An inertial control method for large-scale wind farm based on hierarchical distributed hybrid deep-reinforcement learning

被引:0
|
作者
Han, Ji [1 ]
Chen, Zhe [2 ]
机构
[1] Harbin Inst Technol Weihai, Coll New Energy, Weihai 264200, Peoples R China
[2] Aalborg Univ, Dept Energy & Technol, DK-9220 Aalborg, Denmark
关键词
Inertial control; Wind farm; Hierarchical distributed control; Deep -reinforcement learning; Consensus control; FREQUENCY REGULATION; COORDINATED CONTROL; CONTROL SCHEME; SUPPORT;
D O I
10.1016/j.jclepro.2024.142034
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Wind farm (WF) is gradually required to provide inertial support during frequency events nowadays. Existing WF inertial control methods have exhibited limitations in parameter estimation and optimal control parameter tuning under variable operating conditions. Moreover, traditional model -based methods suffer from computational efficiency problems due to their reliance on repeated iterations or derivative computations in optimization process. Thus, this paper proposes an inertial control method for large-scale WF based on hierarchical distributed hybrid deep -reinforcement learning (HDH-DRL). Firstly, the control objectives for the inertial control are defined, and are decomposed on the basis of wind turbines (WTs) division. Next, this paper presents a HDH-DRL based inertial control framework consisting of two levels. The upper -level control is achieved by the hybrid multi -agent DRL (HMA-DRL) algorithm with hybrid action exploration mechanism and multi -agent coordination. The consensus based lower -level control aims to achieve the consensus convergence of the control through the locally distributed interaction among WTs. Finally, the inertial control processes of the model are exhibited; the influences of DRL algorithms on the control are discussed; the computational speed and solution accuracy of the proposed method are compared with the model -based methods; the multi -scenario applicability and performance in local communication failures of the model are analyzed. The results demonstrate that the proposed method significantly improves the active power response and frequency stability, achieving rapid consensus convergence with a power deviation below 0.3%, surpassing traditional control methods by at least 0.2%; also, it demonstrates superior performance across various scenarios, including transient and steady-state conditions, with frequency enhancements up to 0.30% and exceptional stability under different wind conditions and communication disruptions.
引用
收藏
页数:26
相关论文
共 50 条
  • [1] Distributed Hierarchical Deep Reinforcement Learning for Large-Scale Grid Emergency Control
    Chen, Yixi
    Zhu, Jizhong
    Liu, Yun
    Zhang, Le
    Zhou, Jialin
    [J]. IEEE TRANSACTIONS ON POWER SYSTEMS, 2024, 39 (02) : 4446 - 4458
  • [2] Deep Reinforcement Learning for Large-Scale Epidemic Control
    Libin, Pieter J. K.
    Moonens, Arno
    Verstraeten, Timothy
    Perez-Sanjines, Fabian
    Hens, Niel
    Lemey, Philippe
    Nowe, Ann
    [J]. MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES: APPLIED DATA SCIENCE AND DEMO TRACK, ECML PKDD 2020, PT V, 2021, 12461 : 155 - 170
  • [3] Optimization smoothing control of large-scale wind farm based on hybrid energy storage
    Chen, Qian
    Chen, Xiaoyi
    Nai, Lingchuan
    Li, Zhuoran
    Liao, Yangfan
    Xu, Jian
    [J]. 2014 INTERNATIONAL CONFERENCE ON POWER SYSTEM TECHNOLOGY (POWERCON), 2014, : 2871 - 2877
  • [4] Hierarchical power control of a large-scale wind farm by using a data-driven optimization method
    Di, Pengyu
    Xiao, Xiaoqing
    Pan, Feng
    Yang, Yuyao
    Zhang, Xiaoshun
    [J]. PLOS ONE, 2023, 18 (09):
  • [5] Tractable large-scale deep reinforcement learning
    Sarang, Nima
    Poullis, Charalambos
    [J]. COMPUTER VISION AND IMAGE UNDERSTANDING, 2023, 232
  • [6] Deep reinforcement learning for scheduling in large-scale networked control systems
    Redder, Adrian
    Ramaswamy, Arunselvan
    Quevedo, Daniel E.
    [J]. IFAC PAPERSONLINE, 2019, 52 (20): : 333 - 338
  • [7] Distributed agent-based deep reinforcement learning for large scale traffic signal control
    Wu, Qiang
    Wu, Jianqing
    Shen, Jun
    Du, Bo
    Telikani, Akbar
    Fahmideh, Mahdi
    Liang, Chao
    [J]. KNOWLEDGE-BASED SYSTEMS, 2022, 241
  • [8] Large-scale wind farm control using distributed economic model predictive scheme
    Kong, Xiaobing
    Ma, Lele
    Wang, Ce
    Guo, Shifan
    Abdelbaky, Mohamed Abdelkarim
    Liu, Xiangjie
    Lee, Kwang Y.
    [J]. RENEWABLE ENERGY, 2022, 181 : 581 - 591
  • [9] Hierarchical Mean-Field Deep Reinforcement Learning for Large-Scale Multiagent Systems
    Yu, Chao
    [J]. THIRTY-SEVENTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, VOL 37 NO 10, 2023, : 11744 - 11752
  • [10] An Adaptive Metadata Management Scheme Based on Deep Reinforcement Learning for Large-Scale Distributed File Systems
    Huang, Xiuqi
    Gao, Yuanning
    Zhou, Xinyi
    Gao, Xiaofeng
    Chen, Guihai
    [J]. IEEE-ACM TRANSACTIONS ON NETWORKING, 2023, 31 (06) : 2840 - 2853