OCAPMLJul 17, 2019

Feature-driven Improvement of Renewable Energy Forecasting and Trading

arXiv:1907.07580v348 citations
AI Analysis

This work addresses the economic and operational challenges for renewable energy producers in electricity markets, though it is incremental as it builds on existing models with new features.

The paper tackles the problem of improving renewable energy forecasting and trading by proposing a data-driven newsvendor model that uses additional predictors like spatial wind forecasts. The method improves wind power forecast accuracy by several percentage points and significantly reduces balancing costs for producers.

Inspired from recent insights into the common ground of machine learning, optimization and decision-making, this paper proposes an easy-to-implement, but effective procedure to enhance both the quality of renewable energy forecasts and the competitive edge of renewable energy producers in electricity markets with a dual-price settlement of imbalances. The quality and economic gains brought by the proposed procedure essentially stem from the utilization of valuable predictors (also known as features) in a data-driven newsvendor model that renders a computationally inexpensive linear program. We illustrate the proposed procedure and numerically assess its benefits on a realistic case study that considers the aggregate wind power production in the Danish DK1 bidding zone as the variable to be predicted and traded. Within this context, our procedure leverages, among others, spatial information in the form of wind power forecasts issued by transmission system operators (TSO) in surrounding bidding zones and publicly available in online platforms. We show that our method is able to improve the quality of the wind power forecast issued by the Danish TSO by several percentage points (when measured in terms of the mean absolute or the root mean square error) and to significantly reduce the balancing costs incurred by the wind power producer.

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