Fractal Analysis of GIS PD Patterns

GIS 부분방전 패턴의 프랙탈 해석

  • Choi, Ho-Woong (Electro-Mechanical Research Institute, Hyundai Heavy Industries, Co., Ltd.) ;
  • Kim, Eun-Young (Electro-Mechanical Research Institute, Hyundai Heavy Industries, Co., Ltd.) ;
  • Min, Byoung-Woon (Electro-Mechanical Research Institute, Hyundai Heavy Industries, Co., Ltd.) ;
  • Lee, Dong-Chul (T&S IT RND Group, Korea Electric Power Data Network Co, Ltd.) ;
  • Kim, Hee-Soo (T&S IT RND Group, Korea Electric Power Data Network Co, Ltd.)
  • 최호웅 (기계전기연구소 현대중공업주식회사) ;
  • 김은영 (기계전기연구소 현대중공업주식회사) ;
  • 민병운 (기계전기연구소 현대중공업주식회사) ;
  • 이동철 (한전KDN(주) 송변전IT연구그룹) ;
  • 김희수 (한전KDN(주) 송변전IT연구그룹)
  • Published : 2006.07.12

Abstract

In prevention and diagnostic system of GIS, pattern classification is focused on the detection of unnatural patterns in PD(Partial discharge) image data. Fractals have been used extensively to provide a description and to model mathematically many of the naturally occurring complex shapes, such as coastlines, mountain ranges, clouds, etc., and have also received increased attention in the field of image processing, for purposes of segmentation and recognition of regions and objects present in natural scenes. Among the numerous fractal features that could be defined and used for image data, fractal dimension and lacunarity have been found to be useful for recognition purposes Partial discharge(PD) occuring in GIS system is a very complex phenomenon, and more so are the shapes of the various 2-d patterns obtained during routine tests and measurements. It has been fairly well established that these pattern shapes and underlying defects causing PD have a 1:1 correspondence, and therefore methods to describe and qunatify these pattern shapes must be explored, before recognition systems based on them could be developed. The computed fractal features(fractal dimension and lacunarity) for standard library of PD data were analyzed and found to possess fairly reasonable pattern discriminating abilities. This new approach appears promising, and further research is essential before any long-term predictions can be made.

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