OATAO - Open Archive Toulouse Archive Ouverte Open Access Week

A hybrid approach of machine learning and expert knowledge for projection of aircraft operability

Manikar, Sagar Shenoy and Jézégou, Joël and Saqui-Sannes, Pierre de and Asseman, Philippe and Bénard, Emmanuel A hybrid approach of machine learning and expert knowledge for projection of aircraft operability. ( In Press: 2021) In: 11th EASN International Conference, 1 September 2021 - 3 September 2021 (Virtual, Italy).

Full text not available from this repository.

Abstract

Aircraft operational performance is a key driving factor to flight punctuality and airline profitability. The ability of a system to meet its operational requirements in terms of reliability, availability and costs is termed as `Operability'. It is of high importance for aircraft manufacturers to project operability during the early stages of development of an aircraft in order to make trade-off studies. This paper proposes a hybrid approach of using machine learning and expert knowledge to aid the projection of aircraft operational performance during the early design stages. This approach aims to benefit from the huge amount of in-service data available from the current and past fleet of aircraft. Hence, machine learning techniques are used to learn how different technical issues and their associated maintenance activities impact aircraft operations. Expert knowledge is used to establish the default rules of the simulation model used for the operability projection. Results from machine learning are used to improve these rules allowing one to make holistic projections of the operational performance of future aircraft. This approach allows one to estimate the elapsed time in different operational states of an aircraft like flying, turn-around, etc. which can then be used to calculate different operability Key Performance Indicators (KPIs) like aircraft reliability and maintenance unavailability.

Item Type:Conference or Workshop Item (Paper)
Audience (conference):International conference proceedings
Uncontrolled Keywords:
Institution:Other partners > Airbus (FRANCE)
Université de Toulouse > Institut Supérieur de l'Aéronautique et de l'Espace - ISAE-SUPAERO (FRANCE)
Laboratory name:
Statistics:download
Deposited On:19 Oct 2021 09:56

Repository Staff Only: item control page