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Characterizing renewable energy compound events across Europe using a logistic regressionā€based approach

Authors :
Otero, Noelia
Martius, Olivia
Allen, Sam
Bloomfield, Hannah
Schaefli, Bettina
Source :
Otero, Noelia; Martius, Olivia; Allen, Sam; Bloomfield, Hannah; Schaefli, Bettina (2022). Characterizing renewable energy compound events across Europe using a logistic regression-based approach. Meteorological applications, 29(5) Wiley 10.1002/met.2089
Publication Year :
2022
Publisher :
Wiley, 2022.

Abstract

The transition towards decarbonized power systems requires accounting for the impacts of the climate variability and climate change on renewable energy sources. With the growing share of wind and solar power in the European power system and their strong weather dependence, balancing the energy demand and supply becomes a great challenge. We characterize energy compound events, defined as periods of simultaneous low renewable production of wind and solar power, and high electricity demand. Using a logistic regression approach, we examine the influence of meteorological and atmospheric drivers on energy compound events. Moreover, we assess the spatial coherence of energy compound events that pose a major challenge within an interconnected power grid, as they can affect multiple countries simultaneously. On average, European countries are exposed to winter energy compound events more than twice per year. The combination of extremely low temperatures and low wind speeds is associated with a higher probability of occurrence of energy compound events. Furthermore, we show that blocked weather regimes have a major influence on energy compound events. In particular, Greenland and European blocking lead to widespread energy compound events that affect multiple countries at the same time. Our results highlight the relevance of weather regimes resulting in synchronous spatial energy compound events, which might pose a greater risk within a potential fully interconnected European grid.

Details

ISSN :
14698080 and 13504827
Volume :
29
Database :
OpenAIRE
Journal :
Meteorological Applications
Accession number :
edsair.doi.dedup.....4900776b86456441b061d6e04351b8ca
Full Text :
https://doi.org/10.1002/met.2089