관주형 철탑 상태 감시를 위한 음향 방출 신호처리에 따른 특징 분석Feature Analysis Based on Acoustic Emission Signal Processing for Tubular Steel Tower Condition Monitoring
- Other Titles
- Feature Analysis Based on Acoustic Emission Signal Processing for Tubular Steel Tower Condition Monitoring
- Authors
- 유현탁; 민태홍; 김형진; 강석근; 강동영; 김현식; 최병근
- Issue Date
- 2021
- Publisher
- 한국소음진동공학회
- Keywords
- 관형 철탑; 음향 방출; 기계 학습; 신호처리; 상태 감시; Tubular Steel Tower; Acoustic Emission; Machine Learning; Signal Processing; Condition Monitoring
- Citation
- 한국소음진동공학회논문집, v.31, no.2, pp 195 - 202
- Pages
- 8
- Indexed
- KCI
- Journal Title
- 한국소음진동공학회논문집
- Volume
- 31
- Number
- 2
- Start Page
- 195
- End Page
- 202
- URI
- https://scholarworks.gnu.ac.kr/handle/sw.gnu/5397
- DOI
- 10.5050/KSNVE.2021.31.2.195
- ISSN
- 1598-2785
2287-5476
- Abstract
- In this study, we propose and analyze a machine learning method based on the genetic algorithm (GA) and supporting vector machine (SVM) for the effective classification of faults detected by an acoustic emission test on the welding parts of tubular steel towers. A band-pass filter, an envelope analysis (EA), and an intensified EA (IEA) are employed to generate feature vectors for the machine learning method based on the GA. After signal processing, the signals are applied to GA-based machine learning to derive the representative features of the received signal, and the SVM classifies the fault signals and normal signals from the detected signals. Consequently, it is confirmed that the received signal processed by EA and IEA can classify faults with an accuracy of 93% or more. Hence, the proposed fault test and classification method is expected to be useful in the development of a system for constant monitoring and early detection of welding faults inside a tubular steel tower.
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