Performance-based fault diagnosis of a gas turbine engine using an integrated support vector machine and artificial neural network method

Date

2018-11-18

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Journal ISSN

Volume Title

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SAGE

Department

Type

Article

ISSN

0957-6509

Format

Free to read from

Citation

Fentaye AD, Ul-Haq Gilani SI, Baheta AT, Li YG. (2019) Performance-based fault diagnosis of a gas turbine engine using an integrated support vector machine and artificial neural network method. Proceedings of the Institution of Mechanical Engineers, Part A: Journal of Power and Energy, Volume 233, Issue 6, September 2019, pp. 786-802

Abstract

An effective and reliable gas path diagnostic method that could be used to detect, isolate, and identify gas turbine degradations is crucial in a gas turbine condition-based maintenance. In this paper, we proposed a new combined technique of artificial neural network and support vector machine for a two-shaft industrial gas turbine engine gas path diagnostics. To this end, an autoassociative neural network is used as a preprocessor to minimize noise and generate necessary features, a nested support vector machine to classify gas path faults, and a multilayer perceptron to assess the magnitude of the faults. The necessary data to train and test the method are obtained from a performance model of the case engine under steady-state operating conditions. The test results indicate that the proposed method can diagnose both single- and multiple-component faults successfully and shows a clear advantage over some other methods in terms of multiple fault diagnosis. Moreover, 5-8 sets of measurements have been used to assess the prediction accuracy, and only a 2.3% difference was observed. This result indicates that the proposed method can be used for multiple fault diagnosis of gas turbines with limited measurements.

Description

Software Description

Software Language

Github

Keywords

Sensor, gas turbine, artificial neural network, support vector machine, gas path diagnostics

DOI

Rights

Attribution-NonCommercial 4.0 International

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