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Detection of precursor wear debris in lubrication systems

机译:检测润滑系统中的前驱物磨损碎片

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On-line health monitoring of aircraft propulsion systems may realize substantial cost savings through implementation of condition-based maintenance programs. Currently, aircraft engine and gearbox oils are monitored using chip detectors that warn the pilot of excessive wear conditions. However, they can only detect large (<200 /spl mu/m) ferrous metal particles. Oil samples are also taken for laboratory spectrographic analysis; however, this procedure is time-consuming and manpower intensive. Several new technologies have emerged. Inductive sensors can now detect both ferrous and non-ferrous metallic particles in the oil, down to about 100 /spl mu/m in size. Vibration monitors have also been developed to detect damage conditions. We report on an alternative method using acoustics for detecting precursor wear debris particles as small as 3 /spl mu/m. By monitoring the size and generation rate of these very small particles, wear trend analysis can predict accelerated wear conditions before significant or catastrophic damage occurs. The acoustic method works by insonifying the oil with a high-frequency acoustic impulse and analyzing the reflected signals. The detection algorithm discriminates between particles and entrained air bubbles on the basis of differences in acoustic signature. Next, the algorithm estimates particle size and computes a statistical history of the particle size distribution and generation rate which is used to determine the wear status of the engine or gearbox. This paper describes the operation of an acoustic sensor and presents test data acquired in a lubrication system simulator.
机译:飞机推进系统的在线健康监测可以通过实施条件的维护计划实现大量成本节省。目前,使用芯片探测器监测飞机发动机和齿轮箱油,该探测器警告过量磨损条件。然而,它们只能检测大(<200 / SPL MU / M)黑色金属颗粒。还采用石油样品进行实验室光谱分析;但是,这个程序是耗时和人力密集的。出现了几种新技术。电感传感器现在可以检测油状物中的黑色金属和有色金属颗粒,尺寸下降至约100 / SPL mu / m。也开发了振动监视器来检测损坏条件。我们报告了一种使用声学检测前体磨损碎片颗粒的替代方法,如3 / SPL mu / m。通过监测这些非常小的颗粒的尺寸和产生率,磨损趋势分析可以在显着或灾难性的损伤发生之前预测加速磨损条件。声学方法通过将油与高频声脉冲的侵蚀和分析反射信号来起作​​用。检测算法基于声学签名的差异鉴别粒子和夹带的气泡。接下来,算法估计粒度并计算用于确定发动机或变速箱的磨损状态的粒度分布和产生速率的统计历史。本文介绍了声学传感器的操作,并呈现在润滑系统模拟器中获取的测试数据。

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