Towards nowcasting in Europe in 2030

Author:

Bojinski Stephan1ORCID,Blaauboer Dick23,Calbet Xavier45,de Coning Estelle6,Debie Frans3,Montmerle Thibaut7,Nietosvaara Vesa1,Norman Katie8,Bañón Peregrín Luis4,Schmid Franziska29,Strelec Mahović Nataša1,Wapler Kathrin10

Affiliation:

1. European Organisation for the Exploitation of Meteorological Satellites (EUMETSAT) Darmstadt Germany

2. Network of European Meteorological Services (EUMETNET) Brussels Belgium

3. Royal Netherlands Meteorological Institute (KNMI) de Bilt The Netherlands

4. State Meteorological Agency (AEMET) Madrid Spain

5. European Organisation for the Exploitation of Meteorological Satellites (EUMETSAT) Satellite Application Facility in Support of Nowcasting and Very Short Range Forecasting (NWCSAF) Madrid Spain

6. World Meteorological Organization (WMO) Geneva Switzerland

7. Météo‐France Toulouse France

8. UK Met Office Exeter UK

9. Geosphere Austria Vienna Austria

10. German Weather Service (DWD) Offenbach Germany

Abstract

AbstractThe increasing impact of severe weather over Europe on lives and weather‐sensitive economies can be mitigated by accurate 0–6 h forecasts (nowcasts), supporting a vital ‘last line of defence’ for civil protection and many other applications. Recognizing lack of skill in some complex situations, often at convective and local sub‐kilometre scales and associated with rare events, we identify seven recommendations with the aim to improve nowcasting in Europe by the national meteorological and hydrological services (NMHSs) by 2030. These recommendations are based on a review of user needs, the state of the observing system, techniques based on observations and high‐resolution numerical weather models, as well as tools, data and infrastructure supporting the nowcasting community in Europe. Denser and more accurate observations are necessary particularly in the boundary layer to better characterize the ingredients of severe storms. A key driver for improvement is next‐generation European satellite data becoming available as of 2023. Seamless ensemble prediction methods to produce enhanced weather forecasts with 0–24 h lead times and probabilistic products require further development. Such products need to be understood and interpreted by skilled forecasters operating in an evolving forecasting context. We argue that stronger co‐development and collaboration between providers and users of nowcasting‐relevant data and information are key ingredients for progress. We recommend establishing pan‐European nowcasting consortia, better exchange of data, common development platforms and common verification approaches as key elements for progressing nowcasting in Europe in this decade.

Publisher

Wiley

Subject

Atmospheric Science

Reference116 articles.

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