Intelligent adjustment for power system operation mode based on deep reinforcement learning  

在线阅读下载全文

作  者:Wei Hu Ning Mi Shuang Wu Huiling Zhang Zhewen Hu Lei Zhang 

机构地区:[1]Department of Electrical Engineering,Tsinghua University,Beijing 100084,China [2]State Grid Ningxia Electric Power Co.Ltd.,Ningxia 750001,China [3]North China Branch of State Grid Corporation of China,Beijing 100053,China [4]College of Electrical Engineering and New Energy,China Three Gorges University,Hubei 443002,China

出  处:《iEnergy》2024年第4期252-260,共9页电力能源汇刊(英文)

摘  要:Power flow adjustment is a sequential decision problem.The operator makes decisions to ensure that the power flow meets the system's operational constraints,thereby obtaining a typical operating mode power flow.However,this decision-making method relies heavily on human experience,which is inefficient when the system is complex.In addition,the results given by the current evaluation system are difficult to directly guide the intelligent power flow adjustment.In order to improve the efficiency and intelligence of power flow adjustment,this paper proposes a power flow adjustment method based on deep reinforcement learning.Combining deep reinforcement learning theory with traditional power system operation mode analysis,the concept of region mapping is proposed to describe the adjustment process,so as to analyze the process of power flow calculation and manual adjustment.Considering the characteristics of power flow adjustment,a Markov decision process model suitable for power flow adjustment is constructed.On this basis,a double Q network learning method suitable for power flow adjustment is proposed.This method can adjust the power flow according to the set adjustment route,thus improving the intelligent level of power flow adjustment.The method in this paper is tested on China Electric Power Research Institute(CEPRI)test system.

关 键 词:Operation mode adjustment double Q network learning region mapping deep reinforcement learning. 

分 类 号:TP3[自动化与计算机技术—计算机科学与技术]

 

参考文献:

正在载入数据...

 

二级参考文献:

正在载入数据...

 

耦合文献:

正在载入数据...

 

引证文献:

正在载入数据...

 

二级引证文献:

正在载入数据...

 

同被引文献:

正在载入数据...

 

相关期刊文献:

正在载入数据...

相关的主题
相关的作者对象
相关的机构对象