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원전 배관의 두께 측정 데이터에 대한 신뢰도 분석 방법 및 적용Method and Application for Reliability Analysis of Measurement Data in Nuclear Power Plant

Other Titles
Method and Application for Reliability Analysis of Measurement Data in Nuclear Power Plant
Authors
윤훈황경모이효승문승재
Issue Date
Feb-2015
Publisher
한국부식방식학회
Keywords
wall thinning; ultrasonic thickness measurement; reliability analysis
Citation
CORROSION SCIENCE AND TECHNOLOGY, v.14, no.1, pp.33 - 39
Indexed
KCI
Journal Title
CORROSION SCIENCE AND TECHNOLOGY
Volume
14
Number
1
Start Page
33
End Page
39
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/157917
DOI
10.14773/cst.2015.14.1.33
ISSN
1598-6462
Abstract
Pipe wall-thinning by flow-accelerated corrosion and various types of erosion is significant damage in secondarysystem piping of nuclear power plants(NPPs). All NPPs in Korea have management programs to ensurepipe integrity from degradation mechanisms. Ultrasonic test(UT) is widely used for pipe wall thicknessmeasurement. Numerous UT measurements have been performed during scheduled outages. Wall-thinningrates are determined conservatively according to several evaluation methods developed by Electric PowerResearch Institute(EPRI). The issue of reliability caused by measurement error should be considered inthe process of evaluation. The reliability analysis method was developed for single and multiple measurementdata in the previous researches. This paper describes the application results of reliability analysis methodto real measurement data during scheduled outage and proved its benefits.
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