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Article

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Title

Turbofan engine health status prediction with neural network pattern recognition and automated feature engineering

Authors

[ 1 ] Instytut Napędów i Lotnictwa, Wydział Inżynierii Lądowej i Transportu, Politechnika Poznańska | [ P ] employee

Scientific discipline (Law 2.0)

[2.7] Civil engineering, geodesy and transport

Year of publication

2024

Published in

Aircraft Engineering and Aerospace Technology

Journal year: 2024 | Journal volume: vol. 96 | Journal number: no. 11

Article type

scientific article

Publication language

english

Keywords
EN
  • Aircraft turbofan engine
  • Health status prediction
  • Neural network pattern recognition
  • Artificial neural network
  • Prognostic health monitoring
  • Turbine engine failure analysis
Abstract

EN Purpose This study aims to present the concept of aircraft turbofan engine health status prediction with artificial neural network (ANN) pattern recognition but augmented with automated features engineering (AFE). Design/methodology/approach The main concept of engine health status prediction was based on three case studies and a validation process. The first two were performed on the engine health status parameters, namely, performance margin and specific fuel consumption margin. The third one was generated and created for the engine performance and safety data, specifically created for the final test. The final validation of the neural network pattern recognition was the validation of the proposed neural network architecture in comparison to the machine learning classification algorithms. All studies were conducted for ANN, which was a two-layer feedforward network architecture with pattern recognition. All case studies and tests were performed for both simple pattern recognition network and network augmented with automated feature engineering (AFE). Findings The greatest achievement of this elaboration is the presentation of how on the basis of the real-life engine operational data, the entire process of engine status prediction might be conducted with the application of the neural network pattern recognition process augmented with AFE. Practical implications This research could be implemented into the engine maintenance strategy and planning. Engine health status prediction based on ANN augmented with AFE is an extremely strong tool in aircraft accident and incident prevention. Originality/value Although turbofan engine health status prediction with ANN is not a novel approach, what is absolutely worth emphasizing is the fact that contrary to other publications this research was based on genuine, real engine performance operational data as well as AFE methodology, which makes the entire research very reliable. This is also the reason the prediction results reflect the effect of the real engine wear and deterioration process.

Pages (from - to)

19 - 26

DOI

10.1108/AEAT-04-2024-0111

URL

https://www.emerald.com/insight/content/doi/10.1108/AEAT-04-2024-0111/full/html?utm_source=smc_email_onboarding&utm_medium=email&utm_campaign=apa_author_journals_access_2024-8-20

License type

CC BY (attribution alone)

Open Access Mode

open journal

Open Access Text Version

final published version

Date of Open Access to the publication

at the time of publication

Ministry points / journal

70

Impact Factor

1,2 [List 2023]

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