论文标题
铁路刚度评估轴盒加速度的Vold-Kalman滤波器订单跟踪
Vold-Kalman Filter Order tracking of Axle Box Accelerations for Railway Stiffness Assessment
论文作者
论文摘要
面对成本和效率的需求提高,智能数据驱动的监视程序具有确保安全操作和最佳管理铁路基础设施的巨大潜力。大量研究表明,轨道刚度是影响驱动维护过程的降解演变的主要参数之一。因此,轨道刚度的测量对于在恶化速率和噪声发射方面表征轨道的性能至关重要。这可以通过安装在服务内火车上的低成本(即OBM)传感系统(即车轴盒加速度计)来实现,并实现铁路基础设施网络的频繁,实时监视。在监视应用中很少考虑基于加速度的刚度指标。在这项工作中,提出了使用Vold-Kalman滤波器的使用,以将信号分解为周期性的轮子和轨道相关的激发 - 响应对函数。我们证明这些组件又与操作条件相关,例如车轮外部和轨道类型。我们进一步说明了轨道刚度,测量的车轮轨将其与卧铺通道振幅之间的关系,这最终可以作为预测性轨道维护和预测轨道耐用性的指标。
Intelligent data-driven monitoring procedures hold enormous potential for ensuring safe operation and optimal management of the railway infrastructure in the face of increasing demands on cost and efficiency. Numerous studies have shown that the track stiffness is one of the main parameters influencing the evolution of degradation that drives maintenance processes. As such, the measurement of track stiffness is fundamental for characterizing the performance of the track in terms of deterioration rate and noise emission. This can be achieved via low-cost On Board Monitoring (OBM) sensing systems (i.e., axle-box accelerometers) that are mounted on in-service trains and enable frequent, real-time monitoring of the railway infrastructure network. Acceleration-based stiffness indicators have seldom been considered in monitoring applications. In this work, the use of a Vold-Kalman filter is proposed, for decomposing the signal into periodic wheel and track related excitation--response pairs functions. We demonstrate that these components are in turn correlated to operational conditions, such as wheel out-of-roundness and rail type. We further illustrate the relationship between the track stiffness, the measured wheel-rail forces and the sleeper passage amplitude, which can ultimately serve as an indicator for predictive track maintenance and prediction of track durability.