2020
DOI: 10.1029/2020ms002232
|View full text |Cite
|
Sign up to set email alerts
|

Machine Learning for Model Error Inference and Correction

Abstract: Model error is one of the main obstacles to improved accuracy and reliability in numerical weather prediction (NWP) and climate prediction conducted with state-of-the-art, comprehensive high-resolution general circulation models. In a data assimilation framework, recent advances in the context of weak-constraint 4D-Var have shown that it is possible to estimate and correct for a large fraction of systematic model error which develops in the stratosphere over short forecast ranges. The recent explosion of inter… Show more

Help me understand this report
View preprint versions

Search citation statements

Order By: Relevance

Paper Sections

Select...
1
1
1
1

Citation Types

2
77
0

Year Published

2021
2021
2023
2023

Publication Types

Select...
6
2
1

Relationship

3
6

Authors

Journals

citations
Cited by 81 publications
(86 citation statements)
references
References 37 publications
2
77
0
Order By: Relevance
“…Weak-constraint DA [62] is similar, in that it does not improve the forward model, but estimates a spatial field of model errors. ML could be equally applicable to learning this kind of model error [102]. However, in weak-constraint DA, it can be hard to separate these errors from errors in the state, if they occur on similar spatial scales [63].…”
Section: Learning New Earth System Physicsmentioning
confidence: 99%
“…Weak-constraint DA [62] is similar, in that it does not improve the forward model, but estimates a spatial field of model errors. ML could be equally applicable to learning this kind of model error [102]. However, in weak-constraint DA, it can be hard to separate these errors from errors in the state, if they occur on similar spatial scales [63].…”
Section: Learning New Earth System Physicsmentioning
confidence: 99%
“…Researchers used DL to estimate ground-level PM2.5 or PM10 levels by using satellite observations and station measurements (Li et al, 2017;Shen et al, 2018;Tang et al, 2018). DL also helps improve the accuracy of weather forecasting, which is a long-standing challenge in atmospheric science (Bonavita & Laloyaux, 2020;Scher & Messori, 2021). The tracks of typhoons were predicted with a GAN based on satellite images (Rüttgers et al, 2019).…”
Section: Atmospheric Sciencementioning
confidence: 99%
“…With multiple realizations of dropout, the results are collected, and the variance is computed as the uncertainty. DL with uncertainty estimation in inference is reported in areas such as volcano-seismic monitoring (Bueno et al, 2019), geomagnetic storm forecasting (Tasistro-Hart et al, 2020), weather forecasting (Scher & Messori, 2021;Bonavita & Laloyaux, 2020), soil moisture predictions (Fang, Kifer, et al, 2020) and earthquake locations estimation (Mousavi & Beroza, 2020b).…”
Section: Uncertainty Estimationmentioning
confidence: 99%
“…With spatially dense and noise-free data, this approach has been based on sparse regression [9], echo state networks [10,11], recurrent neural networks (NN) [12], residual neural network [13] or convolutional neural networks [14,15]. The challenging problem of partial and/or noisy observations has been addressed using dedicated NN architecture [16] or in combination with DA methods [17][18][19][20][21].…”
Section: Introductionmentioning
confidence: 99%