Aerospace (Dec 2021)

A Method for Aero-Engine Gas Path Anomaly Detection Based on Markov Transition Field and Multi-LSTM

  • Langfu Cui,
  • Chaoqi Zhang,
  • Qingzhen Zhang,
  • Junle Wang,
  • Yixuan Wang,
  • Yan Shi,
  • Cong Lin,
  • Yang Jin

DOI
https://doi.org/10.3390/aerospace8120374
Journal volume & issue
Vol. 8, no. 12
p. 374

Abstract

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There are some problems such as uncertain thresholds, high dimension of monitoring parameters and unclear parameter relationships in the anomaly detection of aero-engine gas path. These problems make it difficult for the high accuracy of anomaly detection. In order to improve the accuracy of aero-engine gas path anomaly detection, a method based on Markov Transition Field and LSTM is proposed in this paper. The correlation among high-dimensional QAR data is obtained based on Markov Transition Field and hierarchical clustering. According to the correlation analysis of high-dimensional QAR data, a multi-input and multi-output LSTM network is constructed to realize one-step rolling prediction. A Gaussian mixture model of the residuals between predicted value and true value is constructed. The three-sigma rule is applied to detect outliers based on the Gaussian mixture model of the residuals. The experimental results show that the proposed method has high accuracy for aero-engine gas path anomaly detection.

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