8 research outputs found
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The transformation of earth-system observations into information of socio-economic value in GEOSS
The Group on Earth Observations System of Systems, GEOSS, is a co-ordinated initiative by many nations to address the needs for earth-system information expressed by the 2002 World Summit on Sustainable Development. We discuss the role of earth-system modelling and data assimilation in transforming earth-system observations into the predictive and status-assessment products required by GEOSS, across many areas of socio-economic interest. First we review recent gains in the predictive skill of operational global earth-system models, on time-scales of days to several seasons. We then discuss recent work to develop from the global predictions a diverse set of end-user applications which can meet GEOSS requirements for information of socio-economic benefit; examples include forecasts of coastal storm surges, floods in large river basins, seasonal crop yield forecasts and seasonal lead-time alerts for malaria epidemics. We note ongoing efforts to extend operational earth-system modelling and assimilation capabilities to atmospheric composition, in support of improved services for air-quality forecasts and for treaty assessment. We next sketch likely GEOSS observational requirements in the coming decades. In concluding, we reflect on the cost of earth observations relative to the modest cost of transforming the observations into information of socio-economic value
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Collecting and utilising crowdsourced data for numerical weather prediction: propositions from the meeting held in Copenhagen, 4âDecember 5, 2018
In December 2018, the Danish Meteorological Institute organised an international meeting on the subject of crowdsourced data in numerical weather prediction (NWP) and weather forecasting. The meeting, spanning 2 days, gathered experts on crowdsourced data from both meteorological institutes and universities from Europe and the United States. Scientific presentations highlighted a vast array of possibilities and progress being made globally. Subjects include data from vehicles, smartphones, and private weather stations. Two groups were created to discuss open questions regarding the collection and use of crowdsourced data from different observing platforms. Common challenges were identified and potential solutions were discussed. While most of the work presented was preliminary, the results shared suggested that crowdsourced observations have the potential to enhance NWP. A common platform for sharing expertise, data, and results would help crowdsourced data realise this potential
The HARMONIEâAROME Model Configuration in the ALADINâHIRLAM NWP System
The aim of this article is to describe the reference configuration of the convection-permitting numerical
weather prediction (NWP) model HARMONIE-AROME, which is used for operational short-range
weather forecasts in Denmark, Estonia, Finland, Iceland, Ireland, Lithuania, the Netherlands, Norway,
Spain, and Sweden. It is developed, maintained, and validated as part of the shared ALADINâHIRLAM
system by a collaboration of 26 countries in Europe and northern Africa on short-range mesoscale NWP.
HARMONIEâAROME is based on the model AROME developed within the ALADIN consortium.
Along with the joint modeling framework, AROME was implemented and utilized in both northern and
southern European conditions by the above listed countries, and this activity has led to extensive updates to
themodelâs physical parameterizations. In this paper the authors present the differences inmodel dynamics
and physical parameterizations compared with AROME, as well as important configuration choices of the
reference, such as lateral boundary conditions, model levels, horizontal resolution, model time step, as well
as topography, physiography, and aerosol databases used. Separate documentation will be provided for
the atmospheric and surface data-assimilation algorithms and observation types used, as well as a separate
description of the ensemble prediction system based on HARMONIEâAROME, which is called
HarmonEPS
Scientific challenges of convective-scale numerical weather prediction
Numerical weather prediction (NWP) models are increasing in resolution and becoming capable of explicitly representing individual convective storms. Is this increase in resolution leading to better forecasts? Unfortunately, we do not have sufficient theoretical understanding about this weather regime to make full use of these NWPs.
After extensive efforts over the course of a decade, convectiveâscale weather forecasts with horizontal grid spacings of 1â5 km are now operational at national weather services around the world, accompanied by ensemble prediction systems (EPSs). However, though already operational, the capacity of forecasts for this scale is still to be fully exploited by overcoming the fundamental difficulty in prediction: the fully threeâdimensional and turbulent nature of the atmosphere. The prediction of this scale is totally different from that of the synoptic scale (103 km) with slowlyâevolving semiâgeostrophic dynamics and relatively long predictability on the order of a few days.
Even theoretically, very little is understood about the convective scale compared to our extensive knowledge of the synoptic-scale weather regime as a partialâdifferential equation system, as well as in terms of the fluid mechanics, predictability, uncertainties, and stochasticity. Furthermore, there is a requirement for a drastic modification of data assimilation methodologies, physics (e.g., microphysics), parameterizations, as well as the numerics for use at the convective scale. We need to focus on more fundamental theoretical issues: the Liouville principle and Bayesian probability for probabilistic forecasts; and more fundamental turbulence research to provide robust numerics for the full variety of turbulent flows.
The present essay reviews those basic theoretical challenges as comprehensibly as possible. The breadth of the problems that we face is a challenge in itself: an attempt to reduce these into a single critical agenda should be avoided
Crowdâsourced observations for shortârange numerical weather prediction: Report from EWGLAM/SRNWP Meeting 2019
Abstract Crowdâsourced observations (CSO) offer great potential for numerical weather prediction (NWP). This paper offers a synthesis of progress, challenges and opportunities in this area based on a special session of the EWGLAM Meeting in 2019, concentrating on highâresolution limitedâarea models (LAMs). Two main application areas of CSO are described: data assimilation and verification. One part of data assimilation developments concentrates on smartphone pressure observations, which represent a large volume of data. However, special care has to be taken about data protection and the quality of observations. In this paper, two examples are presented: the SMAPS experiment from Denmark and the uWx experiment from the United States. Another data assimilation topic is citizen observations with lowâcost weather sensors; here an example from Norway is presented using Netatmo stations. The other application area is the use of CSO for model verification. One novel method developed in the United Kingdom is applying social media data to detect severe weather events. This approach is especially important because one future application area of LAM NWP models is impactâoriented warnings