Real-time detection using wavelet transform and neural network of short-circuit faults within a train in DC transit systems

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Abstract

A method is proposed for the real-time detection of DC-link short-circuit faults in DC transit systems. The discrete wavelet transform is implemented to detect any surges in the DC thirdrail current waveform. In the event of a surge the wavelet transform extracts a feature vector from the current waveform and feeds it to a self-organising neural network. The neural network determines whether the feature vector belongs to a normal or a fault current surge.

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APA

Chang, C. S., Kumar, S., Liu, B., & Khambadkone, A. (2001). Real-time detection using wavelet transform and neural network of short-circuit faults within a train in DC transit systems. IEE Proceedings: Electric Power Applications, 148(3), 251–256. https://doi.org/10.1049/ip-epa:20010350

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