Applying the Energy Efficiency First principle based on a decision-tree framework

被引:0
|
作者
Songmin Yu
Tim Mandel
Stefan Thomas
Heike Brugger
机构
[1] Fraunhofer Institute for Systems and Innovation Research,
[2] Wuppertal Institute for Climate,undefined
[3] Environment and Energy,undefined
来源
Energy Efficiency | 2022年 / 15卷
关键词
Energy Efficiency First principle; Decision-tree framework; Demand-response planning; District heating;
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学科分类号
摘要
Energy Efficiency First (EEF) is an established principle for European Union (EU) energy policy design. It highlights the exploitation of demand-side resources and prioritizes cost-effective options from the demand-side over other options from a societal cost-benefit perspective. However, the involvement of multiple decision-makers makes it difficult to implement. Therefore, we propose a flexible decision-tree framework for applying the EEF principle based on a review of relevant areas and examples. In summary, this paper contributes to applying the EEF principle by defining and distinguishing different types of cases — (1) policy-making, and (2) system planning and investment — identifying the most common elements, and proposing a decision-tree framework that can be flexibly constructed based on the elements for different cases. Finally, we exemplify the application of this framework with two example cases: (1) planning for demand-response in the power sector, and (2) planning for a district heating system.
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