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Sökning: id:"swepub:oai:DiVA.org:ri-45608" > Short-term solar an...

Short-term solar and wind variability in long-term energy system models - A European case study

Ringkjøb, Hans-Kristian (författare)
University of Bergen, Norway; Institute for Energy Technology, Norway; IIASA International Institute for Applied Systems Analysis, Austria
Haugan, Peter (författare)
University of Bergen, Norway
Seljom, Pernille (författare)
Institute for Energy Technology, Norway
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Lind, Arne (författare)
Institute for Energy Technology, Norway
Wagner, Fabian (författare)
IIASA International Institute for Applied Systems Analysis, Austria
Mesfun, Sennai (författare)
RISE,Bioraffinaderi och energi,IIASA International Institute for Applied Systems Analysis, Austria
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 (creator_code:org_t)
Elsevier Ltd, 2020
2020
Engelska.
Ingår i: Energy. - : Elsevier Ltd. - 0360-5442 .- 1873-6785. ; 209
  • Tidskriftsartikel (refereegranskat)
Abstract Ämnesord
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  • Integration of variable renewables such as solar and wind has grown at an unprecedented pace in Europe over the past two decades. As the share of solar and wind rises, it becomes increasingly important for long-term energy system models to adequately represent their short-term variability. This paper uses a long-term TIMES model of the European power and district heat sectors towards 2050 to explore how stochastic modelling of short-term solar and wind variability as well as different temporal resolutions influence the model performance. Using a stochastic model with 48 time-slices as benchmark, the results show that deterministic models with low temporal resolution give a 15–20% underestimation of annual costs, an overestimation of the contribution of variable renewables (13–15% of total electricity generation) and a lack of system flexibility. The results of the deterministic models converge towards the stochastic solution when the temporal resolution is increased, but even with 2016 time-slices, the need for flexibility is underestimated. In addition, the deterministic model with 2016 time-slices takes 30 times longer to solve than the stochastic model with 48 time-slices. Based on these findings, a stochastic approach is recommended for long-term studies of energy systems with large shares of variable renewable energy sources. © 2020 The Authors

Nyckelord

Energy modelling
Stochastic modelling
TIMES energy-Models
Variable renewable energy
Renewable energy resources
Solar power generation
Stochastic systems
Deterministic modeling
Deterministic models
Electricity generation
Energy system model
Stochastic approach
Stochastic solution
Temporal resolution
Variable renewable energies
Stochastic models

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