Parallel deep reinforcement learning-based power flow state adjustment considering static stability constraint

被引:6
作者
Wang Tianjing [1 ]
Tang Yong [1 ]
机构
[1] China Elect Power Res Inst, Lab Power Grid Safety & Energy Conservat, 15 Xiaoying East Rd, Beijing, Peoples R China
关键词
power system stability; decision making; learning (artificial intelligence); power system security; load flow; power grids; Markov processes; parallel deep reinforcement learning-based power flow state adjustment; static stability constraint; large-scale power grid; power system operation state adjustment method; Markov decision-making process; adjustment target; power flow state adjustment strategy; adjustment process; parallel deep reinforcement learning model; power flow adjustment; realises parallel adjustment; reinforcement learning strategy; deep learning network; actual power grid; SECURITY; CONTROLLER;
D O I
10.1049/iet-gtd.2020.1377
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
To solve the problem of manpower and time consumption caused by power flow state adjustment in a large-scale power grid, a power system operation state adjustment method considering the static stability constraint based on parallel deep reinforcement learning is proposed. By introducing the process of adjusting the power flow state that satisfies static stability, the Markov decision-making process of adjusting power flow is constructed. Then, based on the positioning of the adjustment target, the selection of actionable devices and the calculation of the amount of action, a power flow state adjustment strategy is developed. The adjustment process is accelerated through sensitivity, transfer ratio and load margin. Then, a parallel deep reinforcement learning model is established, and it maps actions to power flow adjustment to form a pair of generator actions and realises parallel adjustment of multi-sectional objectives. In addition, the reinforcement learning strategy and the deep learning network are improved to promote learning efficiency. Finally, the New England 39-bus standard system and actual power grid are used to verify the effectiveness of the method.
引用
收藏
页码:6276 / 6284
页数:9
相关论文
共 20 条
[1]   Fuzzy based controller for dynamic Unified Power Flow Controller to enhance power transfer capability [J].
Ahmad, Shameem ;
Albatsh, Fadi M. ;
Mekhilef, Saad ;
Mokhlis, Hazlie .
ENERGY CONVERSION AND MANAGEMENT, 2014, 79 :652-665
[2]   Robust Scheduling for Wind Integrated Energy Systems Considering Gas Pipeline and Power Transmission N-1 Contingencies [J].
Bai, Linquan ;
Li, Fangxing ;
Jiang, Tao ;
Jia, Hongjie .
IEEE TRANSACTIONS ON POWER SYSTEMS, 2017, 32 (02) :1582-1584
[3]  
Chen J., 2018, P INT EL DISTR TIANJ
[4]   Optimal Selection of Phase Shifting Transformer Adjustment in Optimal Power Flow [J].
Ding, Tao ;
Bo, Rui ;
Bie, Zhaohong ;
Wang, Xifan .
IEEE TRANSACTIONS ON POWER SYSTEMS, 2017, 32 (03) :2464-2465
[5]   Power Flow Analysis Considering Automatic Generation Control for Multi-Area Interconnection Power Networks [J].
Dong, Xiaoming ;
Sun, Hua ;
Wang, Chengfu ;
Yun, Zhihao ;
Wang, Yiming ;
Zhao, Penghui ;
Ding, Yuanyuan ;
Wang, Yong .
IEEE TRANSACTIONS ON INDUSTRY APPLICATIONS, 2017, 53 (06) :5200-5208
[6]  
Fujimoto S., ADDRESSING FUNCTION
[7]   Cyclic security analysis for security constrained optimal power flow [J].
Harsan, H ;
Hadjsaid, N ;
Pruvot, P .
IEEE TRANSACTIONS ON POWER SYSTEMS, 1997, 12 (02) :948-953
[8]   N-1 security in optimal power flow control applied to limited areas [J].
Hug-Glanzmann, G. ;
Andersson, G. .
IET GENERATION TRANSMISSION & DISTRIBUTION, 2009, 3 (02) :206-215
[9]   A Novel Iterative Contingency Filtering Approach to Corrective Security-Constrained Optimal Power Flow [J].
Jiang, Quanyuan ;
Xu, Kai .
IEEE TRANSACTIONS ON POWER SYSTEMS, 2014, 29 (03) :1099-1109
[10]   Network State-Based Algorithm Selection for Power Flow Management Using Machine Learning [J].
King, James E. ;
Jupe, Samuel C. E. ;
Taylor, Philip C. .
IEEE TRANSACTIONS ON POWER SYSTEMS, 2015, 30 (05) :2657-2664