Real-time quadrotor actuator fault detection and isolation using multivariate statistical analysis techniques with sensor measurements

Jae-Hyeon Park, Cho-Yong Jun, Jin-yeong Jeong, D. Chang
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引用次数: 5

Abstract

Quadrotor, as an unmanned aerial vehicle, has significant potential among military and commercial applications and is utilized in various fields. As the quadrotor usage is more popularized, fault diagnosis becomes important for safe quadrotor flight. In this work, we use data-driven approaches which generally do not require a complex model of quadrotor to detect and to isolate an actuator fault in a quadrotor. We made a circuit that artificially blocks a motor signal to stop the propeller motor and collected real-time sensor measurements in a normal condition and each actuator’s fault condition. Then, we applied various statistical analysis techniques on the collected data to train the diagnosis model and used this model on the new data to test and to compare the performance of the techniques. Those techniques are linear discriminant analysis, principal component analysis, multi-principal component analysis, fisher discriminant analysis, partial least squares regression, and canonical variate analysis. Among the techniques, partial least squares regression shows the best performance for detecting and isolating an actuator fault of a quadrotor.
基于传感器测量的多变量统计分析技术的实时四旋翼执行器故障检测与隔离
四旋翼飞行器作为一种无人驾驶飞行器,在军事和商业应用中具有巨大的潜力,在各个领域都得到了应用。随着四旋翼飞机使用的日益普及,故障诊断对四旋翼飞机的安全飞行至关重要。在这项工作中,我们使用数据驱动的方法,通常不需要一个复杂的四旋翼模型来检测和隔离四旋翼中的执行器故障。我们制作了一个电路,人工阻断电机信号,使螺旋桨电机停止工作,并实时采集传感器在正常状态和各执行器故障状态下的测量数据。然后,我们对收集到的数据应用各种统计分析技术来训练诊断模型,并将该模型用于新数据上测试和比较技术的性能。这些技术包括线性判别分析、主成分分析、多主成分分析、fisher判别分析、偏最小二乘回归和典型变量分析。其中,偏最小二乘回归对四旋翼飞行器执行器故障的检测和隔离效果最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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