A comparative study on different power system frequency estimation techniques Online publication date: Sun, 17-May-2009
by B. Subudhi, P.K. Ray, S.R. Mohanty, A.M. Panda
International Journal of Automation and Control (IJAAC), Vol. 3, No. 2/3, 2009
Abstract: This paper presents the estimation of frequency which is an important power system parameter by Extended Least Square (ELS) technique. The above technique is validated by comparing its performance with the existing techniques such as Kalman Filter (KF) and Least Mean Square (LMS) technique, etc. Using different simulation studies with signals having different signal to noise ratio values and with step change in frequency, it is observed that ELS technique outperforms over LMS and KF methods on power system frequency estimation. Initialisation of covariance matrix in KF method and complicacy due to incorporation of correlation matrix in LMS algorithm affect their convergence. But ELS algorithm becomes very simple and attractive due to the absence of covariance and correlation matrix.
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