithmic backbone of machin...
research
10/05/2017

QFUN: Towards Machine Learning in QBF

This paper reports on the QBF solver QFUN that has won the non-CNF track...
research
02/13/2017

Intercomparison of Machine Learning Methods for Statistical Downscaling: The Case of Daily and Extreme Precipitation

Statistical downscaling of global climate models (GCMs) allows researche...
research
03/09/2020

An Hybrid Method for the Estimation of the Breast Mechanical Parameters

There are several numerical models that describe real phenomena being us...
research
04/02/2021

Assessment of machine learning methods for state-to-state approaches

It is well known that numerical simulations of high-speed reacting flows...

Please sign up or login with your details

Forgot password? Click here to reset