DefinePK hosts the largest index of Pakistani journals, research articles, news headlines, and videos. It also offers chapter-level book search.
Title: The largest studentized residual test for bad data identification in state estimation of a power system
Authors: Zahid Khan, Radzuan B.Razali, Hanita Daud, Nursyarizal Mohd Nor, Mahmud Fotuhi Firuzabad
Journal: ARPN Journal of Engineering and Applied Sciences
Publisher: Khyber Medical College, Peshawar
Country: Pakistan
Year: 2015
Volume: 10
Issue: 21
Language: English
Power system state estimation is a reliable tool used in Energy Management System (EMS) to identify the existence state of the system during its operating hours. The results of this estimation are values for unknown state parameters of the power system. The presence of systematic errors can alter the results of state estimation. The chi-square and normalized residual tests are the common post estimation procedures usually used for detection and identification of gross errors in the estimation algorithm. These tests are based on two separate test statistics and are not so powerful for detection of smaller magnitudes of gross errors. In this paper, an implementation of largest studentized residual (LSR) testis presented that combines both the results of chi-square and normalized test for detection and identification of bad data. Based on LSRtest, a comprehensive strategy is developed for detection and identification of multiple gross errors which may exist simultaneously in the data. A six-bus power system data is used for the application of LSR test for detecting and identifying the gross errors in the processed measurements. The reporting results are presented showing that the method is most powerful and effective for practical implementation in conventional procedures of the state estimation problem.
Loading PDF...
Loading Statistics...