TY - JOUR
T1 - Predict+Optimize Problem in Renewable Energy Scheduling
AU - Bergmeir, Christoph
AU - de Nijs, Frits
AU - Genov, Evgenii
AU - Sriramulu, Abishek
AU - Abolghasemi, Mahdi
AU - Bean, Richard
AU - Betts, John
AU - Bui, Q
AU - Dinh, Nam Trong
AU - Einecke, Nils
AU - Esmaeilbeigi, Rasul
AU - Ferraro, Scott
AU - Galketiya, Priya
AU - Glasgow, Robert
AU - Godahewa, Rakshitha
AU - Kang, Yanfei
AU - Limmer, Steffen
AU - Magdalena, Luis
AU - Montero-Manso, Pablo
AU - Peralta, Daniel
AU - Kumar, Yogesh Pipada Sunil
AU - Rosales-Pérez, Alejandro
AU - Ruddick, Julian
AU - Stratigakos, Akylas
AU - Stuckey, Peter
AU - Tack, Guido
AU - Triguero, Isaac
AU - Yuan, Rui
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2025
Y1 - 2025
N2 - Predict+Optimize frameworks integrate forecasting and optimization to address real-world challenges such as renewable energy scheduling, where variability and uncertainty are critical factors. This paper benchmarks solutions from the IEEE-CIS Technical Challenge on Predict+Optimize for Renewable Energy Scheduling, focusing on forecasting renewable production and demand and optimizing energy cost. The competition attracted 49 participants in total. The top-ranked method employed stochastic optimization using LightGBM ensembles, and achieved at least a 2% reduction in energy costs compared to deterministic approaches, demonstrating that the most accurate point forecast does not necessarily guarantee the best performance in downstream optimization. The published data and problem setting establish a benchmark for further research into integrated forecasting-optimization methods for energy systems, highlighting the importance of considering forecast uncertainty in optimization models to achieve cost-effective and reliable energy management. The novelty of this work lies in its comprehensive evaluation of Predict+Optimize methodologies applied to a real-world renewable energy scheduling problem, providing insights into the scalability, generalizability, and effectiveness of the proposed solutions. Potential applications extend beyond energy systems to any domain requiring integrated forecasting and optimization, such as supply chain management, transportation planning, and financial portfolio optimization.
AB - Predict+Optimize frameworks integrate forecasting and optimization to address real-world challenges such as renewable energy scheduling, where variability and uncertainty are critical factors. This paper benchmarks solutions from the IEEE-CIS Technical Challenge on Predict+Optimize for Renewable Energy Scheduling, focusing on forecasting renewable production and demand and optimizing energy cost. The competition attracted 49 participants in total. The top-ranked method employed stochastic optimization using LightGBM ensembles, and achieved at least a 2% reduction in energy costs compared to deterministic approaches, demonstrating that the most accurate point forecast does not necessarily guarantee the best performance in downstream optimization. The published data and problem setting establish a benchmark for further research into integrated forecasting-optimization methods for energy systems, highlighting the importance of considering forecast uncertainty in optimization models to achieve cost-effective and reliable energy management. The novelty of this work lies in its comprehensive evaluation of Predict+Optimize methodologies applied to a real-world renewable energy scheduling problem, providing insights into the scalability, generalizability, and effectiveness of the proposed solutions. Potential applications extend beyond energy systems to any domain requiring integrated forecasting and optimization, such as supply chain management, transportation planning, and financial portfolio optimization.
UR - https://www.scopus.com/pages/publications/105002567338
U2 - 10.1109/ACCESS.2025.3555393
DO - 10.1109/ACCESS.2025.3555393
M3 - Article
SN - 2169-3536
VL - 13
SP - 60064
EP - 60087
JO - IEEE Access
JF - IEEE Access
ER -