IEEJ Transactions on Electronics, Information and Systems
Online ISSN : 1348-8155
Print ISSN : 0385-4221
ISSN-L : 0385-4221
<Neural Network, Fuzzy and Chaos Systems>
Comparison of Pattern Classification Methods in Crossarm Reuse Judgement System Based on Rust Images
Michiko YamanaHiroshi MurataTakashi OnodaTohru OhashiSeiji Kato
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JOURNAL FREE ACCESS

2005 Volume 125 Issue 7 Pages 1049-1054

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Abstract

Japanese electric power companies currently utilize existing equipments completely and maintain facilities effectively. Human experts presently judge various hardwares whether they are be reusable or not to utilize equipments completely. Especially, this paper considers about crossarm reuse judgement. This judgement is based on rust, which attaches on crossarms, by human experts. However, this judgement depends on human expertise and it is difficult to keep constant judgement accuracy. Electric power companies want to take constant and good judgement accuracy. Therefore, we develop a crossarm reuse judgement system based on rust images using machine learning techniques. The system consists of commercial microscope and standard note PC to keep the cost. And we estimate the judgement accuracy of various pattern classification methods without the special image processing such as extracting features. The results show that support vector machine is the most suitable method for this judgement system.

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© 2005 by the Institute of Electrical Engineers of Japan
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