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    A Fault Diagnosis Method for Industrial Gas Turbines Using Bayesian Data Analysis

    Source: Journal of Engineering for Gas Turbines and Power:;2010:;volume( 132 ):;issue: 004::page 41602
    Author:
    Young K. Lee
    ,
    Ming Yuan
    ,
    Ted Fisher
    ,
    Dimitri N. Mavris
    ,
    Vitali V. Volovoi
    DOI: 10.1115/1.3204508
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: This paper presents an offline fault diagnosis method for industrial gas turbines in a steady-state. Fault diagnosis plays an important role in the efforts for gas turbine owners to shift from preventive maintenance to predictive maintenance, and consequently to reduce the maintenance cost. Ever since its birth, numerous techniques have been researched in this field, yet none of them is completely better than the others and perfectly solves the problem. Fault diagnosis is a challenging problem because there are numerous fault situations that can possibly happen to a gas turbine, and multiple faults may occur in multiple components of the gas turbine simultaneously. An algorithm tailored to one fault situation may not perform well in other fault situations. A general algorithm that performs well in overall fault situations tends to compromise its accuracy in the individual fault situation. In addition to the issue of generality versus accuracy, another challenging aspect of fault diagnosis is that, data used in diagnosis contain errors. The data is comprised of measurements obtained from gas turbines. Measurements contain random errors and often systematic errors like sensor biases as well. In this paper, to maintain the generality and the accuracy together, multiple Bayesian models tailored to various fault situations are implemented in one hierarchical model. The fault situations include single faults occurring in a component, and multiple faults occurring in more than one component. In addition to faults occurring in the components of a gas turbine, sensor biases are explicitly included in the multiple models so that the magnitude of a bias, if any, can be estimated as well. Results from these multiple Bayesian models are averaged according to how much each model is supported by data. Gibbs sampling is used for the calculation of the Bayesian models. The presented method is applied to fault diagnosis of a gas turbine that is equipped with a faulty compressor and a biased fuel flow sensor. The presented method successfully diagnoses the magnitudes of the compressor fault and the fuel flow sensor bias with limited amount of data. It is also shown that averaging multiple models gives rise to more accurate and less uncertain results than using a single general model. By averaging multiple models, based on various fault situations, fault diagnosis can be general yet accurate.
    keyword(s): Measurement , Sensors , Fuels , Compressors , Industrial gases , Gas turbines , Turbines , Fault diagnosis , Flow sensors , Probability , Errors , Steady state AND Patient diagnosis ,
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      A Fault Diagnosis Method for Industrial Gas Turbines Using Bayesian Data Analysis

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    http://yetl.yabesh.ir/yetl1/handle/yetl/143222
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    contributor authorYoung K. Lee
    contributor authorMing Yuan
    contributor authorTed Fisher
    contributor authorDimitri N. Mavris
    contributor authorVitali V. Volovoi
    date accessioned2017-05-09T00:37:46Z
    date available2017-05-09T00:37:46Z
    date copyrightApril, 2010
    date issued2010
    identifier issn1528-8919
    identifier otherJETPEZ-27107#041602_1.pdf
    identifier urihttp://yetl.yabesh.ir/yetl/handle/yetl/143222
    description abstractThis paper presents an offline fault diagnosis method for industrial gas turbines in a steady-state. Fault diagnosis plays an important role in the efforts for gas turbine owners to shift from preventive maintenance to predictive maintenance, and consequently to reduce the maintenance cost. Ever since its birth, numerous techniques have been researched in this field, yet none of them is completely better than the others and perfectly solves the problem. Fault diagnosis is a challenging problem because there are numerous fault situations that can possibly happen to a gas turbine, and multiple faults may occur in multiple components of the gas turbine simultaneously. An algorithm tailored to one fault situation may not perform well in other fault situations. A general algorithm that performs well in overall fault situations tends to compromise its accuracy in the individual fault situation. In addition to the issue of generality versus accuracy, another challenging aspect of fault diagnosis is that, data used in diagnosis contain errors. The data is comprised of measurements obtained from gas turbines. Measurements contain random errors and often systematic errors like sensor biases as well. In this paper, to maintain the generality and the accuracy together, multiple Bayesian models tailored to various fault situations are implemented in one hierarchical model. The fault situations include single faults occurring in a component, and multiple faults occurring in more than one component. In addition to faults occurring in the components of a gas turbine, sensor biases are explicitly included in the multiple models so that the magnitude of a bias, if any, can be estimated as well. Results from these multiple Bayesian models are averaged according to how much each model is supported by data. Gibbs sampling is used for the calculation of the Bayesian models. The presented method is applied to fault diagnosis of a gas turbine that is equipped with a faulty compressor and a biased fuel flow sensor. The presented method successfully diagnoses the magnitudes of the compressor fault and the fuel flow sensor bias with limited amount of data. It is also shown that averaging multiple models gives rise to more accurate and less uncertain results than using a single general model. By averaging multiple models, based on various fault situations, fault diagnosis can be general yet accurate.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleA Fault Diagnosis Method for Industrial Gas Turbines Using Bayesian Data Analysis
    typeJournal Paper
    journal volume132
    journal issue4
    journal titleJournal of Engineering for Gas Turbines and Power
    identifier doi10.1115/1.3204508
    journal fristpage41602
    identifier eissn0742-4795
    keywordsMeasurement
    keywordsSensors
    keywordsFuels
    keywordsCompressors
    keywordsIndustrial gases
    keywordsGas turbines
    keywordsTurbines
    keywordsFault diagnosis
    keywordsFlow sensors
    keywordsProbability
    keywordsErrors
    keywordsSteady state AND Patient diagnosis
    treeJournal of Engineering for Gas Turbines and Power:;2010:;volume( 132 ):;issue: 004
    contenttypeFulltext
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