4.7 Article

Analytical Method to Aggregate Multi-Machine SFR Model With Applications in Power System Dynamic Studies

Journal

IEEE TRANSACTIONS ON POWER SYSTEMS
Volume 33, Issue 6, Pages 6355-6367

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TPWRS.2018.2824823

Keywords

System frequency response (SFR); multi-machine; frequency control; demand response; renewable energy penetration; model reduction

Funding

  1. Engineering Research Center Program of the National Science Foundation
  2. Department of Energy of USA under NSF Award [EEC-1041877]
  3. CURENT Industry Partnership Program

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The system frequency response (SFR) model describes the average network frequency response after a disturbance and has been applied to a wide variety of dynamic studies. However, the traditional literature does not provide a generic, analytical method for obtaining the SFR model parameters when the system contains multiple generators; instead, a numerical simulation-based approach or the operators' experience is the common practice to obtain an aggregated model. In this paper, an analytical method is proposed for aggregating the multi-machine SFR model into a single-machine model. The verification study indicates that the proposed aggregated SFR model can accurately represent the multi-machine SFR model. Furthermore, the detailed system simulation illustrates that the SFR model can also accurately represent the average frequency response of large systems for power system dynamic studies. Finally, three applications of the proposed method are explored, with system frequency control, frequency stability, and dynamic model reduction. The results show the method is promising with broad potential applications.

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