Mechanical condition recognition of medium-voltage vacuum circuit breaker based on mechanism dynamic features simulation and ANN

A new research method is proposed for the medium-voltage (MV) vacuum circuit breaker's (CB's) mechanical condition monitoring, which combines the mechanism dynamic features simulation and mechanical condition recognition algorithm based on artificial neural networks (ANNs). This method includes three steps: First, the relations between eigenvalues and mechanical failures of a vacuum circuit breaker (CB) through simulation instead of measurement are obtained. In this paper, the mechanism dynamic features of a vacuum CB in failure are simulated; the simulation results indicate that the parameter that can be monitored-main angle-has different characters for different mechanism failures. Second, the eigenvalues for different failure conditions are described by three parameters. Third, mechanical condition recognition of the MV vacuum CB by an algorithm based on ANN is realized. It is concluded by the work mentioned above, both the known mechanical condition type and the new mechanical condition type of the medium-voltage vacuum CB can be recognized with predetermined reliability.

[1]  J. B. McConville The application of the ADAMS, general-purpose mechanical systems simulation code to aerospace problems , 1997, 14th Annual AESS/IEEE Dayton Section Symposium. Synthetic Visualization: Systems and Applications.

[2]  R. F. Harder Dynamic modeling and simulation of three-piece freight vehicle suspensions with nonlinear frictional behaviour using Adams/Rail , 2001, Proceedings of the 2001 IEEE/ASME Joint Railroad Conference (Cat. No.01CH37235).

[3]  D. Birtwhistle,et al.  A new technique for condition monitoring of MV metalclad switchgear , 1998 .

[4]  S. L. Pang,et al.  A distributed on-line HV transmission condition monitoring information system , 1996 .

[5]  M.H.B. de Grijp,et al.  Condition monitoring of high voltage circuit breakers , 1996, Proceedings of IEEE. AFRICON '96.

[6]  S. Fararooy,et al.  On-line condition monitoring of railway equipment using neural networks , 1995 .

[7]  José Ramón Saenz,et al.  Selecting ANN structures to find transmission faults , 2001 .

[8]  A. Poeltl,et al.  Experiences with condition monitoring of HV circuit breakers , 2001, 2001 IEEE/PES Transmission and Distribution Conference and Exposition. Developing New Perspectives (Cat. No.01CH37294).

[9]  Pauziah Mohd Arsad,et al.  Application of ANN to power system fault analysis , 2002, Student Conference on Research and Development.