A Neural Network Nonlinear Multimodel Ensemble to Improve Precipitation Forecasts over Continental US
Author(s) -
Vladimir M. Krasnopolsky,
Ying Lin
Publication year - 2012
Publication title -
advances in meteorology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.482
H-Index - 32
eISSN - 1687-9317
pISSN - 1687-9309
DOI - 10.1155/2012/649450
Subject(s) - ensemble learning , ensemble forecasting , nonlinear system , artificial neural network , precipitation , computer science , regression , ensemble average , artificial intelligence , machine learning , econometrics , mathematics , statistics , meteorology , geography , climatology , geology , physics , quantum mechanics
A novel multimodel ensemble approach based on learning from data using the neural network (NN) technique is formulated and applied for improving 24-hour precipitation forecasts over the continental US. The developed nonlinear approach allowed us to account for nonlinear correlation between ensemble members and to produce “optimal” forecast represented by a nonlinear NN ensemble mean. The NN approach is compared with the conservative multi-model ensemble, with multiple linear regression ensemble approaches, and with results obtained by human forecasters. The NN multi-model ensemble improves upon conservative multi-model ensemble and multiple linear regression ensemble, it (1) significantly reduces high bias at low precipitation level, (2) significantly reduces low bias at high precipitation level, and (3) sharpens features making them closer to the observed ones. The NN multi-model ensemble performs at least as well as human forecasters supplied with the same information. The developed approach is a generic approach that can be applied to other multi-model ensemble fields as well as to single model ensembles
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