Title of article :
Prediction of Failure Time and Remaining Useful Life in Aviation Systems: Predictors, models, and challenges
Author/Authors :
Babaee, Mahsa Faculty of Management and Industrial Engineering - Malek Ashtar University of Technology, Iran , Gheidar-Kheljani, Jafar Faculty of Management and Industrial Engineering - Malek Ashtar University of Technology, Iran , Khazaee, Mostafa Faculty of Aerospace - Malek Ashtar University of Technology, Iran , Karbasian, Mahdi Faculty of Management and Industrial Engineering - Malek Ashtar University of Technology, Iran
Abstract :
In many important industries, such as aerial transportation, offshore wind turbine (OWT) structures, and nuclear power plants
that reached or are near the end of their useful life, the structural conditions for continued usage are acceptable. Thus, safe continued
operation with required modifications and assessment is more cost-effective than replacing them with a new system. To achieve this
goal, many studies have been performed on predicting failure time and remaining useful life, especially in systems that require a very
high level of reliability. The present review investigates the articles that predict the remaining useful life or failure time in aviation
systems, from three perspectives: 1. Methods and algorithms, especially Machine Learning algorithms, which are growing in recent
years in the field of Prognosis and Health Management. 2. Historical predictors such as working life history, environmental
conditions, mechanical loads, failure records, asset age, maintenance information, or sensor variables and indicators that can be
continuously controlled in each system, such as noise, temperature, vibration, and pressure.3. Challenges of researches on prediction
of the failure time of flying systems. The literature assessment in this field shows that using diagnostic and prognostic outputs to
identify possible defects and their origin, checking the system's health, and predicting the remaining useful life (RUL) is increasing
due to market needs.
Keywords :
Aviation accidents , Failure time , Machine learning
Journal title :
International Journal of Reliability, Risk and Safety: Theory and Application