Title :
Smart control for battery energy storage system in a community grid
Author :
Ke Jia ; Bohan Liu ; Iyogun, Mineze ; Tianshu Bi
Author_Institution :
Dept. Electr. & Electron. Eng., North China Electr. Power Univ., Beijing, China
Abstract :
Distributed renewable energy generators: wind turbines, photovoltaics and other Renewable Energy Source of Electricity (RES-E) are coupled with energy storage system to supply power to the local consumers in the micro-grid network. This system requires a wide-range of control to ensure system security, optimal operation and emission reduction. This paper proposes a variable-threshold methodology for control of energy storage unit within a micro-grid. With each stage of the decision making for optimal energy distribution adopting, an Adaptive Intelligence Technique (AIT) was applied on system variables for efficient power management. The AIT brings about optimal energy distribution across peak period, demand smoothening and high efficiency battery utilization. The proposed method was evaluated using onsite measured RES output data. The results show that this method can achieve load curve smoothing and maximum local utilization of the RES energy without requirement of precise load and RES forecasting. Compared with the traditional methods which either uses a fixed threshold or requires forecasting for battery charging/discharging, the proposed algorithm provides a variable energy regulation reference which is intelligently updated every sample step. The improvement is demonstrated using the simulation testing results.
Keywords :
battery storage plants; distributed power generation; energy management systems; renewable energy sources; smart power grids; AIT; RES-E; adaptive intelligence technique; decision making; demand smoothening; distributed renewable energy generators; efficient power management; energy storage system; energy storage unit control; high efficiency battery utilization; load curve smoothing; maximum local utilization; microgrid network; onsite measured RES output data; optimal energy distribution; peak period; photovoltaics; renewable energy source of electricity; variable energy regulation reference; variable-threshold methodology; wind turbines; Batteries; Electricity; Load modeling; Power systems; Renewable energy sources; Adaptive Intelligent Technique; Battery storage; Energy management; Variable threshold;
Conference_Titel :
Power System Technology (POWERCON), 2014 International Conference on
Conference_Location :
Chengdu
DOI :
10.1109/POWERCON.2014.6993790