Energy system models are increasingly being used in politics, industry and science. At the same time, model
complexity continues to increase. Different possibilities of computing time reduction are in use, for example
rolling horizons and incremental optimisation with reduced foresight. However, the combination of using
strongly sector-coupled models with different foresight variants, in particular, has not been investigated
thoroughly yet. This study aims to evaluate different model foresights by using a mathematical model of
the German energy system, which includes electricity and heat supply as well as the supply of basic chemicals
and mobility. Three scenarios of this model are used to evaluate the influences of changing foresights. The
considered foresight variants are perfect foresight, myopia incremental, and myopia with foresight. Carbon
budget models are shown to be more suitable than the price drop and CO2 price variants with the aim to
minimise deviations from the least-cost energy system transformation. Moreover, this study demonstrates the
importance of the chosen model foresight. If the goal of the optimisation is to simulate unforeseen events or
shocks, the foresight of the model should be chosen to have a rather small value to depict a realistic reaction of
the model. If the goal is rather to simulate long-lasting consequences of decisions taken at the beginning of the
simulation, the foresight horizons should be chosen to be rather long while also considering the computational
costs that scale with increasing foresight.
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Energy system models are increasingly being used in politics, industry and science. At the same time, model
complexity continues to increase. Different possibilities of computing time reduction are in use, for example
rolling horizons and incremental optimisation with reduced foresight. However, the combination of using
strongly sector-coupled models with different foresight variants, in particular, has not been investigated
thoroughly yet. This study aims to evaluate different model foresig...
»