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首页> 外文期刊>Journal of Engineering for Gas Turbines and Power >Enhanced Fault Localization Using Probabilistic Fusion With Gas Path Analysis Algorithms
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Enhanced Fault Localization Using Probabilistic Fusion With Gas Path Analysis Algorithms

机译:使用概率融合和气路分析算法的增强型故障定位

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摘要

A method for gas turbine fault identification from gas path data, in situations with a limited number of measurements, is presented. The method consists of a two stage process: (a) localization of the component or group of components with a fault and (b) fault identification by determining the precise location and magnitude of component performance deviations. The paper focuses on methods that allow improved localization of the faulty components. Gas path analysis (GPA) algorithms are applied to diagnostic sets comprising different combinations of engine components. The results are used to derive fault probabilities, which are then fused to derive a conclusion as to the location of a fault. Once the set of possible faulty components is determined, a well defined diagnostic problem is formulated and the faulty parameters are determined by means of a suitable algorithm. It is demonstrated that the method has an improved effectiveness when compared with previous GPA based methods.
机译:提出了一种在测量次数有限的情况下根据气路数据识别燃气轮机故障的方法。该方法包括两个阶段的过程:(a)定位具有故障的组件或组件组,以及(b)通过确定组件性能偏差的精确位置和大小来识别故障。本文重点介绍可改进故障组件定位的方法。气路分析(GPA)算法应用于诊断集,该诊断集包括发动机组件的不同组合。结果用于导出故障概率,然后将其融合以得出有关故障位置的结论。一旦确定了可能的故障组件集,便会制定明确定义的诊断问题,并通过适当的算法确定故障参数。结果表明,与以前的基于GPA的方法相比,该方法具有更高的有效性。

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