A Review of Scalable and Privacy-Preserving Multi-Agent Frameworks for Distributed Energy Resources
Xiang Huo, Hao Huang, Katherine R. Davis, H. Vincent Poor, Mingxi Liu

TL;DR
This paper reviews scalable, privacy-preserving multi-agent frameworks for managing distributed energy resources, addressing key challenges in secure data processing and efficient optimization in large-scale power systems.
Contribution
It provides a comprehensive survey of current solutions and proposes future directions for integrating privacy and scalability in multi-agent DER management.
Findings
Identifies privacy preservation techniques compatible with scalable architectures.
Reviews state-of-the-art parallel control and optimization methods for DERs.
Highlights challenges in practical implementation of interdisciplinary solutions.
Abstract
Distributed energy resources (DERs) are gaining prominence due to their advantages in improving energy efficiency, reducing carbon emissions, and enhancing grid resilience. Despite the increasing deployment, the potential of DERs has yet to be fully explored and exploited. A fundamental question restrains the management of numerous DERs in large-scale power systems, "How should DER data be securely processed and DER operations be efficiently optimized?" To address this question, this paper considers two critical issues, namely privacy for processing DER data and scalability in optimizing DER operations, then surveys existing and emerging solutions from a multi-agent framework perspective. In the context of scalability, this paper reviews state-of-the-art research that relies on parallel control, optimization, and learning within distributed and/or decentralized information exchange…
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Taxonomy
TopicsSmart Grid Security and Resilience · Smart Grid Energy Management
