Agent-based modeling of the demand-side system reserve provision
Authored by Edin Lakic, Gasper Artac, Andrej F Gubina
Date Published: 2015
DOI: 10.1016/j.epsr.2015.03.003
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Abstract
Market simulators based on agent-based modeling techniques are
frequently used for electricity market analyses. However, the majority
of such analyses focus on the electricity markets bidding strategies on
generation-side rather than on the demand-side. Meanwhile, the behavior
of the demand-side in the system reserve provision has been less
investigated. This paper presents a novel system reserve provision agent
which is incorporated into a stochastic market optimization problem. The
agent for the system reserve provision uses the SA-Q-learning algorithm
to learn how much system reserve to offer at different times, while
seeking to increase the ratio between their economic costs and benefits.
The agent and its learning process are described in detail and are
tested on the IEEE Reliability test system. It has been shown that
incorporating the demand-side market strategies using the proposed agent
improves the performance and the economic outcome for the consumers. (C)
2015 Elsevier B.V. All rights reserved.
Tags
Challenges
Power engineering applications
Wholesale electricity market
Multiagent
systems