Developing Neural Network Models for Partial Discharge Analysis | IEEE Conference Publication | IEEE Xplore

Developing Neural Network Models for Partial Discharge Analysis


Abstract:

Neural networks in recent years have seen a rise in partial discharge related applications, with efforts mainly focused on measurements from ultra-high frequency sensors ...Show More

Abstract:

Neural networks in recent years have seen a rise in partial discharge related applications, with efforts mainly focused on measurements from ultra-high frequency sensors or high frequency current transformers. Existing works do not include neural network analysis of time-resolved partial discharge measurements on in-service cables generated with an external energising source. The inherent convoluted nature of these waveforms is a complicated recognition task which traditionally requires costly domain expert interpretation. This paper compares several neural network models and proposes a method that performs highly accurate recognition whilst reducing cost. The effectiveness of the proposed procedure is demonstrated by evaluating the performance across statistical measures.
Date of Conference: 18-21 October 2020
Date Added to IEEE Xplore: 18 November 2020
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Conference Location: Singapore

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