Remaining useful life prognostics for aeroengine based on superstatistics and information fusion

Abstract Remaining useful life (RUL) prognostics is a fundamental premise to perform condition-based maintenance (CBM) for a system subject to performance degradation. Over the past decades, research has been conducted in RUL prognostics for aeroengine. However, most of the prognostics technologies and methods simply base on single parameter, making it hard to demonstrate the specific characteristics of its degradation. To solve such problems, this paper proposes a novel approach to predict RUL by means of superstatistics and information fusion. The performance degradation evolution of the engine is modeled by fusing multiple monitoring parameters, which manifest non-stationary characteristics while degrading. With the obtained degradation curve, prognostics model can be established by state-space method, and then RUL can be estimated when the time-varying parameters of the model are predicted and updated through Kalman filtering algorithm. By this method, the non-stationary degradation of each parameter is represented, and multiple monitoring parameters are incorporated, both contributing to the final prognostics. A case study shows that this approach enables satisfactory prediction evolution and achieves a markedly better prognosis of RUL.

[1]  C. T. Barker,et al.  Optimal non-periodic inspection for a multivariate degradation model , 2009, Reliab. Eng. Syst. Saf..

[2]  Zhong Qiang-hui,et al.  Reliability analysis approach based on multivariate degradation data , 2011 .

[3]  J. Pickands Statistical Inference Using Extreme Order Statistics , 1975 .

[4]  Zhang Munan An improved method for aeroengine residual life prediction , 2013 .

[5]  Dong Wenjie,et al.  Abrupt climate change detection based on heuristic segmentation algorithm , 2005 .

[6]  Wu Hai-qiao Residual useful life prediction for aircraft engine based on information fusion , 2012 .

[7]  Ding Fan Novel Non-stationary Time Series Anomaly Detection Model Based on Superstatistics Theory , 2011 .

[8]  Zuo Hongfu Gas path analysis based on multi-sources diagnostics information fusion , 2013 .

[9]  Yu Jinpei,et al.  A Carrier Tracking Algorithm Based on Adaptive Extended Kalman Filter , 2012 .

[10]  C. Joseph Lu,et al.  Using Degradation Measures to Estimate a Time-to-Failure Distribution , 1993 .

[11]  Christian Beck,et al.  From time series to superstatistics. , 2005, Physical review. E, Statistical, nonlinear, and soft matter physics.

[12]  Chanseok Park,et al.  Stochastic degradation models with several accelerating variables , 2006, IEEE Transactions on Reliability.

[13]  V. Crk,et al.  Reliability assessment from degradation data , 2000, Annual Reliability and Maintainability Symposium. 2000 Proceedings. International Symposium on Product Quality and Integrity (Cat. No.00CH37055).

[14]  Rong Li,et al.  Residual-life distributions from component degradation signals: A Bayesian approach , 2005 .

[15]  Wei Quan,et al.  Interlaced optimal-REQUEST and unscented Kalman filtering for attitude determination , 2013 .

[16]  William J. Kolarik,et al.  Multivariate performance reliability prediction in real-time , 2001, Reliab. Eng. Syst. Saf..

[17]  Kong Xiang-tian Gas-path fault diagnosis for aero-engine based on variable weighted least-squares , 2011 .

[18]  Michael G. Pecht,et al.  A prognostics and health management roadmap for information and electronics-rich systems , 2010, Microelectron. Reliab..

[19]  B. Audone,et al.  Multiple Linear Regression to detect shielding effectiveness degradations , 2008, 2008 International Symposium on Electromagnetic Compatibility - EMC Europe.

[20]  Kai Yang,et al.  Performance degradation analysis using principal component method , 1997, Annual Reliability and Maintainability Symposium.

[21]  Michael Pecht A Prognostics and Health Management Roadmap for Information and Electronics-Rich Systems , 2009 .

[22]  Peng Wang,et al.  Reliability prediction based on degradation modeling for systems with multiple degradation measures , 2004, Annual Symposium Reliability and Maintainability, 2004 - RAMS.

[23]  Michael Pecht,et al.  Application of a state space modeling technique to system prognostics based on a health index for condition-based maintenance , 2012 .

[24]  L. C. Barbosa,et al.  Raman, hyperraman, hyper-Rayleigh, two-photon excited luminescence and morphology-dependent-modes in a single optical tweezers system , 2005 .

[25]  R. E. Kalman,et al.  A New Approach to Linear Filtering and Prediction Problems , 2002 .

[26]  Zone-Ching Lin,et al.  Multiple linear regression analysis of the overlay accuracy model , 1999, ICMTS 1999.