Detection of Emerging Faults on Industrial Gas Turbines Using Extended Gaussian Mixture Models

Joint Authors

Zhang, Yu
Bingham, Chris
Martínez-García, Miguel
Cox, Darren

Source

International Journal of Rotating Machinery

Issue

Vol. 2017, Issue 2017 (31 Dec. 2017), pp.1-9, 9 p.

Publisher

Hindawi Publishing Corporation

Publication Date

2017-05-21

Country of Publication

Egypt

No. of Pages

9

Main Subjects

Mechanical Engineering

Abstract EN

This paper extends traditional Gaussian mixture model (GMM) techniques to provide recognition of operational states and detection of emerging faults for industrial systems.

A variational Bayesian method allows a GMM to cluster with its mixture components to facilitate the extraction of steady-state operational behaviour; this is recognised as being a primary factor in reducing the susceptibility of alternative prognostic/diagnostic techniques, which would initiate false-alarms resulting from control set-point and load changes.

Furthermore, a GMM with an outlier component is discussed and applied for direct novelty/fault detection.

An advantage of the variational Bayesian method over traditional predefined thresholds is the extraction of steady-state data during both full- and part-load cases, and a primary advantage of the GMM with an outlier component is its applicability for novelty detection when there is a lack of prior knowledge of fault patterns.

Results obtained from the real-time measurements on the operational industrial gas turbines have shown that the proposed technique provides integrated preprocessing, benchmarking, and novelty/fault detection methodology.

American Psychological Association (APA)

Zhang, Yu& Bingham, Chris& Martínez-García, Miguel& Cox, Darren. 2017. Detection of Emerging Faults on Industrial Gas Turbines Using Extended Gaussian Mixture Models. International Journal of Rotating Machinery،Vol. 2017, no. 2017, pp.1-9.
https://search.emarefa.net/detail/BIM-1169562

Modern Language Association (MLA)

Zhang, Yu…[et al.]. Detection of Emerging Faults on Industrial Gas Turbines Using Extended Gaussian Mixture Models. International Journal of Rotating Machinery No. 2017 (2017), pp.1-9.
https://search.emarefa.net/detail/BIM-1169562

American Medical Association (AMA)

Zhang, Yu& Bingham, Chris& Martínez-García, Miguel& Cox, Darren. Detection of Emerging Faults on Industrial Gas Turbines Using Extended Gaussian Mixture Models. International Journal of Rotating Machinery. 2017. Vol. 2017, no. 2017, pp.1-9.
https://search.emarefa.net/detail/BIM-1169562

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references

Record ID

BIM-1169562