What is it about?

Early detection of faults in the aircraft landing gear system is crucial to avoid damage to people, aircraft, and national facilities. This paper provides the tools for the early detection of faults at the landing gear system focusing mainly in the hydraulic system and sensor failures.

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Why is it important?

We propose a two tier system. The first tier focuses on the classification of faults in the hydraulic system at component level, whilst the second one compensates the failure of sensors by considering the redundant ones to improve the predictions of the machine learning algorithms. Such integration markedly improves classification accuracy, with empirical evidence showing an increase from 95.88% to 98.76% post-imputation.

Perspectives

Future generations of flight control systems will need to be more adaptive/intelligent to cope with the extra safety and reliability requirements for UAVs autonomy. Fault detection of Actuation is an important part of the Health Management System used to identify anomalies in UAVs performance and to ensure their safe deployment in real-world applications. This paper aims to contribute in this field by allowing to understand when a system is not working properly in order to fix the problem early and avoid potential risks to people and national infrastructure.

Adolfo Perrusquia
Cranfield University

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This page is a summary of: Advancing Fault Diagnosis in Aircraft Landing Gear: An innovative two-tier Machine Learning Approach with intelligent sensor data management, January 2024, American Institute of Aeronautics and Astronautics (AIAA),
DOI: 10.2514/6.2024-0759.
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