Small signal stability assessment of grid‑connected system for grid‑following/grid‑forming hybrid new energy stations based on TCN
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(1.Hubei Engineering and Technology Research Center for AC/DC Intelligent Distribution Network, Wuhan University, Wuhan 430072, China; 2.School of Electrical Engineering and Automation, Wuhan University, Wuhan 430072, China)

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TM712

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    Abstract:

    To support the rapid switching of unit control modes in grid-following/grid-forming hybrid new energy stations and achieve safe and stable operation of these stations that can adapt to changes in grid strength, a rapid assessment method for small-signal stability of grid-connected systems in grid-following/grid-forming hybrid new energy stations based on temporal convolutional network (TCN) is proposed. Specifically, an aggregated impedance model for grid-following/grid-forming hybrid new energy stations is constructed, and the small-signal stability margin of the grid-connected system is obtained through eigenvalue calculations. Furthermore, using the short-circuit ratio of the grid-connected system and the information on the grid-following/grid-forming control mode of the new energy station as input features, and the small-signal stability margin and damping ratio of the grid-connected system as output features, a TCN is trained to obtain a rapid assessment model for small-signal stability of grid-connected systems in hybrid new energy stations. The trained model can quickly output the corresponding small-signal stability margin and damping ratio based on the short-circuit ratio and the control mode of each unit in the grid-following/grid-forming hybrid new energy station. A case study is conducted using a new energy station with 10 wind turbines, and the results show that compared to the long short-term memory neural network method, the proposed method reduces the mean absolute percentage error of small-signal stability margin prediction and damping ratio prediction by 16.76% and 14.75% respectively. Additionally, the computation time of the proposed method is reduced by 98.54% compared to the eigenvalue calculation method, verifying the accuracy and efficiency of the proposed rapid assessment method for small-signal stability.

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林 涛,林政阳,李 晨,李 君.基于TCN的跟网/构网混合型新能源场站并网系统小干扰稳定性快速评估[J].电力科学与技术学报英文版,2024,39(4):169-177. LIN Tao, LIN Zhengyang, LI Chen, LI Jun. Small signal stability assessment of grid‑connected system for grid‑following/grid‑forming hybrid new energy stations based on TCN[J]. Journal of Electric Power Science and Technology,2024,39(4):169-177.

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  • Online: September 10,2024
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