Regional-privacy-preserving operation of networked microgrids: edge-cloud cooperative learning with differentiated policies

Privacy preservation and coordination of networked microgrids (NMGs) are conventionally contradictory objectives. To address this, this paper proposes a regional-privacy-preserving operation method for NMGs that collaboratively learns differentiated policy (DP) of each microgrid (MG) at the edge by...

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Main Authors: Xia, Qinqin, Wang, Yu, Zou, Yao, Yan, Ziming, Zhou, Niancheng, Chi, Yuan, Wang, Qianggang
Other Authors: School of Electrical and Electronic Engineering
Format: Article
Language:English
Published: 2024
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Online Access:https://hdl.handle.net/10356/180302
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1803022024-10-01T02:06:39Z Regional-privacy-preserving operation of networked microgrids: edge-cloud cooperative learning with differentiated policies Xia, Qinqin Wang, Yu Zou, Yao Yan, Ziming Zhou, Niancheng Chi, Yuan Wang, Qianggang School of Electrical and Electronic Engineering Engineering Federated reinforcement learning Energy data privacy Privacy preservation and coordination of networked microgrids (NMGs) are conventionally contradictory objectives. To address this, this paper proposes a regional-privacy-preserving operation method for NMGs that collaboratively learns differentiated policy (DP) of each microgrid (MG) at the edge by using a designed federated deep reinforcement learning (FDRL) algorithm. In the proposed method, a scalable edge-cloud cooperative framework is designed to integrate multiple independently controlled regional MGs into the existing distribution network (DN) without affecting its operation model. With the proposed framework, MGs can collaboratively optimize the local operation costs and global DN voltage by the respective regional control agent which controls local distributed energy resources power based on the decentralized partially observable Markov decision process. The proposed framework models differentiated private neural network (NN) models for each MG agent at the edge to efficiently address diverse regional tasks, and models a global NN at the cloud server to achieve collaborative training. The differentiated local policy of each MG control agent is learned via edge computing with the proposed DP-FDRL algorithm, which solves different regional tasks, achieves global coordination, and avoids exchanging the raw energy data among different agents simultaneously. By only transiting the global model parameters during the coordinated training process, the private NN models of each agent at the edge are also preserved to the MGs locally. Numerical studies validate that the proposed framework can effectively handle the complex privacy-preserving NMGs coordinated operation problem with collaborative learning through the DP-FDRL algorithm. This work is supported by science and technology projects of State Grid Corporation of China (Project No. : 5400-202399376A-2-2-ZB). 2024-10-01T02:06:39Z 2024-10-01T02:06:39Z 2024 Journal Article Xia, Q., Wang, Y., Zou, Y., Yan, Z., Zhou, N., Chi, Y. & Wang, Q. (2024). Regional-privacy-preserving operation of networked microgrids: edge-cloud cooperative learning with differentiated policies. Applied Energy, 370, 123611-. https://dx.doi.org/10.1016/j.apenergy.2024.123611 0306-2619 https://hdl.handle.net/10356/180302 10.1016/j.apenergy.2024.123611 2-s2.0-85195415034 370 123611 en Applied Energy © 2024 Elsevier Ltd. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering
Federated reinforcement learning
Energy data privacy
spellingShingle Engineering
Federated reinforcement learning
Energy data privacy
Xia, Qinqin
Wang, Yu
Zou, Yao
Yan, Ziming
Zhou, Niancheng
Chi, Yuan
Wang, Qianggang
Regional-privacy-preserving operation of networked microgrids: edge-cloud cooperative learning with differentiated policies
description Privacy preservation and coordination of networked microgrids (NMGs) are conventionally contradictory objectives. To address this, this paper proposes a regional-privacy-preserving operation method for NMGs that collaboratively learns differentiated policy (DP) of each microgrid (MG) at the edge by using a designed federated deep reinforcement learning (FDRL) algorithm. In the proposed method, a scalable edge-cloud cooperative framework is designed to integrate multiple independently controlled regional MGs into the existing distribution network (DN) without affecting its operation model. With the proposed framework, MGs can collaboratively optimize the local operation costs and global DN voltage by the respective regional control agent which controls local distributed energy resources power based on the decentralized partially observable Markov decision process. The proposed framework models differentiated private neural network (NN) models for each MG agent at the edge to efficiently address diverse regional tasks, and models a global NN at the cloud server to achieve collaborative training. The differentiated local policy of each MG control agent is learned via edge computing with the proposed DP-FDRL algorithm, which solves different regional tasks, achieves global coordination, and avoids exchanging the raw energy data among different agents simultaneously. By only transiting the global model parameters during the coordinated training process, the private NN models of each agent at the edge are also preserved to the MGs locally. Numerical studies validate that the proposed framework can effectively handle the complex privacy-preserving NMGs coordinated operation problem with collaborative learning through the DP-FDRL algorithm.
author2 School of Electrical and Electronic Engineering
author_facet School of Electrical and Electronic Engineering
Xia, Qinqin
Wang, Yu
Zou, Yao
Yan, Ziming
Zhou, Niancheng
Chi, Yuan
Wang, Qianggang
format Article
author Xia, Qinqin
Wang, Yu
Zou, Yao
Yan, Ziming
Zhou, Niancheng
Chi, Yuan
Wang, Qianggang
author_sort Xia, Qinqin
title Regional-privacy-preserving operation of networked microgrids: edge-cloud cooperative learning with differentiated policies
title_short Regional-privacy-preserving operation of networked microgrids: edge-cloud cooperative learning with differentiated policies
title_full Regional-privacy-preserving operation of networked microgrids: edge-cloud cooperative learning with differentiated policies
title_fullStr Regional-privacy-preserving operation of networked microgrids: edge-cloud cooperative learning with differentiated policies
title_full_unstemmed Regional-privacy-preserving operation of networked microgrids: edge-cloud cooperative learning with differentiated policies
title_sort regional-privacy-preserving operation of networked microgrids: edge-cloud cooperative learning with differentiated policies
publishDate 2024
url https://hdl.handle.net/10356/180302
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