Rapid Double-Layer Identification Method of Multi-Relevant Bad Data in Large-Scale Power Grids

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Abstract:

Bad data detection and identification is an important part of state estimation. When the relevant bad data appears, however, there is residual pollution and residual submerged condition in currently available methods of bad data detection and identification. In view of the above problem, this article presents a double-layer bad data detection and identification technique. At first, it is based on regularization residual detection method (Rn detection method) to identify the suspect measurement sets. And then, it presents a fast search technique of interrelated suspect measurements to search interrelated measurements in all the suspect measurements of the entire power grid and produce interrelated suspect measurement sets. Furthermore, use double-layer identification method to fast identify the bad data in interrelated suspect measurement sets, in other words, identify all the bad data in entire power grid. At last, taking IEEE39 node power grid for example, this detection method of bad data is analyzed, the accuracy and effectiveness of this method is to be verified.

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1294-1300

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October 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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[1] Liu Li, Zhai Denghui, Jiang Xinli. Current Situation and Development of The Methods on Bad-data Detection and Identification of Power System[J]. Power System Protection and Control, 2010, 05: 143-147+152.

Google Scholar

[2] Zhang Yongchao. The methods of Power system bad data detection and identification [D]. Southwest Jiaotong University, (2009).

Google Scholar

[3] Huang Yanquan, Xiao Jian, Li Yunfei, Shao Ming, Huang Qing. A New Method to Detect and Identify Bad Data Based on Correlativity of Measured Data in Power System[J]. Power System Technology, 2006, 02: 70-74.

Google Scholar

[4] Ye Xueyong, Wu Junji, Yang Wei, Zhang Junfang. The Correction of the Bad Data in Power System Based on Neural Network[J]. Power System Technology, 2007, S2 : 173-175.

Google Scholar

[5] Chen Bo. Bad Data Identification of Power System [D]. South China University of Technology, (2010).

Google Scholar

[6] Liu Lan. Robust least squares method in power system state estimation [D]. Southwest Jiaotong University, (2006).

Google Scholar

[7] Liu Hao. Mixed Method of Bad Data Detection and Identification in State Estimation [J]. Electrotechnical Journal, 1999, 11 (6) : 18-20.

Google Scholar

[8] MB Do Cutto Filho,et al. Bibliography on PowerSystem State Estimation(1968-1989)[J]. IEEE Trans onPower System, 1990,5(3).

Google Scholar

[9] Huang Shyh-Jier. Enhancement of Anomalous DataMining in Power System Predicting-Aided State Estimation[J]. IEEE Trans on power Systems,2004,19(1):610-619.

DOI: 10.1109/tpwrs.2003.818726

Google Scholar

[10] Wei Zhinong, Zhang Yungang, Zheng Yuping. The Improvement of Measurement Suddenly-Change Detection Method [J]. Proceedings of the CSEE, 2002, 22 (6) : 34-37.

Google Scholar

[11] WU Junji, Yang Wei, Ge Cheng, etc. Application of GSA-based Elbow Judgment on Bad-data Detection of Power System [J]. Proceedings of the CSEE, 2006, 26 (22) : 23-28.

Google Scholar