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Rotor Fault Detection and Identification on a Hexacopter Based on Statistical Time Series Methods

机译:基于统计时间序列方法的六泊车转子故障检测和识别

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This work introduces the use of statistical time series methods to detect rotor failures in multicopters. A concise overview of the development of various time series models using scalar or vector signals, statistics, and fault detection methods is provided. The fault detection methods employed in this study are based on parametric time series representations and response-only signals of the aircraft state, as the external excitation is non-observable. The comparative assessment of the effectiveness of scalar and vector statistical models and several residual-based fault detection methods are presented in the presence of external disturbances, such as various levels of turbulence and uncertainty, and for different rotor failure scenarios. The results of this study demonstrate the effectiveness of all the proposed residual-based time series methods in terms of prompt rotor fault detection, although the methods based on Vector AutoRegressive (VAR) models exhibit improved performance compared to their scalar counterparts with respect to their robustness and effectiveness for different turbulence levels and ability to distinguish between healthy and fault compensated condition after rotor failure.
机译:这项工作介绍了使用统计时间序列方法来检测多个转换器中的转子故障。提供了使用标量或矢量信号,统计和故障检测方法的各种时间序列模型的开发的简明概述。本研究中采用的故障检测方法基于参数序列表示和飞机状态的响应信号,因为外部激励是不可观察的。在存在外部干扰的情况下,诸如各种湍流和不确定度以及不同转子故障情景的外部干扰存在的比较评估和若干残留的故障检测方法以及不同水平的湍流和不确定性。本研究结果表明,在提示转子故障检测方面,所有提出的残余时间序列方法的有效性,尽管基于载体自回转(VAR)模型的方法与其鲁棒性相比,基于矢量自动增加(var)模型的方法表现出改进的性能不同湍流水平的有效性以及区分转子故障后的健康和故障补偿条件的能力。

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