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首页> 外文期刊>Journal of Engineering for Gas Turbines and Power >A Fault Diagnosis Method for Industrial Gas Turbines Using Bayesian Data Analysis
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A Fault Diagnosis Method for Industrial Gas Turbines Using Bayesian Data Analysis

机译:贝叶斯数据分析的工业燃气轮机故障诊断方法

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摘要

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.
机译:本文提出了一种稳定状态下工业燃气轮机的离线故障诊断方法。故障诊断在燃气轮机所有者从预防性维护转变为预测性维护的工作中起着重要作用,因此降低了维护成本。自诞生以来,在该领域已研究了许多技术,但没有一种技术比其他技术完全好,并且可以完美地解决问题。故障诊断是一个具有挑战性的问题,因为燃气轮机可能会发生许多故障情况,并且燃气轮机的多个组件可能同时发生多个故障。针对一种故障情况量身定制的算法在其他故障情况下可能效果不佳。在整体故障情况下表现良好的通用算法往往会在个别故障情况下损害其准确性。除了通用性与准确性问题之外,故障诊断的另一个挑战性方面是,诊断中使用的数据包含错误。数据包括从燃气轮机获得的测量值。测量结果包含随机误差,通常还包含系统误差,例如传感器偏差。为了保持通用性和准确性,在一个层次模型中实现了针对各种故障情况量身定制的多个贝叶斯模型。故障情况包括一个组件中发生单个故障,以及多个组件中发生多个故障。除了在燃气轮机的组件中发生故障之外,传感器偏差还明确包含在多个模型中,因此也可以估算偏差的大小(如果有)。根据数据支持每种模型的多少,对这些多个贝叶斯模型的结果进行平均。 Gibbs采样用于贝叶斯模型的计算。所提出的方法被应用于配备有故障压缩机和偏置燃料流量传感器的燃气轮机的故障诊断。所提出的方法利用有限的数据量成功地诊断了压缩机故障的幅度和燃油流量传感器的偏差。还表明,与使用单个通用模型相比,对多个模型求平均值可以得出更准确,更不确定的结果。通过基于各种故障情况对多个模型求平均,故障诊断可以是通用而准确的。

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  • 来源
    《Journal of Engineering for Gas Turbines and Power》 |2010年第4期|041602.1-041602.6|共6页
  • 作者单位

    School of Aerospace Engineering, Georgia Institute of Technology, Atlanta, GA 30332-0150;

    School of Aerospace Engineering, Georgia Institute of Technology, Atlanta, GA 30332-0150;

    School of Aerospace Engineering, Georgia Institute of Technology, Atlanta, GA 30332-0150;

    School of Industrial and Systems Engineering, Georgia Institute of Technology, Atlanta, GA 30332-0205;

    Service Engineering, GE Energy, Atlanta, GA 30339-8402;

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