Loading [MathJax]/extensions/MathZoom.js
Study on Gas Turbine Gas-Path Fault Diagnosis Method Based on Quadratic Entropy Feature Extraction | IEEE Journals & Magazine | IEEE Xplore

Study on Gas Turbine Gas-Path Fault Diagnosis Method Based on Quadratic Entropy Feature Extraction


Gas turbine gas-path fault diagnosis results based on quadratic entropy feature extraction under different operating conditions.

Abstract:

To avoid disrepair and over-repair and improve gas turbine reliability and availability, gas-path diagnosis is an effective technical means of disseminating early warning...Show More

Abstract:

To avoid disrepair and over-repair and improve gas turbine reliability and availability, gas-path diagnosis is an effective technical means of disseminating early warning information for evolving or impending deterioration. Aiming at the problems of existing gas-path diagnosis methods (i.e., data-driven based gas-path diagnosis and a model-based gas-path diagnosis), this paper proposes a novel gas-path diagnosis method based on model-data hybrid drive, which is a forward solving mathematical process, to ensure real-time monitoring performance. Through case analysis, the proposed diagnostic method is not limited by the intrinsic nonlinear shape change of the characteristic maps of the actual component, which has good diagnostic applicability. And after the quadratic feature extraction of the two-dimensional entropy features (i.e., Shannon entropy and exponential entropy features), it is convenient to obtain visualized gas turbine gas-path diagnosis results for the operation and maintenance personnel. Moreover, although the extracted two-dimensional entropy values will change slightly when the operating conditions change, it can maintain good inter-class separation and intra-class aggregation performance.
Gas turbine gas-path fault diagnosis results based on quadratic entropy feature extraction under different operating conditions.
Published in: IEEE Access ( Volume: 7)
Page(s): 89118 - 89127
Date of Publication: 08 July 2019
Electronic ISSN: 2169-3536

Funding Agency:


References

References is not available for this document.