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Using simulation and rough set learning to detect fault location in distribution network

Published: 09 December 2012 Publication History

Abstract

Fault occurs owning to a variety of reasons in distribution network, such as equipment failure, overloading, tree, vehicle etc. It is very important for utility to detect the fault location as quickly as possible for helping to reduce the outage time. This paper proposed a method for distribution network fault location diagnosis which employs simulation and rough set learning. Based on the topology structure of distribution network and the probability model of equipment failure, the simulation model is firstly built for training the sample data. The rough set theory is applied to establish the rules of the relationship between outage zone and the equipment failure. And the enhanced learning process is used to improve the completeness of rules library. The numerical testing results are also presented to illustrate the method.

References

[1]
Protopapas, C. A., K. P. Psaltiras, and A. V. Machias. 1991. "An expert system for substation fault diagnosis and alarm processing." IEEE trans. on PWRD 6(2): 648--655.
[2]
Lee, H. J., B. S. Ahn, and Y. M. Park. 2000. "A Fault Diagnosis Expert System for Distribution Substations." IEEE trans. on Power Delivery 15(1): 92--97.
[3]
Chin, H. C. 2003. "Fault Section Diagnosis of Power System Using Fuzzy Logic." IEEE trans. on Power Systems 18(1): 245--250.
[4]
Peng, J. T., C. F. Chien, and T. L. B. Tseng. 2004. "Rough set theory for data mining for fault diagnosis on distribution feeder." IEE Proc. Gener. Transm. Distrib. 151(6): 689--697.
[5]
Lin S., Z. Y. He, Y. Zhang, and Q. Qian. 2009. "An Evolutionary ANN Based on Rough Set and Its Application in Power Grid Fault Diagnosis." International Workshop on Intelligent Systems and Applications, 1--4.

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      cover image ACM Conferences
      WSC '12: Proceedings of the Winter Simulation Conference
      December 2012
      4271 pages

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      Winter Simulation Conference

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      Published: 09 December 2012

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      WSC '12
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      WSC '12: Winter Simulation Conference
      December 9 - 12, 2012
      Berlin, Germany

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      WSC '12 Paper Acceptance Rate 189 of 384 submissions, 49%;
      Overall Acceptance Rate 3,413 of 5,075 submissions, 67%

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