WRF data assimilation of weather stations and lightning data for a convective event in northern Italy

被引:0
|
作者
Maggioni E.C. [1 ]
Manzoni T. [2 ]
Perotto A. [1 ]
Spada F. [1 ]
Borroni A. [2 ]
Giurato M. [3 ]
Giudici M. [4 ]
Ferrari F. [4 ]
Zardi D. [5 ]
Salerno R. [2 ]
机构
[1] Ideam Srl, Cinisello Balsamo, Milan
[2] Meteo Expert, Cinisello Balsamo, Milan
[3] CMCC Foundation - Euro-Mediterranean Center On Climate Change, Bologna
[4] Department of Earth Sciences, Università Degli Studi Di Milano, Milan
[5] Department of Civil, Environmental and Mechanical Engineering, University of Trento, Trento
关键词
Convective rainfall; Data assimilation; Ground meteorological stations; Humidity profile; Lightning data; WRF model;
D O I
10.1007/s42865-023-00061-8
中图分类号
学科分类号
摘要
The present work shows the relevance of assimilating mesoscale observations and lightning data in the Weather Research and Forecasting (WRF) model, to simulate a strong convective event in northern Italy, poorly forecasted by available weather models even a few hours before the event itself. The data assimilation was conducted by testing the 3D-VAR and 4D-VAR assimilation algorithms implemented in the WRF data assimilation (WRFDA) suite, with different configurations and different assimilation windows. An extensive sensibility test has been operated to properly analyze the effect that the assimilation of a single station has on the model outcomes. Input data were taken from two networks of more than 1000 citizen-science meteorological stations, available in northern Italy, and from lightning flashes derived from Earth Networks Total Lightning Network, assimilated using the atmospheric water vapor as a proxy variable. Rain forecasts over an area in the north of Milan were compared to the station’s measurements in the same area; POD, FAR, and CSI categorical statistics have been calculated. Results showed a positive improvement in the forecasted rain amounts with the ingestion of mesoscale weather data into 3D-VAR and 4D-VAR algorithms, more pronounced using 4D-VAR with a more frequent input data integration. A few improvements were reported by the 3D-VAR, with the lightning data assimilation, probably caused by the absence of the model’s spin-up time with this configuration. An ideal simulation, which increased the water vapor of the air mass 2 h before the convective event, reported a positive enhancement of the rain amounts. The tests conducted on a single convective event are nevertheless encouraging, because they show a positive improvement of forecast with the assimilation of near-ground weather data and tropospheric water vapor 1 or 2 h before the beginning of the convection activity. © 2023, The Author(s), under exclusive licence to Springer Nature Switzerland AG.
引用
收藏
相关论文
共 50 条
  • [31] Application of a WRF Mesoscale Data Assimilation System to Springtime Severe Weather Events 2007-09
    Wheatley, Dustan M.
    Stensrud, David J.
    Dowell, David C.
    Yussouf, Nusrat
    MONTHLY WEATHER REVIEW, 2012, 140 (05) : 1539 - 1557
  • [32] Weather stations lack forest data
    De Frenne, Pieter
    Verheyen, Kris
    SCIENCE, 2016, 351 (6270) : 234 - 234
  • [33] Lightning data assimilation with comprehensively nudging water contents at cloud-resolving scale using WRF model
    Chen, Zhixiong
    Qie, Xiushu
    Liu, Dongxia
    Xiong, Yajun
    ATMOSPHERIC RESEARCH, 2019, 221 : 72 - 87
  • [34] Thunderstorm nowcasting by means of lightning and radar data: algorithms and applications in northern Italy
    Bonelli, P.
    Marcacci, P.
    NATURAL HAZARDS AND EARTH SYSTEM SCIENCES, 2008, 8 (05) : 1187 - 1198
  • [35] Experiments on Lightning Detection Network Data Assimilation
    Rubinstein, K. G.
    Gubenko, I. M.
    Ignatov, R. Yu.
    Tikhonenko, N. D.
    Yusupov, Yu. I.
    ATMOSPHERIC AND OCEANIC OPTICS, 2020, 33 (02) : 219 - 228
  • [36] Survey of data assimilation methods for convective-scale numerical weather prediction at operational centres
    Gustafsson, Nils
    Janjic, Tijana
    Schraff, Christoph
    Leuenberger, Daniel
    Weissmann, Martin
    Reich, Hendrik
    Brousseau, Pierre
    Montmerle, Thibaut
    Wattrelot, Eric
    Bucanek, Antonin
    Mile, Mate
    Hamdi, Rafiq
    Lindskog, Magnus
    Barkmeijer, Jan
    Dahlbom, Mats
    Macpherson, Bruce
    Ballard, Sue
    Inverarity, Gordon
    Carley, Jacob
    Alexander, Curtis
    Dowell, David
    Liu, Shun
    Ikuta, Yasutaka
    Fujita, Tadashi
    QUARTERLY JOURNAL OF THE ROYAL METEOROLOGICAL SOCIETY, 2018, 144 (713) : 1218 - 1256
  • [37] Experiments on Lightning Detection Network Data Assimilation
    K. G. Rubinstein
    I. M. Gubenko
    R. Yu. Ignatov
    N. D. Tikhonenko
    Yu. I. Yusupov
    Atmospheric and Oceanic Optics, 2020, 33 : 219 - 228
  • [38] Assimilation of Radar and Cloud-to-Ground Lightning Data Using WRF-3DVar Combined with the Physical Initialization Method——A Case Study of a Mesoscale Convective System
    Ruhui GAN
    Yi YANG
    Qian XIE
    Erliang LIN
    Ying WANG
    Peng LIU
    JournalofMeteorologicalResearch, 2021, 35 (02) : 329 - 342
  • [39] Assimilation of Radar and Cloud-to-Ground Lightning Data Using WRF-3DVar Combined with the Physical Initialization Method—A Case Study of a Mesoscale Convective System
    Ruhui Gan
    Yi Yang
    Qian Xie
    Erliang Lin
    Ying Wang
    Peng Liu
    Journal of Meteorological Research, 2021, 35 : 329 - 342
  • [40] Operational convective-scale data assimilation over Iran: A comparison between WRF and HARMONIE-AROME
    Neyestani, Abolfazl
    Gustafsson, Nils
    Ghader, Sarmad
    Mohebalhojeh, Ali Reza
    Kornich, Heiner
    DYNAMICS OF ATMOSPHERES AND OCEANS, 2021, 95