optimal control;
power control;
wind power plants;
energy storage;
distributed control;
predictive control;
gradient methods;
wind turbines;
convergence;
optimal active power control;
wind farm control;
energy storage system;
distributed model predictive control;
D-MPC;
ESS unit;
gradient method;
dual decomposition;
power reference tracking;
wind turbine;
WT mechanical load;
convergence rate;
iteration number;
communication burden;
load reduction;
real-time control;
LOAD;
D O I:
10.1049/iet-gtd.2015.0112
中图分类号:
TM [电工技术];
TN [电子技术、通信技术];
学科分类号:
0808 ;
0809 ;
摘要:
This study presents the distributed model predictive control (D-MPC) of a wind farm equipped with fast and short-term energy storage system (ESS) for optimal active power control using the fast gradient method via dual decomposition. The primary objective of the D-MPC control of the wind farm is power reference tracking from system operators. Besides, by optimal distribution of the power references to individual wind turbines (WTs) and the ESS unit, the WT mechanical loads are alleviated. With the fast gradient method, the convergence rate of the D-MPC is significantly improved which leads to a reduction of the iteration number. Accordingly, the communication burden is reduced. Case studies demonstrate that the additional ESS unit can lead to a larger WT load reduction, compared with the conventional wind farm control without ESS. Moreover, the efficiency of the developed D-MPC algorithm is independent from the wind farm size and is suitable for the real-time control of the wind farm with ESS.