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Real-time propeller fault detection for multirotor drones based on vibration data analysis

Alessandro Baldini, Riccardo Felicetti, Francesco Ferracuti, Alessandro Freddi, Sabrina Iarlori, Andrea Monteriù

2023Engineering Applications of Artificial Intelligence43 citationsDOIOpen Access PDF

Abstract

This article presents a Fault Detection (FD) method to deal with propeller faults on multirotor drones in real-time. Several solutions have been proposed in the literature, however, they depend on additional sensors and/or dedicated hardware to deal with heavy computational complexity. So, they cannot be implemented in off-the-shelf commercial devices, i.e., without the aid of additional on-board sensors and/or extra computational power. The proposed method, instead, requires the on-board Inertial Measurement Unit (IMU) data only: by combining Finite Impulse Response (FIR), together with sparse classifiers, only a subset of the features is actually needed online and the FD is thus feasible in real-time. Design and tests are based on real flight data from a hexarotor, equipped with a conventional ArduPilot-based controller. The classification accuracy in testing is up to 93.37% (98.21%) with a binary tree (Linear Support Vector Machine (LSVM)). Moreover, the space and time complexity of the proposed method is low: on a PixHawk Cube flight controller, it requires less than 2% of the cycle time, and can then run in real-time. Finally, the proposed fault detection solution is model-free and it can be easily generalized to other multirotor vehicles.

Topics & Concepts

MultirotorComputer sciencePropellerInertial measurement unitFault detection and isolationReal-time computingImpulse (physics)DroneComputational complexity theoryTime complexityControl theory (sociology)Artificial intelligenceAlgorithmActuatorPhysicsMarine engineeringGeneticsAerospace engineeringBiologyControl (management)EngineeringQuantum mechanicsAnomaly Detection Techniques and ApplicationsIoT and GPS-based Vehicle Safety SystemsWater Quality Monitoring Technologies
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