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The validation of an ACS-SSI based online condition monitoring for railway vehicle suspension systems using a SIMPACK model

机译:使用SIMPACK模型对铁路车辆悬架系统的ACS-SSI基于在线状况监测的验证

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To enhance the safe operation of modern railway vehicles, an online condition monitoring scheme is proposed for vehicle suspension systems. The core technology of the scheme is based on the average correlation signals based stochastic subspace identification (ACS-SSI) algorithm which allows system identification to be implemented reliably with output signals only that have strong noise and nonlinearity in vehicle applications. To validate the scheme, a series simulation studies were carried out based on a more realistic bogie model, developed in SIMPACK, under typical random excitations including vertical, lateral, rolling and gauging directions. ACS-SSI is then applied to the signals from the model under common faults in the bogie suspensions to identify the system parameters. The agreeable results obtained by comparing the identified results with that calculated by SIMPACK shows that the proposed scheme performs reliably in obtaining the system parameters: modal frequency, damping and shape that are required for online diagnosis.
机译:为提高现代铁路车辆的安全运行,提出了一种用于车辆悬架系统的在线状态监测方案。该方案的核心技术基于基于平均相关信号的随机子空间识别(ACS-SSI)算法,其允许通过车辆应用中具有强噪声和非线性的输出信号可靠地实现系统识别。为了验证该方案,基于更现实的转向架模型进行系列仿真研究,该模型在Simpack中开发,在包括垂直,横向,滚动和测量方向的典型随机激励下。然后将ACS-SSI应用于转向架悬架中的常见故障下的模型的信号,以识别系统参数。通过与SIMPACK计算的确定结果进行比较所获得的可令人愉快的结果表明,该方案在获得系统参数时可靠地执行:在线诊断所需的模态频率,阻尼和形状。

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