基于飞行传感器数据的飞机部件早期故障检测

Weili Yan, Jun-Hong Zhou
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引用次数: 6

摘要

本文提出了一种基于分类的飞机部件故障检测模型,通过对历史飞行传感器数据的挖掘来检测飞机部件故障。将飞机部件故障的检测表述为一个分类问题。首先,通过统计分析选择与故障相关的传感器;其次,利用选定的传感器提取基于飞行相位的统计特征;第三,利用与航班标签的相关性分析选择几个重要特征。最后,根据选取的特征,应用随机森林算法建立故障分类模型。实验结果表明,该方法可以比现有的飞机报警系统更早或更早地检测到部件故障。
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Early Fault Detection of Aircraft Components Using Flight Sensor Data
In this paper, a classification-based anomaly detection model is proposed to detect the aircraft component fault by exploring the historical flight sensor data. Detection of the aircraft component fault is formulated as a classification problem. Firstly, several sensors relevant to the fault are selected using statistical analysis. Secondly, flight phase-based statistical features are extracted using the selected sensors. Thirdly, several important features are selected using correlation analysis with the flight label. Finally, the random forest algorithm is applied to build the fault classification model based on the selected features. Experimental results show the proposed method can detect the component fault earlier than or as early as the current aircraft alarming system.
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