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The widespread use of distributed energy sources provides exciting potential for demand-side energy sharing and collective self-consumption schemes. Demand-side energy sharing and collective self-consumption systems are committed to coordinating the operation of distributed generation, energy storage, and load demand. Recently, with the development of Internet technology, sharing economy is rapidly penetrating various fields. The application of sharing economy in the energy sector enables more and more end-users to participate in energy transactions. However, the deployment of energy sharing technologies poses many challenges. This paper comprehensively reviews recent developments in demand-side energy sharing and collective self-consumption schemes. The definition and classification of sharing economy are presented, with a focus on the applications in the energy sector: virtual power plants, peer-to-peer energy trading, shared energy storage, and microgrid energy sharing cloud. Challenges and future research directions are thoroughly discussed.


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Review of demand-side energy sharing and collective self-consumption schemes in future power systems

Show Author's information Jizhong Zhu1Shenglin Li1( )Alberto Borghetti2Jing Lan1Hong Li1Taiheng Guo1
School of Electric Power Engineering, South China University of Technology, Guangzhou 510641, China
Department of Electrical, Electronic and Information Engineering, University of Bologna, Bologna 40136, Italy

Abstract

The widespread use of distributed energy sources provides exciting potential for demand-side energy sharing and collective self-consumption schemes. Demand-side energy sharing and collective self-consumption systems are committed to coordinating the operation of distributed generation, energy storage, and load demand. Recently, with the development of Internet technology, sharing economy is rapidly penetrating various fields. The application of sharing economy in the energy sector enables more and more end-users to participate in energy transactions. However, the deployment of energy sharing technologies poses many challenges. This paper comprehensively reviews recent developments in demand-side energy sharing and collective self-consumption schemes. The definition and classification of sharing economy are presented, with a focus on the applications in the energy sector: virtual power plants, peer-to-peer energy trading, shared energy storage, and microgrid energy sharing cloud. Challenges and future research directions are thoroughly discussed.

Keywords: Energy sharing, sharing economy, distributed energy resources, future power systems, demand-side energy management

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Received: 17 January 2023
Revised: 22 February 2023
Accepted: 02 March 2023
Published: 01 June 2023
Issue date: June 2023

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© The author(s) 2023.

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Acknowledgements

This work was supported by the National Natural Science Foundation of China (No. 52177087) and the High-End Foreign Experts Project (No. G2022163018L).

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This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).

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