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Automated Gas Turbine Sensor Fault Diagnostics

conference contribution
posted on 2024-02-09, 18:15 authored by Jombo Gbanaibolou, Tony Latimer, Jonathan David GriffithsJonathan David Griffiths, Yu Zhang
<p>Sensors provide a means of detecting the actual operating condition of the gas turbine at any point in time. As such, detecting when they exhibit anomalous behaviour is very important to prevent inaccurate performance predictions and costly gas turbine component failures. This paper presents an automated sensor fault detection approach based on the maximal overlap discrete wavelet transform for the detection of the presence of anomalies such as bias, spike, stuck signal, cross-talk and erratic fault in a sensor signal. A multi-sensor validation scheme based on using the median signal as a reference signal within a sensor group is shown to be a robust technique to differentiate sensor anomalies due to gas turbine transient operation from actual sensor faults. The approach presented in this paper lends itself not only suitable for gas turbines in service, but also for gas turbines undergoing acceptance testing. As the timescales involved during a gas turbine acceptance test are just in hours, the conventional approach of trending and setting alarm limits are not sensitive to sensor anomalies which occur within the set alarm limits. Wavelet-based approach combined with a multi-sensor validation scheme provides a viable alternative.</p>

History

School affiliated with

  • School of Engineering (Research Outputs)

Publisher

The American Society of Mechanical Engineers

ISBN

978-0-7918-5112-8

Date Submitted

2019-09-09

Date Accepted

2018-06-11

Date of First Publication

2018-06-11

Date of Final Publication

2018-06-11

Event Name

ASME Turbo Expo 2018: Turbomachinery Technical Conference and Exposition

Event Dates

June 11–15

ePrints ID

36504

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