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首页> 外文期刊>Quarterly reports of RTRI >Abnormality Detection for Auxiliary Drive Shafts on Diesel Cars Using Vibration Condition Monitoring
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Abnormality Detection for Auxiliary Drive Shafts on Diesel Cars Using Vibration Condition Monitoring

机译:基于振动状态监测的柴油机辅助传动轴异常检测

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There are many kinds of rotating components mounted on railway vehicles such as traction motors, generators, and traction gears. The failures of such components sometimes lead to service disruptions and/or accidents. Therefore, it is important to detect their abnormalities at an early stage and prevent their failures. In general, vibration monitoring is an effective abnormality detection method for rotating components. However, detection of the vibration of those components is complicated by vehicle vibration and varied operational status. To address these issues, the authors have proposed an abnormality detection method using vibration octave spectra and machine learning. As a means of verifying the proposed method, engine tests are conducted using auxiliary drive shafts with two simulated abnormalities. The test results indicate that the proposed method enables us to detect them and distinguish between them.
机译:铁路车辆上安装有许多旋转部件,例如牵引电动机,发电机和牵引齿轮。这些组件的故障有时会导致服务中断和/或事故。因此,重要的是及早发现异常并防止其故障。通常,振动监视是用于旋转部件的有效的异常检测方法。然而,车辆振动和变化的操作状态使这些部件的振动的检测变得复杂。为了解决这些问题,作者提出了一种使用振动倍频程谱和机器学习的异常检测方法。为了验证所提出的方法,使用具有两个模拟异常的辅助驱动轴进行了发动机测试。测试结果表明,所提出的方法使我们能够检测到它们并加以区分。

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