Title :
Optimal Economical Schedule of Hydrogen-Based Microgrids With Hybrid Storage Using Model Predictive Control
Author :
Garcia-Torres, Felix ; Bordons, Carlos
Author_Institution :
Simulation & Control Unit, Centro Nac. del Hidrogeno, Puertollano, Spain
Abstract :
The electricity market rules determine the energy prices in the day-ahead market, matching offers from generators to bids from consumers. The unpredictability of renewable energy combined with the penalty deviations used in the regulation market makes it difficult for clean energy to play an important role in the electricity market. The high density of hydrogen as an energy storage system (ESS) appears to be one solution to the problems outlined. There is still not a perfect ESS, everyone has different limitations from the point of view of time autonomy, time response, degradation issues, or acquisition cost. The design of a hybrid energy storage management system emerges as a technological solution to the problems commented. The development of an optimal control for renewable energy microgrids with hybrid ESS is carried out using model predictive control (MPC). The MPC techniques allow maximizing the economical benefit of the microgrid, minimizing the degradation causes of each storage system, and fulfilling the different system constraints. In order to capture both continuous/discrete dynamics and switching between different operating conditions, the plant is modeled with the framework of mixed logic dynamic. The MPC problem is solved within mixed-integer quadratic programming.
Keywords :
distributed power generation; hydrogen storage; integer programming; optimal control; power generation economics; power generation scheduling; power markets; power system control; predictive control; quadratic programming; ESS; H2; MPC techniques; acquisition cost; day-ahead market; electricity market rules; energy prices; energy storage system; hybrid energy storage management system; hydrogen-based microgrids; mixed logic dynamic; mixed-integer quadratic programming; model predictive control; optimal control; optimal economical schedule; penalty deviations; regulation market; renewable energy microgrids; time autonomy; time response; Batteries; Degradation; Fuel cells; Hydrogen; Mathematical model; Microgrids; Predictive models; Energy management; Energy storage; Hydrogen; energy storage; hydrogen;
Journal_Title :
Industrial Electronics, IEEE Transactions on
DOI :
10.1109/TIE.2015.2412524