Maximizing the potential of numerical weather prediction models: lessons learned from combining high-performance computing and cloud computing

Author:

Vourlioti ParaskeviORCID,Kotsopoulos Stylianos,Mamouka Theano,Agrafiotis Apostolos,Nieto Francisco Javier,Sánchez Carlos Fernández,Llerena Cecilia Grela,García González Sergio

Abstract

Abstract. To promote cloud and HPC computing, GRAPEVINE* project objectives include using these tools along with open data sources to provide a reusable IT service. In this service a predictive model based on Machine learning (ML) techniques is created with the aim of preventing and controlling grape vine diseases in the wine cultivation sector. Aside from the predictive ML, meteorological forecasts are crucial input to train the ML models and on a second step to be used as input for the operational prediction of grapevine diseases. To this end, the Weather and Research Forecasting model (WRF) has been deployed in CESGA's HPC infrastructure to produce medium-range and sub-seasonal forecasts for the targeted pilot areas (Greece and Spain). The data assimilation component of WRF – WRFDA – has been also introduced for improving the initial conditions of the WRF model by assimilating observations from weather stations and satellite precipitation products (Integrated Multi-satellitE Retrieval for GPM – IMERG). This methodology for assimilation was developed during STARGATE* project, allowing the testing of the methodology in the operational service of GRAPEVINE. The operational production of the forecasts is achieved by the cloudify orchestrator on a Kubernetes cluster. The connections between the Kubernetes cluster and the HPC infrastructure, where the model resides, is achieved with the croupier plugin of cloudify. Blueprints that encapsule the workflows of the meteorological model and its dependencies were created. The instances of the blueprints (deployments) were created automatically to produce operationally weather forecasts and they were made available to the ML models via a THREDDS server. Valuable lessons were learned with regards the automation of the process and the coupling with the HPC in terms of reservations and operational production.

Funder

European Commission

Publisher

Copernicus GmbH

Subject

Atmospheric Science,Pollution,Geophysics,Ecological Modeling

Reference19 articles.

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2. CDS – Copernicus Climate Change Service Climate Data Store: ERA5 hourly data on single levels from 1979 to present, https://cds.climate.copernicus.eu/cdsapp#!/home, last access: 25 August 2022.

3. Centro de Supercomputation de Galicia: CESGA's new FinisTerrae III, https://www.cesga.es/en/cesga-actualiza-el-finisterrae/, last access: 25 August 2022.

4. Cloudify: Bridging the Gap Between Applications & Cloud Environments, https://cloudify.co/, last access: 25 August 2022.

5. Docker Hub: Model Evaluation Tools Plus (METplus) Repository, https://hub.docker.com/r/dtcenter/metplus, last access: 25 August 2022.

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