SYAIDec 23, 2024

Integrated Learning and Optimization for Congestion Management and Profit Maximization in Real-Time Electricity Market

arXiv:2412.18003v3h-index: 8
Originality Incremental advance
AI Analysis

This work addresses economic operation challenges for electricity market operators, though it appears incremental as it builds on existing optimization frameworks with integrated learning.

The authors tackled the problem of economic dispatch and DC optimal power flow in real-time electricity markets by developing integrated learning and optimization methodologies, resulting in reduced post-hoc penalties and line congestion with noticeable improvements compared to sequential approaches.

We develop novel integrated learning and optimization (ILO) methodologies to solve economic dispatch (ED) and DC optimal power flow (DCOPF) problems for better economic operation. The optimization problem for ED is formulated with load being an unknown parameter while DCOPF consists of load and power transfer distribution factor (PTDF) matrix as unknown parameters. PTDF represents the incremental variations of real power on transmission lines which occur due to real power transfers between two regions. These values represent a linearized approximation of power flows over the transmission lines. We develop novel ILO formulations to solve post-hoc penalties in electricity market and line congestion problems using ED and DCOPF optimization formulations. Our proposed methodologies capture the real-time electricity market and line congestion behavior to train the regret function which eventually train unknown loads at different buses and line PTDF matrix to achieve the afore-mentioned post-hoc goals. The proposed methodology is compared to sequential learning and optimization (SLO) which train load and PTDF forecasts for accuracy rather than economic operation. Our experimentation prove the superiority of ILO in minimizing the post-hoc penalties in electricity markets and minimizing the line congestion thereby improving the economic operation with noticeable amount.

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