Proceedings Article10.1049/CP.2013.0711
Knowledge based interference signal rejection and partial discharge identification from multi-PD sources for condition monitoring of cable systems
Xiaosheng Peng,Donald M. Hepburn,Chengke Zhou +2 more
- 16 Dec 2013
- pp 1-4
TL;DR: In this article, a knowledge-based method for interference signals rejection and autonomous partial discharge (PD) signal identification is presented, where the fingerprints of typical interference signals and PD signals emanating from various sources are defined and differentiated in the time domain.
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Abstract: Autonomous partial discharge (PD) identification is not only key to the success of, but also one of the major challenges in, PD based condition monitoring of cable systems. In industrial applications, two challenges restrict the implementation of autonomous PD identification. The first challenge is that interference signals are of different shapes and the frequency bandwidths of some interference signals are similar to that of PD signals. The second challenge is that, as PD signals originate from different sources, their characteristics also vary. Sources of PD include cable and cable termination, switch-gear enclosures, motors connected at the end of the cable being monitored, etc. The ability of identifying PDs from the multiplicity of PD sources is therefore in great demand. To overcome the above two challenges, this paper demonstrates a knowledge based method for interference signals rejection and autonomous PD signal identification. The fingerprints of typical interference signals and PD signals emanating from various sources are defined and differentiated in the time domain. Based on the fingerprints, a decision tree based recognition method and a knowledge base has been developed. The method was based on PD on-site testing data collected from more than 300 cables in one power system. It was then applied to another two systems and proved to be effective. (4 pages)
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References
A generic knowledge-based approach to the analysis of partial discharge data
TL;DR: In this article, a knowledge-based system (KBS) was proposed to detect partial discharge (PD) in high voltage insulation in power system equipment using phase-resolved patterns from UHF and IEC 60270 data.
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•Journal Article
Feature of new standard iec 60270 for partial discharge measurement and its influence on pd measuring activity
TL;DR: The IEC 60270/FDIS standard for partial discharge (PD) measurement has been published in September 2000, which builds up an integral quality assurance system for PD measurement based on the IEC 60060-2[1994] as mentioned in this paper.
55
On-line partial discharge monitoring in medium voltage underground cables
TL;DR: In this article, the authors present work on the analysis and handling of acquired data, from the point of view of asset management and the PD activities observed in an on-line cable monitoring systems.
52
PD knowledge rules for insulation condition assessment of distribution power cables
TL;DR: In this article, the authors discuss practical experiences in the Netherlands with insulation condition assessment of distribution power cable networks by partial discharge diagnosis and database support, in particular, practical steps are discussed in collecting, analysing and processing the diagnostic data for decision support of utility asset management.
Partial discharge pulse pattern recognition using an inductive inference algorithm
TL;DR: This paper presents a novel approach in the area of time dependent partial discharge (PD) pulse pattern recognition, to applications based on the inductive learning (decision tree) approach, which possesses the inherent advantage of explaining the result via the self-created rule base.
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