推力模式下无人机故障自动检测方法

M. Ghazali, W. Rahiman, D. Novaliendry, Risfendra
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引用次数: 0

摘要

近年来,由于无人机的灵活性和不断下降的价格,人们对其产生了相当大的兴趣。无人机由电气和机械部件组成,这些部件的故障可能会降低无人机的性能,更糟糕的是,导致它坠毁。本文介绍了基于原始振动和声学参数的故障检测方法。模拟电机故障和螺钉松动,以表示电气和机械故障。基于从MEMS传感器获得的原始数据,两种方法都可以成功地检测到电机故障。这两种方法的原始数据都难以检测到机械故障,因为记录的振幅值接近无人机的正常状态。与机械故障相比,这些方法适用于电机故障的检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Drone Fault Detection Approach in Thrust Mode State
In recent years, there has been considerable interest in drones due to their flexibility and decreasing price. Drones are made up of electrical and mechanical components, and failure in these components might deteriorate the drone’s performance and, worse, lead it to crash. In this study, fault detection approaches based on raw vibration and acoustic parameters were introduced. Motor failure and loose screws are simulated to represent electrical and mechanical faults. Based on the raw data obtained from the MEMS sensors, motor failure can be successfully detected by both approaches. The mechanical fault is difficult to be detected by the raw data of both approaches as the amplitude values recorded are close to the normal drone condition. These approaches are suitable to be applied in detecting motor failure compared to mechanical faults.
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