Privacy-preserving transactive energy systems: Key topics and open research challenges
- URL: http://arxiv.org/abs/2312.11564v1
- Date: Sun, 17 Dec 2023 21:23:44 GMT
- Title: Privacy-preserving transactive energy systems: Key topics and open research challenges
- Authors: Daniel Gerbi Duguma, Juliana Zhang, Meysam Aboutalebi, Shiliang Zhang, Catherine Banet, Cato Bjørkli, Chinmayi Baramashetru, Frank Eliassen, Hui Zhang, Jonathan Muringani, Josef Noll, Knut Inge Fostervold, Lars Böcker, Lee Andrew Bygrave, Matin Bagherpour, Maunya Doroudi Moghadam, Olaf Owe, Poushali Sengupta, Roman Vitenberg, Sabita Maharjan, Thiago Garrett, Yushuai Li, Zhengyu Shan,
- Abstract summary: This manuscript aims to formalize and conclude the discussions initiated during the PriTEM workshop 22-23 March 2023.
We present important ideas and discussion topics in the context of transactive energy systems.
The conclusions articulate potential aspects to be explored in future studies on transactive energy management.
- Score: 26.598696254477836
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: This manuscript aims to formalize and conclude the discussions initiated during the PriTEM workshop 22-23 March 2023. We present important ideas and discussion topics in the context of transactive energy systems. Moreover, the conclusions from the discussions articulate potential aspects to be explored in future studies on transactive energy management. Particularly, these conclusions cover research topics in energy technology and energy informatics, energy law, data law, energy market and socio-psychology that are relevant to the seamless integration of renewable energy resources and the transactive energy systems-in smart microgrids-focusing on distributed frameworks such as peer-to-peer (P2P) energy trading. We clarify issues, identify barriers, and suggest possible solutions to open questions in diversified topics, such as block-chain interoperability, consumer privacy and data sharing, and participation incentivization. Furthermore, we also elaborate challenges associated with cross-disciplinary collaboration and coordination for transactive energy systems, and enumerate the lessons learned from our work so far.
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