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Stochastic assessment of frequency support from wind power plants for power system with high wind penetration using correlation between wind farmsopen access

Authors
Yoo, YeuntaeJang, GilsooJung, Seungmin
Issue Date
Aug-2022
Publisher
INST ENGINEERING TECHNOLOGY-IET
Citation
IET RENEWABLE POWER GENERATION, v.16, no.11, pp.2372 - 2383
Indexed
SCIE
SCOPUS
Journal Title
IET RENEWABLE POWER GENERATION
Volume
16
Number
11
Start Page
2372
End Page
2383
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/143338
DOI
10.1049/rpg2.12528
ISSN
1752-1416
Abstract
The increase of renewable energy use in a power generation decreases the flexibility of power supply. The intermittent and variable nature of renewable resources necessitates the use of a transmission system operator to prepare reserve generating power in case of power imbalance. Unfortunately, the generation and reserve margins of renewable energy generators are often insufficient. To ensure a balanced and resilient power system, surplus power generation from renewable resources must provide frequency support with the essential number of synchronous generators being remained in the network. Assessment of the amount of frequency support power from wind farm became available through forecast and real-time operation planning. However, the exact amount of back-up power that expected to be provided by individual wind farm can be barely determined due to the uncertainty and variation of renewable resources generation. A stochastic method for assessing the required frequency support operation of specific wind power plants is thus proposed in this paper. The stochastic correlation characteristics between a single wind farm and power system stability are applied in this method. The essential metrics for deloading operation and inertia response are calculated using the stochastic correlation model based on copula function.
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