Fault diagnosis and protection strategy based on spatio-temporal multi-agent reinforcement learning for active distribution system using phasor measurement units

被引:3
|
作者
Zhang, Tong [1 ]
Liu, Jianchang [2 ]
Wang, Honghai [2 ]
Li, Yong [3 ]
Wang, Nan [4 ]
Kang, Chengming [5 ]
机构
[1] Shenyang Univ Technol, Sch Artificial Intelligence, Shenyang Key Lab Informat Percept & Edge Comp, Shenliao West Rd 111, Shenyang, Peoples R China
[2] Northeastern Univ, Sch Informat Sci & Engn, Shenyang, Peoples R China
[3] Shenyang Univ Technol, Sch Elect Engn, Shenyang, Peoples R China
[4] Shenyang Univ, Coll Mech Engn, Shenyang 110000, Peoples R China
[5] Shenyang Pharmaceut Univ, Sch Pharmaceut Engn, Shenyang, Peoples R China
基金
中国博士后科学基金;
关键词
Phasor measurement unit; Active distribution network; Fault diagnosis and protection; Multi -agent reinforcement learning; Dynamic angles; ADAPTATION; FILTER;
D O I
10.1016/j.measurement.2023.113291
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Active distribution system (ADS) requires intelligent sensors to provide real-time data. Due to the harmonic distortion and sparse reward function, the multi-agent reinforcement learning strategy has the fuzzy characteristic and slow convergence. This work proposes a model-free spatio-temporal multi-agent reinforcement learning (STMARL) strategy for the spatio-temporal fault diagnosis and protection. The augmented-state extended Kalman filter tracks spatial-temporal sequences measured by phasor measurement unit (PMU) and feed into the diagnosis model. The supervised multi-residual generation learning (SMGL) model is constructed to diagnose the single-phase-to-ground fault. Based on spatio-temporal sequences, the SMGL diagnosis model integrates the ADS protection as a Markov decision process and the protection operation is quantified as the STMARL reward. In the hybrid multi-agent framework, the STMARL protection strategy converges faster based on the higher-level agent suggestion without the global reward. The STMARL protection strategy is validated in the IEEE 34-bus distribution test system with 10 PMUs. Comparing with the SOGI, WNN, Sarsa and DDPG algorithms, in the common fault conditions, the STMARL protection strategy shows better performance in the high dynamic environment with the response time 1.274 s and the diagnosis accuracy rate 97.125%. The STMARL diagnosis and protection strategy guides ADS in a stable operation coordinate with all PMUs, which lays foundation for the synchronous measurement application in the smart grid.
引用
收藏
页数:12
相关论文
共 42 条
  • [1] Hierarchical Coordination Multi-Agent Reinforcement Learning With Spatio-Temporal Abstraction
    Ma, Tinghuai
    Peng, Kexing
    Rong, Huan
    Qian, Yurong
    Al-Nabhan, Najla
    [J]. IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTATIONAL INTELLIGENCE, 2024, 8 (01): : 533 - 547
  • [2] A Multi-Agent System Based Fault Diagnosis for Active Distribution Systems
    Tian, Fangyuan
    Wen, Fushuan
    Wang, Xiaolei
    Xue, Yusheng
    Salam, Md. Abdus
    [J]. 2016 IEEE INNOVATIVE SMART GRID TECHNOLOGIES - ASIA (ISGT-ASIA), 2016, : 1110 - 1114
  • [3] STMARL: A Spatio-Temporal Multi-Agent Reinforcement Learning Approach for Cooperative Traffic Light Control
    Wang, Yanan
    Xu, Tong
    Niu, Xin
    Tan, Chang
    Chen, Enhong
    Xiong, Hui
    [J]. IEEE TRANSACTIONS ON MOBILE COMPUTING, 2022, 21 (06) : 2228 - 2242
  • [4] Multi-agent Deep Reinforcement Learning with Spatio-Temporal Feature Fusion for Traffic Signal Control
    Du, Xin
    Wang, Jiahai
    Chen, Siyuan
    Liu, Zhiyue
    [J]. MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES, ECML PKDD 2021: APPLIED DATA SCIENCE TRACK, PT IV, 2021, 12978 : 470 - 485
  • [5] Inducing Stackelberg Equilibrium through Spatio-Temporal Sequential Decision-Making in Multi-Agent Reinforcement Learning
    Zhang, Bin
    Li, Lijuan
    Xu, Zhiwei
    Li, Dapeng
    Fan, Guoliang
    [J]. PROCEEDINGS OF THE THIRTY-SECOND INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, IJCAI 2023, 2023, : 353 - 361
  • [6] Cooperative countermeasure strategy based on active risk defense multi-agent reinforcement learning
    Sun H.-H.
    Hu C.-H.
    Zhang J.-G.
    [J]. Kongzhi yu Juece/Control and Decision, 2023, 38 (05): : 1420 - 1429
  • [7] Multi-agent based coordinated protection systems for distribution feeder fault diagnosis and reconfiguration
    Rahman, M. S.
    Isherwood, N.
    Oo, A. M. T.
    [J]. INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2018, 97 : 106 - 119
  • [8] A New Multi-agent System for Video Objects Segmentation and Tracking Based on Spatio-temporal Descriptor
    Chakroun, Mohamed
    Wali, Ali
    Alimi, Adel M.
    [J]. PROCEEDINGS OF THE 2012 INTERNATIONAL CONFERENCE ON ADVANCES IN COMPUTING, COMMUNICATIONS AND INFORMATICS (ICACCI'12), 2012, : 1214 - 1218
  • [9] Decentralized Cooperative Protection Strategy for Smart Distribution Grid Using Multi-Agent System
    Daryani, Matin Jamaliyan
    Karkevandi, Alireza Esmaeili
    [J]. 2018 6TH INTERNATIONAL ISTANBUL SMART GRIDS AND CITIES CONGRESS AND FAIR (ICSG ISTANBUL 2018), 2018, : 134 - 138
  • [10] Volt-VAR Control in Active Distribution Networks Using Multi-Agent Reinforcement Learning
    Su, Shi
    Zhan, Haozhe
    Zhang, Luxi
    Xie, Qingyang
    Si, Ruiqi
    Dai, Yuxin
    Gao, Tianlu
    Wu, Linhan
    Zhang, Jun
    Shang, Lei
    [J]. ELECTRONICS, 2024, 13 (10)