An Artificial Intelligence Framework for Bidding Optimization with Uncertainty in Multiple Frequency Reserve Markets
Thimal Kempitiya, Seppo Sierla, Daswin De Silva, Matti Yli-Ojanpera,, Damminda Alahakoon, Valeriy Vyatkin

TL;DR
This paper introduces an AI-based framework for optimizing bidding strategies in multiple frequency reserve markets, addressing uncertainty and maximizing revenue in a smart grid with renewable energy sources.
Contribution
It presents a generalized market model, three novel bidding strategies, and an AI framework with uncertainty metrics, evaluated through a case study in Finland.
Findings
The AI framework improves revenue generation.
Rescheduling loads enhances reserve availability.
Strategies effectively capitalize on price peaks.
Abstract
The global ambitions of a carbon-neutral society necessitate a stable and robust smart grid that capitalises on frequency reserves of renewable energy. Frequency reserves are resources that adjust power production or consumption in real time to react to a power grid frequency deviation. Revenue generation motivates the availability of these resources for managing such deviations. However, limited research has been conducted on data-driven decisions and optimal bidding strategies for trading such capacities in multiple frequency reserves markets. We address this limitation by making the following research contributions. Firstly, a generalised model is designed based on an extensive study of critical characteristics of global frequency reserves markets. Secondly, three bidding strategies are proposed, based on this market model, to capitalise on price peaks in multi-stage markets. Two…
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