4.7 Article

Identifiability Analysis for Power Plant Parameter Calibration in the Presence of Collinear Parameters

Journal

IEEE TRANSACTIONS ON POWER SYSTEMS
Volume 37, Issue 4, Pages 2988-2997

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TPWRS.2021.3130076

Keywords

Power generation; Mathematical models; Estimation; Calibration; Analytical models; Voltage measurement; Sensitivity analysis; Power plant model validation; power plant parameter calibration; sensitivity analysis; dynamic parameter estimation; collinearity; identifiability

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A good quality stability model is crucial for accurate power system operations. This paper proposes a method using trajectory sensitivity to detect sensitive parameters and construct a sensitivity matrix, and introduces an identifiability analysis to detect collinearity among sensitive parameters.
A good quality stability model is a key factor for accurate power system operations.Inaccurate parameters of the stability models affect the decision making which paves the way for serious consequences. Thus, it is necessary to calibrate the stability model parameters in a regular manner. There are several calibration methods in the literature which are based on simultaneous estimation of the parameters and states. However, not all of the model parameters are well estimable simultaneously. Simultaneous estimation of parameters with high collinearity may result in biased calibration results. In this paper, the trajectory sensitivity method is used to detect the sensitive parameters and construct the sensitivity matrix. Then, parameters with high linear dependency are identified using the sensitivity matrix. It is shown that, despite the high sensitivity of a parameter, its estimability degrades as the collinearity with other parameters increase. In this paper an identifiability analysis that detects the collinearity among the sensitive parameters is proposed. The proposed method is validated using WSCC 9-Bus System.

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