基于模型的贝叶斯推理方法用于轨道粗糙度轮廓的车载监测:瑞士联邦铁路网现场测量数据的应用

C. Stoura, V. Dertimanis, C. Hoelzl, Claudia Kossmann, Alfredo Cigada, Eleni Chatzi
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引用次数: 0

摘要

根据国际铁路联盟的统计,全球铁路网的轨道总长度已超过 100 万公里,这一数字还将进一步增加,因为我们的目标是将铁路运输作为一种可持续发展的手段,以应对日益增长的流动性带来的挑战。然而,如此大规模的扩张进一步要求高效可靠的基础设施监控方案能够保证铁路运输的质量和安全。传统的监测方法主要依靠目视检查和便携式测量设备,由于无法对铁路基础设施的扩展部分进行连续检查,因此无法胜任这一任务。因此,基于专用诊断车的移动监测方法应运而生。尽管这种方法彻底改变了传统的监测方法,但这种车辆通常价格昂贵,而且只能在正常铁路服务暂停的情况下运行。在这项工作中,我们提出了一种基于低成本振动传感器(如加速度计)收集的车载监测数据的铁路基础设施移动传感替代方法,这些传感器可以安装在在役列车上。具体来说,我们的重点是识别铁轨的粗糙度轮廓,并提出了一种融合低阶车辆模型和贝叶斯推理方法的联合输入状态估计方法。为了增强推理能力,我们选择在无特征卡尔曼滤波器和诊断车辆的可用测量结果的基础上对车辆模型参数进行先验更新。这项工作的主要贡献在于:(i) 考虑了列车与轨道之间的动态互动,而这通常在轨道粗糙度估算中被忽视;(ii) 采用了简化的列车车辆模型,从而减少了识别任务的计算量;(iii) 更新了车辆参数,以考虑所用模型的不一致性;(iv) 将所建议的方法应用于从瑞士联邦铁路网诊断车辆收集的实际加速度测量。
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A Model-Based Bayesian Inference Approach for On-Board Monitoring of Rail Roughness Profiles: Application on Field Measurement Data of the Swiss Federal Railways Network
According to the International Union of Railways, railway networks count more than one million kilometers of tracks worldwide, a number that is to rise further as the goal is to promote rail transportation as a sustainable means to face the challenge of increased mobility. However, such a vast expansion further necessitates efficient and reliable infrastructure monitoring schemes able to guarantee the quality and safety of rail transportation. Traditional monitoring approaches, relying on visual inspection and portable measuring devices, cannot rise to the task as they do not allow for continuous inspection of extended portions of rail infrastructure. Therefore, mobile monitoring methodologies based on dedicated diagnostic vehicles have emerged as an alternative. Despite revolutionizing traditional monitoring methods, such vehicles are usually expensive and can only operate under the suspension of regular rail service. In this work, we propose an alternative approach for mobile sensing of railway infrastructure based on on-board monitoring data collected from low-cost vibration sensors, e.g., accelerometers, which can be mounted on in-service trains. Specifically, we focus on identifying the roughness profile of the tracks and propose a fusion of reduced-order vehicle models with a Bayesian inference approach for joint input-state estimation. To enhance the inference, we opt for a prior updating of the vehicle model parameters on the basis of an unscented Kalman filter and available measurements from a diagnostic vehicle. The key contributions of this work are (i) the consideration of the dynamic interaction between trains and tracks, which is usually ignored in rail roughness estimation, (ii) the adoption of reduced train vehicle models that decrease the computational effort of the identification task, (iii) the updating of the vehicle parameters to account for inconsistencies in the model used, and (iv) the application of the proposed methodology to actual acceleration measurements collected from a diagnostic vehicle of the Swiss Federal Railways network.
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