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首页> 外文期刊>Sensors Journal, IEEE >Modeling, Detection, and Disambiguation of Sensor Faults for Aerospace Applications
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Modeling, Detection, and Disambiguation of Sensor Faults for Aerospace Applications

机译:航空航天应用中传感器故障的建模,检测和消歧

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摘要

Sensor faults continue to be a major hurdle for systems health management to reach its full potential. At the same time, few recorded instances of sensor faults exist. It is equally difficult to seed particular sensor faults. Therefore, research is underway to better understand the different fault modes seen in sensors and to model the faults. The fault models can then be used in simulated sensor fault scenarios to ensure that algorithms can distinguish between sensor faults and system faults. The paper illustrates the work with data collected from an electromechanical actuator in an aerospace setting, equipped with temperature, vibration, current, and position sensors. The most common sensor faults, such as bias, drift, scaling, and dropout were simulated and injected into the experimental data, with the goal of making these simulations as realistic as feasible. A neural network-based classifier was then created and tested on both experimental data and the more challenging randomized data sequences. Additional studies were also conducted to determine sensitivity of detection and disambiguation efficacy with respect to severity of fault conditions.
机译:传感器故障仍然是系统健康管理发挥其全部潜能的主要障碍。同时,几乎没有记录到传感器故障的实例。播种特定的传感器故障同样困难。因此,正在进行研究以更好地理解传感器中看到的不同故障模式并对故障进行建模。然后可以将故障模型用于模拟传感器故障场景中,以确保算法可以区分传感器故障和系统故障。本文用从航空航天环境中的机电执行器收集的数据说明了该工作,该数据配有温度,振动,电流和位置传感器。对最常见的传感器故障(例如偏差,漂移,缩放和丢失)进行了仿真,并将其注入到实验数据中,目的是使这些仿真尽可能可行。然后创建了基于神经网络的分类器,并在实验数据和更具挑战性的随机数据序列上进行了测试。还进行了其他研究,以确定关于故障条件严重性的检测灵敏度和消歧效果。

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