Seasonal prediction of renewable energy generation in Europe based on four teleconnection indices

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hdl:2117/362089
Document typeArticle
Defense date2022
PublisherElsevier
Rights accessOpen Access
This work is protected by the corresponding intellectual and industrial property rights.
Except where otherwise noted, its contents are licensed under a Creative Commons license
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Attribution-NonCommercial-NoDerivs 3.0 Spain
ProjectS2S4E - Sub-seasonal to Seasonal climate forecasting for Energy (EC-H2020-776787)
ERA4CS - European Research Area for Climate Services (EC-H2020-690462)
ERA4CS - European Research Area for Climate Services (EC-H2020-690462)
Abstract
With growing amounts of wind and solar power in the electricity mix of many European countries, understanding and predicting variations of renewable energy generation at multiple timescales is crucial to ensure reliable electricity systems. At seasonal scale, the balance between supply and demand is mostly determined by the large-scale atmospheric circulation, which is uncertain due to climate change and natural variability. Here we employ four teleconnection indices, which represent a linkage between atmospheric conditions at widely separated regions, to describe the large-scale circulation at seasonal scale over Europe. For the first time, we relate each of the teleconnections to the wind and solar generation anomalies at country and regional level and we show that dynamical forecasts of the teleconnection indices allow predicting renewable generation at country level with positive skill levels. This model unveils the co-variability of wind and solar generation in European countries through its common dependence on the general circulation and the state of the teleconnections.
CitationLledó, L. [et al.]. Seasonal prediction of renewable energy generation in Europe based on four teleconnection indices. "Renewable Energy", 2022, vol. 186, p. 420-430.
ISSN0960-1481
Publisher versionhttps://www.sciencedirect.com/science/article/pii/S0960148121018607
Other identifiershttps://arxiv.org/abs/2202.02258
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