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E-Pilots: A System to Predict Hard Landing During the Approach Phase of Commercial Flights

Débora Gil, Aura Hernández-Sabaté, Julien Enconniere, Saryani Asmayawati, Pau Folch, Juan Borrego-Carazo, Miquel Àngel Piera

2021IEEE Access20 citationsDOIOpen Access PDF

Abstract

More than half of all commercial aircraft operation accidents could have been prevented by executing a go-around. Making timely decision to execute a go-around manoeuvre can potentially reduce overall aviation industry accident rate. In this paper, we describe a cockpit-deployable machine learning system to support flight crew go-around decision-making based on the prediction of a hard landing event. This work presents a hybrid approach for hard landing prediction that uses features modelling temporal dependencies of aircraft variables as inputs to a neural network. Based on a large dataset of 58177 commercial flights, the results show that our approach has 85% of average sensitivity with 74% of average specificity at the go-around point. It follows that our approach is a cockpit-deployable recommendation system that outperforms existing approaches.

Topics & Concepts

CockpitCrewComputer scienceAviationArtificial neural networkSensitivity (control systems)AeronauticsEvent (particle physics)Point (geometry)Real-time computingSimulationArtificial intelligenceAerospace engineeringEngineeringPhysicsGeometryElectronic engineeringMathematicsQuantum mechanicsAutonomous Vehicle Technology and SafetyHuman-Automation Interaction and SafetyAerospace and Aviation Technology
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