Abstract
The increasing integration of renewable energy sources like wind and solar poses significant challenges to secure and stable grid operation. Energy storage systems, particularly pumped storage hydro (PSH), play a crucial role in balancing power supply and demand. Traditional analytical studies of PSH economic dispatch problems often assume zero lower bounds for generating and pumping rates to simplify analysis and derive analytical solutions for multi-period optimization problems. However, the inherent mechanical design constraints of PSH require non-zero minimum flow rates for efficient operation. We analyze two scenarios, merchants having PSH only and merchants having both PSH and wind farms. In the PSH-only scenario, four analytically determined State of Charge (SOC) reference points divide the SOC range into five sub-regions, each corresponding to a specific optimal decision. In the co-optimized PSH and wind farms scenario, five SOC reference points split the SOC range into six sub-regions. By simply comparing the current SOC with these reference points in the next period, users can derive unique, analytically optimal economic dispatch decisions for each period. Our findings indicate that non-zero minimum capacity constraints significantly influence the optimal dispatch strategy, increasing the likelihood of PSH systems remaining idle and potentially reducing arbitrage profits. We validate our proposed approach using both synthesized data and real data from the Midcontinent Independent System Operator, demonstrating its practical applicability. This methodology represents a significant advancement in energy storage dispatch strategies by providing scalable, analytically optimal solutions for multi-period optimization problems, enhancing economic efficiency in the management of energy storage systems.
Recommended Citation
J. Liu et al., "Analytical Dispatch Strategies for Pumped Storage Hydro: A Conditional Dynamic Programming Approach to Discontinuous Multi-period Optimization Problems," Applied Energy, vol. 383, article no. 125255, Elsevier, Apr 2025.
The definitive version is available at https://doi.org/10.1016/j.apenergy.2024.125255
Department(s)
Electrical and Computer Engineering
Second Department
Computer Science
Keywords and Phrases
Discontinuous constraints; Dynamic programming; Economic dispatch; Energy storage; Optimization; Pumped storage hydropower; Renewable energy sources; State of charge
International Standard Serial Number (ISSN)
0306-2619
Document Type
Article - Journal
Document Version
Citation
File Type
text
Language(s)
English
Rights
© 2025 Elsevier, All rights reserved.
Publication Date
01 Apr 2025
Comments
National Science Foundation, Grant 2339956