A data-driven method for online monitoring tube wall thinning process in dynamic noisy environment
Tube internal erosion, which corresponds to its wall thinning process, is one of the major safety concerns for tubes. Many sensing technologies have been developed to detect a tube wall thinning process. Among them, fiber Bragg grating (FBG) sensors are the most popular ones due to their precise mea...
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sg-smu-ink.sis_research-79602022-03-04T05:58:57Z A data-driven method for online monitoring tube wall thinning process in dynamic noisy environment ZHANG, Chen LIM, Jun Long LIU, Ouyang MADAN, Aayush ZHU, Yongwei XIANG, Shili WU, Kai WONG, Rebecca Yen-Ni PHUA, Jiliang Eugene SABNANI, Karan M. SIAH, Keng Boon JIANG, Wenyu WANG, Yixin HAO, Emily Jianzhong HOI, Steven C. H., Tube internal erosion, which corresponds to its wall thinning process, is one of the major safety concerns for tubes. Many sensing technologies have been developed to detect a tube wall thinning process. Among them, fiber Bragg grating (FBG) sensors are the most popular ones due to their precise measurement properties. Most of the current works focus on how to design different types of FBG sensors according to certain physical laws and only test their sensors in controlled laboratory conditions. However, in practice, an industrial system usually suffers from harsh and dynamic environmental conditions, and FBG signals are affected by many unpredictable factors. Consequently, the FBG signals have more fluctuations and are polluted by noises. Hence, the signals no longer directly follow the assumed physical laws and their proposed thinning detection mechanisms no longer work. Targeting at this, this article develops a data-driven model for FBG signal feature extraction and tube wall thickness monitoring using data analytic techniques. In particular, we develop a spatiotemporal model to describe dynamic FBG signals and extract features related to thickness. By taking physical law as guideline, we trace the relationship between the extracted features and the tube wall thickness, based on which we construct an online statistical monitoring scheme for tube wall thinning process. We use both laboratory test and field trial experiment to demonstrate the efficacy and efficiency of the proposed scheme. 2021-01-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/6957 info:doi/10.1109/TASE.2020.3038708 https://ink.library.smu.edu.sg/context/sis_research/article/7960/viewcontent/Data_drivenMethod_09327498_av.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Electron tubes Sensors Monitoring Fiber gratings Feature extraction Strain Corrosion Fiber Bragg grating (FBG) sensors online monitoring spatiotemporal model statistical process control tube erosion detection Numerical Analysis and Scientific Computing Operations Research, Systems Engineering and Industrial Engineering |
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Electron tubes Sensors Monitoring Fiber gratings Feature extraction Strain Corrosion Fiber Bragg grating (FBG) sensors online monitoring spatiotemporal model statistical process control tube erosion detection Numerical Analysis and Scientific Computing Operations Research, Systems Engineering and Industrial Engineering |
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Electron tubes Sensors Monitoring Fiber gratings Feature extraction Strain Corrosion Fiber Bragg grating (FBG) sensors online monitoring spatiotemporal model statistical process control tube erosion detection Numerical Analysis and Scientific Computing Operations Research, Systems Engineering and Industrial Engineering ZHANG, Chen LIM, Jun Long LIU, Ouyang MADAN, Aayush ZHU, Yongwei XIANG, Shili WU, Kai WONG, Rebecca Yen-Ni PHUA, Jiliang Eugene SABNANI, Karan M. SIAH, Keng Boon JIANG, Wenyu WANG, Yixin HAO, Emily Jianzhong HOI, Steven C. H., A data-driven method for online monitoring tube wall thinning process in dynamic noisy environment |
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Tube internal erosion, which corresponds to its wall thinning process, is one of the major safety concerns for tubes. Many sensing technologies have been developed to detect a tube wall thinning process. Among them, fiber Bragg grating (FBG) sensors are the most popular ones due to their precise measurement properties. Most of the current works focus on how to design different types of FBG sensors according to certain physical laws and only test their sensors in controlled laboratory conditions. However, in practice, an industrial system usually suffers from harsh and dynamic environmental conditions, and FBG signals are affected by many unpredictable factors. Consequently, the FBG signals have more fluctuations and are polluted by noises. Hence, the signals no longer directly follow the assumed physical laws and their proposed thinning detection mechanisms no longer work. Targeting at this, this article develops a data-driven model for FBG signal feature extraction and tube wall thickness monitoring using data analytic techniques. In particular, we develop a spatiotemporal model to describe dynamic FBG signals and extract features related to thickness. By taking physical law as guideline, we trace the relationship between the extracted features and the tube wall thickness, based on which we construct an online statistical monitoring scheme for tube wall thinning process. We use both laboratory test and field trial experiment to demonstrate the efficacy and efficiency of the proposed scheme. |
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ZHANG, Chen LIM, Jun Long LIU, Ouyang MADAN, Aayush ZHU, Yongwei XIANG, Shili WU, Kai WONG, Rebecca Yen-Ni PHUA, Jiliang Eugene SABNANI, Karan M. SIAH, Keng Boon JIANG, Wenyu WANG, Yixin HAO, Emily Jianzhong HOI, Steven C. H., |
author_facet |
ZHANG, Chen LIM, Jun Long LIU, Ouyang MADAN, Aayush ZHU, Yongwei XIANG, Shili WU, Kai WONG, Rebecca Yen-Ni PHUA, Jiliang Eugene SABNANI, Karan M. SIAH, Keng Boon JIANG, Wenyu WANG, Yixin HAO, Emily Jianzhong HOI, Steven C. H., |
author_sort |
ZHANG, Chen |
title |
A data-driven method for online monitoring tube wall thinning process in dynamic noisy environment |
title_short |
A data-driven method for online monitoring tube wall thinning process in dynamic noisy environment |
title_full |
A data-driven method for online monitoring tube wall thinning process in dynamic noisy environment |
title_fullStr |
A data-driven method for online monitoring tube wall thinning process in dynamic noisy environment |
title_full_unstemmed |
A data-driven method for online monitoring tube wall thinning process in dynamic noisy environment |
title_sort |
data-driven method for online monitoring tube wall thinning process in dynamic noisy environment |
publisher |
Institutional Knowledge at Singapore Management University |
publishDate |
2021 |
url |
https://ink.library.smu.edu.sg/sis_research/6957 https://ink.library.smu.edu.sg/context/sis_research/article/7960/viewcontent/Data_drivenMethod_09327498_av.pdf |
_version_ |
1770576166046924800 |