Litcius/Paper detail

Consensus Multi-Agent Reinforcement Learning for Volt-VAR Control in Power Distribution Networks

Yuanqi Gao, Wang Wei, Nanpeng Yu

2021IEEE Transactions on Smart Grid171 citationsDOI

Abstract

Volt-VAR control (VVC) is a critical application in active distribution network management system to reduce network losses and improve voltage profile. To remove dependency on inaccurate and incomplete network models and enhance resiliency against communication or controller failure, we propose consensus multi-agent deep reinforcement learning algorithm to solve the VVC problem, which determines the operation schedules for voltage regulators, on-load tap changers, and capacitors. The VVC problem is formulated as a networked multi-agent Markov decision process, which is solved using the maximum entropy reinforcement learning framework and a novel communication-efficient consensus strategy. The proposed algorithm allows individual agents to learn a group control policy using local rewards. Numerical studies on IEEE distribution test feeders show that our proposed algorithm matches the performance of single-agent reinforcement learning benchmark. In addition, the proposed algorithm is shown to be communication efficient and resilient.

Topics & Concepts

Reinforcement learningComputer scienceMarkov decision processBenchmark (surveying)Markov processController (irrigation)AC powerControl theory (sociology)Mathematical optimizationControl (management)VoltageArtificial intelligenceEngineeringMathematicsBiologyGeographyStatisticsElectrical engineeringGeodesyAgronomyOptimal Power Flow DistributionSmart Grid Energy ManagementMicrogrid Control and Optimization
Consensus Multi-Agent Reinforcement Learning for Volt-VAR Control in Power Distribution Networks | Litcius