A novel diagnostic method based on filter bank theory for fast and accurate detection of thermoacoustic instability

Abstract This study proposes and analyzes a novel methodology that can effectively detect multi-mode combustion instability (CI) in a gas turbine combustor. The experiment is conducted in a model gas turbine combustor, and dynamic pressure (DP) and flame images are examined during the transition fro...

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Main Authors: Seongpil Joo, Jongwun Choi, Namkeun Kim, Min Chul Lee
Format: Article
Language:English
Published: Nature Publishing Group 2021-02-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-020-80427-6
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spelling doaj-8acc70ad18fc4b288ce4250c84acddb02021-02-07T12:33:31ZengNature Publishing GroupScientific Reports2045-23222021-02-0111111710.1038/s41598-020-80427-6A novel diagnostic method based on filter bank theory for fast and accurate detection of thermoacoustic instabilitySeongpil Joo0Jongwun Choi1Namkeun Kim2Min Chul Lee3Gas Turbine Laboratory, National Research Council of CanadaDepartment of Mechanical Engineering, Incheon National UniversityDepartment of Mechanical Engineering, Incheon National UniversityDepartment of Safety Engineering, Incheon National UniversityAbstract This study proposes and analyzes a novel methodology that can effectively detect multi-mode combustion instability (CI) in a gas turbine combustor. The experiment is conducted in a model gas turbine combustor, and dynamic pressure (DP) and flame images are examined during the transition from stable to unstable flame, which is driven by changing fuel compositions. As a powerful technique for early detection of CI in multi-mode as well as in single mode, a new filter bank (FB) method based on spectral analysis of DP is proposed. Sequential processing using a triangular filter with Mel-scaling and a Hamming window is applied to increase the accuracy of the FB method, and the instability criterion is determined by calculating the magnitude of FB components. The performance of the FB method is compared with that of two conventional methods that are based on the root-mean-squared DP and temporal kurtosis. From the results, the FB method shows comparable performance in detection speed, sensitivity, and accuracy with other parameters. In addition, the FB components enable the analysis of various frequencies and multi-mode frequencies. Therefore, the FB method can be considered as an additional prognosis tool to determine the multi-mode CI in a monitoring system for gas turbine combustors.https://doi.org/10.1038/s41598-020-80427-6
collection DOAJ
language English
format Article
sources DOAJ
author Seongpil Joo
Jongwun Choi
Namkeun Kim
Min Chul Lee
spellingShingle Seongpil Joo
Jongwun Choi
Namkeun Kim
Min Chul Lee
A novel diagnostic method based on filter bank theory for fast and accurate detection of thermoacoustic instability
Scientific Reports
author_facet Seongpil Joo
Jongwun Choi
Namkeun Kim
Min Chul Lee
author_sort Seongpil Joo
title A novel diagnostic method based on filter bank theory for fast and accurate detection of thermoacoustic instability
title_short A novel diagnostic method based on filter bank theory for fast and accurate detection of thermoacoustic instability
title_full A novel diagnostic method based on filter bank theory for fast and accurate detection of thermoacoustic instability
title_fullStr A novel diagnostic method based on filter bank theory for fast and accurate detection of thermoacoustic instability
title_full_unstemmed A novel diagnostic method based on filter bank theory for fast and accurate detection of thermoacoustic instability
title_sort novel diagnostic method based on filter bank theory for fast and accurate detection of thermoacoustic instability
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-02-01
description Abstract This study proposes and analyzes a novel methodology that can effectively detect multi-mode combustion instability (CI) in a gas turbine combustor. The experiment is conducted in a model gas turbine combustor, and dynamic pressure (DP) and flame images are examined during the transition from stable to unstable flame, which is driven by changing fuel compositions. As a powerful technique for early detection of CI in multi-mode as well as in single mode, a new filter bank (FB) method based on spectral analysis of DP is proposed. Sequential processing using a triangular filter with Mel-scaling and a Hamming window is applied to increase the accuracy of the FB method, and the instability criterion is determined by calculating the magnitude of FB components. The performance of the FB method is compared with that of two conventional methods that are based on the root-mean-squared DP and temporal kurtosis. From the results, the FB method shows comparable performance in detection speed, sensitivity, and accuracy with other parameters. In addition, the FB components enable the analysis of various frequencies and multi-mode frequencies. Therefore, the FB method can be considered as an additional prognosis tool to determine the multi-mode CI in a monitoring system for gas turbine combustors.
url https://doi.org/10.1038/s41598-020-80427-6
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