Author
Listed:
- Xiyun Yang
- Jie Ren
- Xiangjun Li
- Hang Zhang
Abstract
Under the application scenario of smoothing photovoltaic (PV) power fluctuation, a novel typical daily power curve mining method is developed for a battery energy storage system (BESS) that utilizes the power probability distribution and Bloch spherical quantum genetic algorithm. The charging/discharging of BESS is analyzed by applying fuzzy- means clustering techniques. In the mining approach, at any sample time, those distribution intervals containing concentrated power points are individually located by using probability distribution information and Bloch spherical quantum genetic algorithm. Character power for the specified interval can also be determined using Bloch spherical quantum genetic algorithm. Next, a roulette principal is employed, to determine one value from the character power data as a typical value of the mined power curve at the sample time. By connecting the typical power at each sample time, the typical daily power curve for BESS is achieved. Based on typical power curve, decision-maker can master the important operating parameters of BESS and analyze optimal capacity allocation. By error evaluation indexes between the mined typical daily power curve and power curve under different weather patterns, the simulation results verify that the mined power curve can address the operating power of the BESS under different weather patterns.
Suggested Citation
Xiyun Yang & Jie Ren & Xiangjun Li & Hang Zhang, 2018.
"Typical Daily Power Curve Mining for Energy Storage Systems under Smoothing Power Fluctuation Scenarios,"
Mathematical Problems in Engineering, Hindawi, vol. 2018, pages 1-12, January.
Handle:
RePEc:hin:jnlmpe:1503092
DOI: 10.1155/2018/1503092
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