Hierarchical Task Planning for Power Line Flow RegulationOACSTPCDEI
The complexity and uncertainty in power systems cause great challenges to controlling power grids.As a popular data-driven technique,deep reinforcement learning(DRL)attracts attention in the control of power grids.However,DRL has some inherent drawbacks in terms of data efficiency and explainability.This paper presents a novel hierarchical task planning(HTP)approach,bridging planning and DRL,to the task of power line flow regulation.First,we introduce a threelevel task hierarchy to model the task and model the sequence of task units on each level as a task planning-Markov decision processes(TP-MDPs).Second,we model the task as a sequential decision-making problem and introduce a higher planner and a lower planner in HTP to handle different levels of task units.In addition,we introduce a two-layer knowledge graph that can update dynamically during the planning procedure to assist HTP.Experimental results conducted on the IEEE 118-bus and IEEE 300-bus systems demonstrate our HTP approach outperforms proximal policy optimization,a state-of-the-art deep reinforcement learning(DRL)approach,improving efficiency by 26.16%and 6.86%on both systems.
Chenxi Wang;Youtian Du;Yanhao Huang;Yuanlin Chang;Zihao Guo;
the Ministry of Education Key Lab for Intelligent Networks and Network Security,Xi''an Jiaotong University,Xi''an 713599,Chinathe State Key Laboratory of Power Grid Safety and Energy Conservation,China Electric Power Research Institute,Beijing 100192,China
动力与电气工程
Knowledge graphpower line flow regulation reinforcement learningtask planning
《CSEE Journal of Power and Energy Systems》 2024 (001)
P.29-40 / 12
supported in part by the National Key R&D Program(2018AAA0101501)of China;the science and technology project of SGCC(State Grid Corporation of China).
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