Ensemble Postprocessing Using Quantile Function Regression Based on Neural Networks and Bernstein Polynomials

被引:46
作者
Bremnes, John Bjornar [1 ]
机构
[1] Norwegian Meteorol Inst, Oslo, Norway
关键词
Ensembles; Probability forecasts; models; distribution; Statistical forecasting; Model output statistics; Neural networks; FORECASTS; MODEL; PREDICTION; PRECIPITATION; SKILL;
D O I
10.1175/MWR-D-19-0227.1
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
The value of ensemble forecasts is well documented. However, postprocessing by statistical methods is usually required to make forecasts reliable in a probabilistic sense. In this work a flexible statistical method for making probabilistic forecasts in terms of quantile functions is proposed. The quantile functions are specified by linear combinations of Bernstein basis polynomials, and their coefficients are assumed to be related to ensemble forecasts by means of a highly adaptable neural network. This leads to many parameters to estimate, but a recent learning algorithm often applied to deep-learning problems makes this feasible and provides robust estimates. The method is applied to 2 yr of ensemble wind speed forecasting data at 125 Norwegian stations for lead time +60 h. An intercomparison with two quantile regression methods shows improvements in quantile skill score of nearly 1%. The most appealing feature of the method is arguably its versatility.
引用
收藏
页码:403 / 414
页数:12
相关论文
共 34 条
[1]  
Abadi M, 2016, PROCEEDINGS OF OSDI'16: 12TH USENIX SYMPOSIUM ON OPERATING SYSTEMS DESIGN AND IMPLEMENTATION, P265
[2]   Mixture EMOS model for calibrating ensemble forecasts of wind speed [J].
Baran, S. ;
Lerch, S. .
ENVIRONMETRICS, 2016, 27 (02) :116-130
[3]   Log-normal distribution based Ensemble Model Output Statistics models for probabilistic wind-speed forecasting [J].
Baran, Sandor ;
Lerch, Sebastian .
QUARTERLY JOURNAL OF THE ROYAL METEOROLOGICAL SOCIETY, 2015, 141 (691) :2289-2299
[4]  
Bishop C., 1994, Technical report
[5]  
Bremnes JB, 2004, MON WEATHER REV, V132, P338, DOI 10.1175/1520-0493(2004)132<0338:PFOPIT>2.0.CO
[6]  
2
[7]   Constrained Quantile Regression Splines for Ensemble Postprocessing [J].
Bremnes, John Bjornar .
MONTHLY WEATHER REVIEW, 2019, 147 (05) :1769-1780
[8]   Non-crossing nonlinear regression quantiles by monotone composite quantile regression neural network, with application to rainfall extremes [J].
Cannon, Alex J. .
STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2018, 32 (11) :3207-3225
[9]   Quantile regression neural networks: Implementation in R and application to precipitation downscaling [J].
Cannon, Alex J. .
COMPUTERS & GEOSCIENCES, 2011, 37 (09) :1277-1284
[10]   THE BERNSTEIN POLYNOMIAL ESTIMATOR OF A SMOOTH QUANTILE FUNCTION [J].
CHENG, C .
STATISTICS & PROBABILITY LETTERS, 1995, 24 (04) :321-330