Back to Search Start Over

Decentralized coordination of distributed energy resources through local energy markets and deep reinforcement learning

Authors :
Daniel C. May
Matthew Taylor
Petr Musilek
Source :
Energy and AI, Vol 18, Iss , Pp 100446- (2024)
Publication Year :
2024
Publisher :
Elsevier, 2024.

Abstract

As the energy landscape evolves towards sustainability, the accelerating integration of distributed energy resources poses challenges to the operability and reliability of the electricity grid. One significant aspect of this issue is the notable increase in net load variability at the grid edge.Transactive energy, implemented through local energy markets, has recently garnered attention as a promising solution to address the grid challenges in the form of decentralized, indirect demand response on a community level. Model-free control approaches, such as deep reinforcement learning (DRL), show promise for the decentralized automation of participation within this context. Existing studies at the intersection of transactive energy and model-free control primarily focus on socioeconomic and self-consumption metrics, overlooking the crucial goal of reducing community-level net load variability.This study addresses this gap by training a set of deep reinforcement learning agents to automate end-user participation in an economy-driven, autonomous local energy market (ALEX). In this setting, agents do not share information and only prioritize individual bill optimization. The study unveils a clear correlation between bill reduction and reduced net load variability. The impact on net load variability is assessed over various time horizons using metrics such as ramping rate, daily and monthly load factor, as well as daily average and total peak export and import on an open-source dataset.To examine the performance of the proposed DRL method, its agents are benchmarked against a near-optimal dynamic programming method, using a no-control scenario as the baseline. The dynamic programming benchmark reduces average daily import, export, and peak demand by 22.05%, 83.92%, and 24.09%, respectively. The RL agents demonstrate comparable or superior performance, with improvements of 21.93%, 84.46%, and 27.02% on these metrics. This demonstrates that DRL can be effectively employed for such tasks, as they are inherently scalable with near-optimal performance in decentralized grid management.

Details

Language :
English
ISSN :
26665468
Volume :
18
Issue :
100446-
Database :
Directory of Open Access Journals
Journal :
Energy and AI
Publication Type :
Academic Journal
Accession number :
edsdoj.3f2f09d30d994cab957222b4cf6d227b
Document Type :
article
Full Text :
https://doi.org/10.1016/j.egyai.2024.100446