Data-driven diagnosis of multicopter thrust fault using supervised learning with inertial sensors

Date

2023-09-25

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AIAA

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Article

ISSN

2327-3097

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Citation

Kim T, Kim S, Shin H-S. (2023) Data-driven diagnosis of multicopter thrust fault using supervised learning with inertial sensors. Journal of Aerospace Information Systems, Volume 20, Number 11, November 2023, pp. 690-701

Abstract

This study proposes a data-driven fault diagnosis for multicopter unmanned aerial vehicles that uses the principal direction vector of inertial measurement unit (IMU) sensor signals calculated by principal component analysis. The main idea comes from the fact that a normal sphere-shaped distribution of the sensor data changes to a specific elliptical shape under a certain thrust fault situation. The fault diagnosis is based on classification and regression using supervised learning with the gyroscope and accelerometer datasets of an IMU. We analyze the performance of the proposed approach by depending on different learning algorithms. To verify the diagnostic performance, ground experiments with a hexacopter on the gimbaled jig are performed for various cases of damaged propellers. Then, the applicability of the proposed data-driven fault diagnosis is confirmed by analyzing the accuracy of the fault’s location and degree.

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Github

Keywords

onboard sensors, vibration measuring instruments, unmanned aerial vehicle, propellers, artificial neural network, support vector machine, fault detection and diagnosis, inertial measurement unit, fault detection, data-driven system monitoring

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Attribution-NonCommercial 4.0 International

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