Abstract
Predictive Maintenance (PM) strategies have gained interest in the aviation industry to reduce maintenance costs and Aircraft On Ground (AOG) time. Taking advantage of condition monitoring data from aircraft systems, Prognostics and Health Maintenance (PHM) practitioners have been predicting the life span of aircraft components by applying Remaining Useful Life (RUL) concepts. Additionally, in prognostics, the construction of Health Indicators (HIs) plays a significant role when failure advent patterns are strenuous to be discovered directly from data. HIs are typically supported by data-driven models dealing with non-stationary signals, e.g., aircraft sensor time-series, in which data transformations from time and frequency domains are required. In this paper, we build time-frequency HIs based on the construction of the Hilbert spectrum and propose the integration of a physics-based model with a data-driven model to predict the RUL of aircraft cooling units. Using data from a major airline, and considering two health degradation stages, the advent of failures on aircraft systems can be estimated with data-driven Machine Learning models (ML). Specifically, our results reveal that the analyzed cooling units experience a normal degradation stage before an abnormal degradation that emerges within the last flight hours of useful life.
Funder
European Union
Portuguese Foundation for Science and Technology
Reference38 articles.
1. Aircraft Fleet Health Monitoring with Anomaly Detection Techniques
2. Remaining useful life prognostic estimation for aircraft subsystems or components: A review;Chen;Proceedings of the 10th International Conference on Electronic Measurement and Instruments,2011
3. Machine Learning based Data Driven Diagnostics & Prognostics Framework for Aircraft Predictive Maintenance;Adhikari;Proceedings of the 10th International Symposium on NDT in Aerospace,2018
4. Features Selection Procedure for Prognostics: An Approach Based on Predictability
5. Diagnostic enhancements for air vehicle HUMS to increase prognostic system effectiveness;Patrick;Proceedings of the 2009 IEEE Aerospace Conference,2009
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