CMStatistics 2023: Start Registration
View Submission - CFE
A1825
Title: Day-ahead probability forecasting for redispatch Authors:  Alexandra Conda - The Bucharest University of Economic Studies (Romania) [presenting]
Alla Petukhina - HTW Berlin (Germany)
Awdesch Melzer - Humboldt University zu Berlin (Germany)
Mai Phan - University of Kaiserslautern-Landau & HTW Berlin (Germany)
Maria Basangova - HTW Berlin (Germany)
Sami Alkhoury - HWR Berlin (Germany)
Vlad Bolovaneanu - Bucharest Academy of Economic Studies (Romania)
Abstract: The purpose is to advance a data-driven, day-ahead forecasting model for assessing the probability, direction, and scale of electrical congestions within Germany's complex power grid. Utilizing state-of-the-art machine learning algorithms, the model is specifically designed to operate on an hourly basis, thereby offering timely insights for grid management. The analysis uncovers compelling evidence that key exogenous variables, such as real-time meteorological conditions, electricity supply-demand indicators, and Brent oil price fluctuations, can be harnessed to make highly reliable predictions concerning grid congestion events. The model has the potential to serve as a useful resource for transmission system operators (TSOs) and policymakers interested in grid management and cost mitigation efforts.