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AI researchers from ANITI, IMT and CERFACS, as well as with researchers/engineers in weather forecastings from the CNRM (Météo-France). Hybridization methods between neural networks and physical models
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systems such as flashback which can occur with hydrogen or blow-off with ammonia. Currently, we cannot accurately forecast such extreme events due to the chaotic nature of the underlying turbulent flows and
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of hazard assessment. North- Atlantic cyclones can cause severe damage to the neighbouring land of North America and Europe. Increasing the lead time of seasonal forecasts will allow for governments
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challenges in the area of hazard assessment and impact forecasting. The aim of the project is to develop methodologies for forecasting future energy use for various assets and weather scenarios from short term
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read more about career paths at DTU here . Further information You can read more about DTU Space and Astrophysics and Atmospheric Physics at https://www.space.dtu.dk/english/ If you are applying from
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the project and future research projects Support the training and consolidation of young human resources in research Perform research activities related to: Monitoring and forecasting environmental changes in
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with the Portuguese Labour Code 2/7 approved by the Law no. 7/2009 of February 12th, as amended. The contract should have a forecasted duration of 12 months, with the possibility of renewal, and should
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, storage, and local electricity grids. A key goal is to translate methodological innovations in deep learning into practical tools for sustainable urban energy systems, supporting applications in forecasting
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The information for the PhD admission is available at TalTech´s web-page: https://taltech.ee/en/phd-admission The following application documents should be sent to taavi.liblik@taltech.ee CV Motivation letter
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conceptualized as a specialized form of anomaly detection. Specifically, the objective is to identify anomalies that evolve gradually and to forecast the time-to-failure with sufficient accuracy. Consequently