Title :
Bad Data Detection and Identification Using Neural Network-Based Reduced Model State Estimator
Author :
Yunhui Wu ; Onwuachumba, Amamihe ; Musavi, Mohamad
Author_Institution :
Electr. & Comput. Eng. Dept., Univ. of Maine, Orono, ME, USA
Abstract :
This paper explores the capability of the reduced model artificial neural network-based power system state estimator to accurately identify single and multiple bad data. This state estimator uses fewer measurements than conventional state estimators and does not require network observability analysis. A comparison of the single bad data detection and identification between the proposed state estimator and the Weighted Least Squares state estimator on GE 6-bus and IEEE 14-bus power systems is provided. The results show that the proposed state estimator is more accurate and faster than the WLS state estimator. Furthermore, the proposed methodology is a great alternative to the conventional techniques and is therefore well suited for smart grid applications.
Keywords :
IEEE standards; least squares approximations; neural nets; power system measurement; power system simulation; power system state estimation; smart power grids; GE 6-bus power system; IEEE 14-bus power system; WLS; multiple bad data detection; network observability analysis; neural network-based reduced model state estimator; power system identification; power system state estimator; single bad data detection; smart grid application; weighted least square state estimator; Measurement uncertainty; Neurons; Power measurement; Power systems; State estimation; Vectors; Voltage measurement; Artificial neural networks; bad data detection and identification; power systems; reduced model state estimator;
Conference_Titel :
Green Technologies Conference, 2013 IEEE
Conference_Location :
Denver, CO
Print_ISBN :
978-1-4673-5191-1
DOI :
10.1109/GreenTech.2013.35