Arbitrage Tactics in the Local Markets via Hierarchical Multi-agent Reinforcement Learning
Haoyang Zhang, Mina Montazeri, Philipp Heer, Koen Kok, Nikolaos G. Paterakis

TL;DR
This paper presents a hierarchical multi-agent reinforcement learning framework enabling aggregators to perform arbitrage across multiple local energy markets, significantly increasing profits through coordinated strategic bidding.
Contribution
It introduces a novel HMARL algorithm that models arbitrage in a two-stage Markov game, enabling cross-market coordination for the first time.
Findings
Total profit increased by 40.6% on average.
Arbitrage strategy reduces costs in the LFM and balancing market.
Hierarchical MARL improves market efficiency and participant profitability.
Abstract
Strategic bidding tactics employed by prosumers in local markets, including the Local Electricity Market (LEM) and Local Flexibility Market (LFM), have attracted significant attention due to their potential to enhance economic benefits for market participants through optimized energy management and bidding. While existing research has explored strategic bidding in a single market with multi-agent reinforcement learning (MARL) algorithms, arbitrage opportunities across local markets remain unexplored. This paper introduces a hierarchical MARL (HMARL) algorithm designed to enable aggregator arbitrage across multiple local markets. The strategic behavior of these aggregators in local markets is modeled as a two-stage Markov game: the first stage involves the LEM, while the second stage encompasses both the LFM and the balancing market. To solve this two-stage Markov game, the HMARL…
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Taxonomy
TopicsComplex Systems and Time Series Analysis
