Evaluation of machine learning techniques for forecast uncertainty quantification

被引:1
|
作者
Sacco, Maximiliano A. [1 ,2 ]
Ruiz, Juan J. [2 ,3 ,4 ]
Pulido, Manuel [4 ,5 ]
Tandeo, Pierre [6 ]
机构
[1] Serv Meteorol Nacl, Buenos Aires, Argentina
[2] Univ Buenos Aires, Fac Ciencias Exactas & Nat, Dept Ciencias Atmosfera & Oceanos, Buenos Aires, Argentina
[3] Univ Buenos Aires, Ctr Invest Mar & Atmosfera CIMA, CONICET, Buenos Aires, Argentina
[4] CNRS IRD CONICET UBA, Inst Franco Argentino Estudio Clima & sus Impactos, RA-3351 Buenos Aires, Argentina
[5] Univ Nacl Nordeste, Fac Ciencias Exactas & Nat & Agrimensura, Dept Fis, Corrientes, Argentina
[6] IMT Atlantique, Lab STICC, UMR CNRS 6285, Plouzane, France
关键词
chaotic dynamic models; forecast; neural networks; observation likelihood loss function; uncertainty quantification; PROBABILISTIC FORECASTS; REGRESSION FORESTS; DATA ASSIMILATION; NEURAL-NETWORKS; MODEL OUTPUT; ENSEMBLE; PRECIPITATION;
D O I
10.1002/qj.4362
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
Ensemble forecasting is, so far, the most successful approach to produce relevant forecasts with an estimation of their uncertainty. The main limitations of ensemble forecasting are the high computational cost and the difficulty to capture and quantify different sources of uncertainty, particularly those associated with model errors. In this article we perform toy-model and state-of-the-art model experiments to analyze to what extent artificial neural networks (ANNs) are able to model the different sources of uncertainty present in a forecast. In particular, those associated with the accuracy of the initial conditions and those introduced by the model error. We also compare different training strategies: one based on a direct training using the mean and spread of an ensemble forecast as target, and the other ones rely on an indirect training strategy using an analyzed state as target in which the uncertainty is implicitly learned from the data. Experiments using the Lorenz'96 model show that the ANNs are able to emulate some of the properties of ensemble forecasts like the filtering of the most unpredictable modes and a state-dependent quantification of the forecast uncertainty. Moreover, ANNs provide a reliable estimation of the forecast uncertainty in the presence of model error. Preliminary experiments conducted with a state-of-the-art forecasting system also confirm the ability of ANNs to produce a reliable quantification of the forecast uncertainty.
引用
收藏
页码:3470 / 3490
页数:21
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