Redirigiendo al acceso original de articulo en 21 segundos...
Inicio  /  Aerospace  /  Vol: 9 Par: 6 (2022)  /  Artículo
ARTÍCULO
TITULO

Remaining Useful Life Estimation of Cooling Units via Time-Frequency Health Indicators with Machine Learning

Raúl Llasag Rosero    
Catarina Silva and Bernardete Ribeiro    

Resumen

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.

 Artículos similares

       
 
Feixiang Ren, Jiwang Du and Daofang Chang    
To address the challenge of accurate lifespan prediction for bearings in different operating conditions within ship propulsion shaft systems, a two-stage prediction model based on an enhanced domain adversarial neural network (DANN) is proposed. Firstly,... ver más

 
Simone Castelli and Andrea Belleri    
In recent years, structural health monitoring, starting from accelerometric data, is a method which has become widely adopted. Among the available techniques, machine learning is one of the most innovative and promising, supported by the continuously inc... ver más
Revista: Applied Sciences

 
Wang Xiao, Yifan Chen, Huisheng Zhang and Denghai Shen    
Turbine blades are crucial components exposed to harsh conditions, such as high temperatures, high pressures, and high rotational speeds. It is of great significance to accurately predict the life of blades for reducing maintenance cost and improving the... ver más
Revista: Applied Sciences

 
Haochen Qin, Xuexin Fan, Yaxiang Fan, Ruitian Wang, Qianyi Shang and Dong Zhang    
Predicting the remaining useful life (RUL) of batteries can help users optimize battery management strategies for better usage planning. However, the RUL prediction accuracy of lithium-ion batteries will face challenges due to fewer data samples availabl... ver más
Revista: Applied Sciences

 
David Gerhardinger, Anita Domitrovic, Karolina Krajcek Nikolic and Darko Ivancevic    
This paper introduces an expert system approach for predicting the remaining useful life (RUL) of light aircraft structural components by analyzing operational and maintenance records. The expert system consists of four modules: knowledge acquisition, kn... ver más
Revista: Aerospace