Intelligent Health Management of Fixed-Wing UAVs: A Deep-Learning-based Approach
Aiya Cui, Ying Zhang, Pengyu Zhang, Wei Dong, Chunyan Wang
Abstract
In this paper, the fault diagnosis and health management of fixed-wing UAVs are investigated based on the deep learning technique. The proposed method includes 5 models: flight data generation model, sample training prediction model based on the Long Short-Term Memory (LSTM) network, prediction model based on the grey model, combined prediction model and health calculation and management model. The realtime output of the health prediction value of the fixed-wing UAVs can be obtained, which makes it possible to take remedial action before the fault occurs. And numerical simulations demonstrate the feasibility of the proposed method.
Topics & Concepts
Fixed wingComputer scienceArtificial intelligenceDeep learningFault (geology)Sample (material)WingEngineeringAerospace engineeringChromatographyGeologyChemistrySeismologyFault Detection and Control SystemsGrey System Theory ApplicationsMachine Fault Diagnosis Techniques