兰州大学机构库 >大气科学学院
Assimilation of the deep learning-corrected global forecast system fields into the regional model for improving medium-range persistent precipitation forecasts
Guo, Shuchang1; Yang, Y(杨毅)1; Liu, Peng1,2
2024-06-15
Online publication date2024-03
Source PublicationATMOSPHERIC RESEARCH   Impact Factor & Quartile Of Published Year  The Latest Impact Factor & Quartile
ISSN0169-8095
EISSN1873-2895
Volume303
page numbers17
AbstractThe error of regional models gradually increases during long-term integration, and it can be reduced with the constraint of large-scale circulation by assimilating global forecast system (GFS) fields to improve the forecast performance. However, with increasing forecast time, the GFS forecast error also significantly increases and varies widely. Directly assimilating GFS fields into the regional model without processing may generate negative impacts, whereas employing postprocessing correction methods can effectively mitigate GFS forecast errors. In this study, the GFS data of European Centre for Medium-Range Weather Forecasts (ECMWF) are first corrected using a convolutional long- and short-term memory network method. The correction model can correct multiple forecasts simultaneously by training only one model, and the correction results are less erroneous than those obtained by training multiple correction models for the different forecast times and pressure layers. The corrected ECMWF forecast fields are then assimilated into Weather Research and Forecasting Model (WRF) using the nudging method. This assimilation method generally improves the forecasts for precipitation above the moderate rainfall level at forecast times of 4–7 days, and reduces the errors of surface wind speed forecasts. This study improves the accuracy of correction models and the forecasts of persistent precipitation weather event with regional model. © 2024 Elsevier B.V.
KeywordDeep learning Weather forecasting Wind speed Bias correction Correction models Deep learning Forecast time Global forecast systems Large-scale constraint Large-scales Medium range forecast Persistent precipitation Regional modelling
PublisherElsevier Ltd
DOI10.1016/j.atmosres.2024.107318
Indexed ByEI ; SCIE
Language英语
WOS Research AreaMeteorology & Atmospheric Sciences
WOS SubjectMeteorology & Atmospheric Sciences
WOS IDWOS:001210983200001
EI Accession Number20241115738774
EI KeywordsErrors
EI Classification Number443 Meteorology ; 461.4 Ergonomics and Human Factors Engineering ; 615.8 Wind Power (Before 1993, use code 611 )
Original Document TypeJournal article (JA)
Citation statistics
Document Type期刊论文
Identifierhttps://ir.lzu.edu.cn/handle/262010/585438
Collection大气科学学院
Corresponding AuthorYang, Yi
Affiliation
1.Key Laboratory of Climate Resource Development and Disaster Prevention in Gansu Province, Research Center for Weather Forecasting and Climate Prediction of Lanzhou University, College of Atmospheric Sciences, Lanzhou University, Lanzhou; 730000, China;
2.Tianjin Key Laboratory of Oceanic Meteorology, Tianjin Institute of Meteorological Science, Tianjin; 300074, China
First Author AffilicationCollege of Atmospheric Sciences
Corresponding Author AffilicationCollege of Atmospheric Sciences
First Signature AffilicationCollege of Atmospheric Sciences
Recommended Citation
GB/T 7714
Guo, Shuchang,Yang, Yi,Liu, Peng. Assimilation of the deep learning-corrected global forecast system fields into the regional model for improving medium-range persistent precipitation forecasts[J]. ATMOSPHERIC RESEARCH,2024,303.
APA Guo, Shuchang,Yang, Yi,&Liu, Peng.(2024).Assimilation of the deep learning-corrected global forecast system fields into the regional model for improving medium-range persistent precipitation forecasts.ATMOSPHERIC RESEARCH,303.
MLA Guo, Shuchang,et al."Assimilation of the deep learning-corrected global forecast system fields into the regional model for improving medium-range persistent precipitation forecasts".ATMOSPHERIC RESEARCH 303(2024).
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