Reinforcement Learning to Enhance Optimal Operation of Resilient Community Energy Systems

Zhuorui Li, Xu Han, Jing Wang, Wangda Zuo

Research output: Contribution to conferencePaper

Abstract

This paper presents a novel model-free multi-agent Reinforcement Learning (RL) control method to enhance the resilience of community energy systems in island mode, which coordinates multiple objectives without the necessity of identifying system models that require expert knowledge. Specifically, a community-level coordinator agent is designed to allocate renewable energy resources among different buildings, and multiple building-level agents are developed to optimize load schedules based on limited energy resources and requirements of building loads and occupants’ comfort. In a two-day evaluation, our RL approach demonstrated a similar performance against MPC without requiring system models and formulation of optimization problems as required in MPC.
Original languageAmerican English
Pages668-678
Number of pages11
StatePublished - 2024
EventSimBuild Conference - Denver, Colorado
Duration: 21 May 202423 May 2024

Conference

ConferenceSimBuild Conference
CityDenver, Colorado
Period21/05/2423/05/24

NREL Publication Number

  • NREL/CP-5500-91288

Keywords

  • PV power distribution
  • reinforcement learning
  • resilient community

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