Suppression of Stochastic Pulses Interference in XLPE Cables Based on Fuzzy Clustering

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Abstract:

To suppress the stochastic pulse interference in XLPE Cables, this paper uses equivalent time-frequency method to extract pulse feature values, adaptive fuzzy clustering to classify pulses, phase concentration as an index to distinguish PD and stochastic pulses. Analysis results of on-site data show that this method can effectively suppress stochastic pulse interference in the PD signal, providing a useful theoretical and practical basis to assess the state of XLPE cable insulation.

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Advanced Materials Research (Volumes 960-961)

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885-890

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June 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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