4.1 Article

A modeler's guide to handle complexity in energy systems optimization

期刊

ADVANCES IN APPLIED ENERGY
卷 4, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.adapen.2021.100063

关键词

Energy system optimization; MILP; LP; Decomposition; Capacity expansion; Aggregation

资金

  1. Federal Ministry for Economic Affairs and Energy of Germany [03ET4064]

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This article discusses how to deal with complexity issues in energy system model design, including how to avoid complexity factors, how to reduce systematic complexity, and provides guidance for energy system modelers to overcome computational limitations.
Determining environmentally- and economically-optimal energy systems designs and operations is complex. In particular, the integration of weather-dependent renewable energy technologies into energy system optimization models presents new challenges to computational tractability that cannot only be solved by advancements in computational resources. In consequence, energy system modelers must tackle the complexity of their models by applying various methods to manipulate the underlying data and model structure, with the ultimate goal of finding optimal solutions. As which complexity reduction method is suitable for which research question is often unclear, herein we review different approaches for handling complexity. We first analyze the determinants of complexity and note that many drivers of complexity could be avoided a priori with a tailored model design. Second, we conduct a review of systematic complexity reduction methods for energy system optimization models, which can range from simple linearization performed by modelers to sophisticated multi-level approaches combining aggregation and decomposition methods. Based on this overview, we develop a guide for energy system modelers who encounter computational limitations.

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