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Online condition assessment of high-speed trains based on Bayesian forecasting approach and time series analysis

机译:基于贝叶斯预测方法和时间序列分析的高速列车在线状态评估

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High-speed rail (HSR) has been in operation and development in many countries worldwide. The explosive growth of HSR has posed great challenges for operation safety and ride comfort. Among various technological demands on high-speed trains, vibration is an inevitable problem caused by rail/wheel imperfections, vehicle dynamics, and aerodynamic instability. Ride comfort is a key factor in evaluating the operational performance of high-speed trains. In this study, online monitoring data have been acquired from an in-service high-speed train for condition assessment. The measured dynamic response signals at the floor level of a train cabin are processed by the Sperling operator, in which the ride comfort index sequence is used to identify the train's operation condition. In addition, a novel technique that incorporates salient features of Bayesian inference and time series analysis is proposed for outlier detection and change detection. The Bayesian forecasting approach enables the prediction of conditional probabilities. By integrating the Bayesian forecasting approach with time series analysis, one-step forecasting probability density functions (PDFs) can be obtained before proceeding to the next observation. The change detection is conducted by comparing the current model and the alternative model (whose mean value is shifted by a prescribed offset) to determine which one can well fit the actual observation. When the comparison results indicate that the alternative model performs better, then a potential change is detected. If the current observation is a potential outlier or change, Bayes factor and cumulative Bayes factor are derived for further identification. A significant change, if identified, implies that there is a great alteration in the train operation performance due to defects. In this study, two illustrative cases are provided to demonstrate the performance of the proposed method for condition assessment of high-speed trains.
机译:高铁(HSR)已在全球许多国家/地区运营和开发。高铁的爆炸性增长对操作安全性和乘坐舒适性提出了巨大挑战。在对高速列车的各种技术需求中,振动是由铁轨/车轮缺陷,车辆动力学和空气动力学不稳定引起的不可避免的问题。乘坐舒适性是评估高速列车运行性能的关键因素。在这项研究中,在线监测数据已从在役的高速列车中获取,用于状态评估。 Sperling操作员处理在火车机舱地板水平处测得的动态响应信号,其中乘坐舒适性指数序列用于识别火车的运行状况。另外,提出了一种结合了贝叶斯推理和时间序列分析的显着特征的新颖技术,用于离群值检测和变化检测。贝叶斯预测方法可以预测条件概率。通过将贝叶斯预测方法与时间序列分析相集成,可以在进行下一个观测之前获得一步预测概率密度函数(PDF)。通过比较当前模型和替代模型(其均值偏移指定的偏移量)以确定哪个可以很好地适合实际观察,来进行更改检测。当比较结果表明替代模型的性能更好时,则表明存在潜在的变化。如果当前观测值是潜在的异常值或变化,则导出贝叶斯因子和累积贝叶斯因子以进一步识别。如果识别出重大变化,则意味着由于缺陷,列车运行性能会有很大变化。在这项研究中,提供了两个说明性案例,以证明所提出的方法用于高速列车状态评估的性能。

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