Online Detection of Impending Instability in a Combustion System Using Tools from Symbolic Time Series Analysis

In this paper, we introduce a novel technique (anomaly detection) for the online detection of impending instability in a combustion system based on symbolic time series analysis. The experimental results presented in this paper illustrate the application of anomaly detection to a combustor in which...

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Main Authors: Vishnu R. Unni, Achintya Mukhopadhyay, R. I. Sujith
Format: Article
Language:English
Published: SAGE Publishing 2015-09-01
Series:International Journal of Spray and Combustion Dynamics
Online Access:https://doi.org/10.1260/1756-8277.7.3.243
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spelling doaj-438e85e4a8464196bfffb45e7865ea0b2020-11-25T03:16:34ZengSAGE PublishingInternational Journal of Spray and Combustion Dynamics1756-82771756-82852015-09-01710.1260/1756-8277.7.3.24310.1260_1756-8277.7.3.243Online Detection of Impending Instability in a Combustion System Using Tools from Symbolic Time Series AnalysisVishnu R. Unni0Achintya Mukhopadhyay1R. I. Sujith2 Indian Institute of Technology Madras, Chennai, India 600036 Indian Institute of Technology Madras, Chennai, India 600036 Indian Institute of Technology Madras, Chennai, India 600036In this paper, we introduce a novel technique (anomaly detection) for the online detection of impending instability in a combustion system based on symbolic time series analysis. The experimental results presented in this paper illustrate the application of anomaly detection to a combustor in which the flame is stabilized either by a bluff body or by a swirler. The detection unit works on the principle that in the transition region from combustion noise to thermoacoustic instability, combustion systems exhibit peculiar dynamics which results in the formation of specific patterns in the time series. Further, tools from symbolic time series analysis is used to recognize these patterns and then define an anomaly measure indicative of the proximity of system to regimes of thermoacoustic instability.https://doi.org/10.1260/1756-8277.7.3.243
collection DOAJ
language English
format Article
sources DOAJ
author Vishnu R. Unni
Achintya Mukhopadhyay
R. I. Sujith
spellingShingle Vishnu R. Unni
Achintya Mukhopadhyay
R. I. Sujith
Online Detection of Impending Instability in a Combustion System Using Tools from Symbolic Time Series Analysis
International Journal of Spray and Combustion Dynamics
author_facet Vishnu R. Unni
Achintya Mukhopadhyay
R. I. Sujith
author_sort Vishnu R. Unni
title Online Detection of Impending Instability in a Combustion System Using Tools from Symbolic Time Series Analysis
title_short Online Detection of Impending Instability in a Combustion System Using Tools from Symbolic Time Series Analysis
title_full Online Detection of Impending Instability in a Combustion System Using Tools from Symbolic Time Series Analysis
title_fullStr Online Detection of Impending Instability in a Combustion System Using Tools from Symbolic Time Series Analysis
title_full_unstemmed Online Detection of Impending Instability in a Combustion System Using Tools from Symbolic Time Series Analysis
title_sort online detection of impending instability in a combustion system using tools from symbolic time series analysis
publisher SAGE Publishing
series International Journal of Spray and Combustion Dynamics
issn 1756-8277
1756-8285
publishDate 2015-09-01
description In this paper, we introduce a novel technique (anomaly detection) for the online detection of impending instability in a combustion system based on symbolic time series analysis. The experimental results presented in this paper illustrate the application of anomaly detection to a combustor in which the flame is stabilized either by a bluff body or by a swirler. The detection unit works on the principle that in the transition region from combustion noise to thermoacoustic instability, combustion systems exhibit peculiar dynamics which results in the formation of specific patterns in the time series. Further, tools from symbolic time series analysis is used to recognize these patterns and then define an anomaly measure indicative of the proximity of system to regimes of thermoacoustic instability.
url https://doi.org/10.1260/1756-8277.7.3.243
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