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Fusion of Model-Based and Data Driven Based Fault Diagnostic Methods for Railway Vehicle Suspension

机译:基于模型的基于模型和数据驱动的融合的铁路车辆悬架故障诊断方法

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Transportation of freight and passengers by train is one of the oldest types of transport, and has now taken root in most of the developing countries especially in Africa. Recently, with the advent and development of high-speed trains, continuous monitoring of the railway vehicle suspension is of significant importance. For this reason, railway vehicles should be monitored continuously to avoid catastrophic events, ensure comfort, safety, and also improved performance while reducing life cycle costs. The suspension system is a very important part of the railway vehicle which supports the car-body and the bogie, isolates the forces generated by the track unevenness at the wheels and also controls the attitude of the car-body with respect to the track surface for ride comfort. Its reliability is directly related to the vehicle safety. The railway vehicle suspension often develops faults; worn springs and dampers in the primary and secondary suspension. To avoid a complete system failure, early detection of fault in the suspension of trains is of high importance. The main contribution of the research work is the prediction of faulty regimes of a railway vehicle suspension based on a hybrid model. The hybrid model framework is in four folds; first, modeling of vehicle suspension system to generate vertical acceleration of the railway vehicle, parameter estimation or identification was performed to obtain the nominal parameter values of the vehicle suspension system based on the measured data in the second fold, furthermore, a supervised machine learning model was built to predict faulty and healthy state of the suspension system components (damage scenarios) based on support vector machine (SVM) and lastly, the development of a new SVM model with the damage scenarios to predict faults on the test data. The level of degradation at which the spring and damper becomes faulty for both pri mary and secondary suspension system was determined. The spring and damper becomes faulty when the nominal values degrade by 50% and 40% and 30% and 40% for the secondary and primary suspension system respectively. The proposed model was able to predict faulty components with an accuracy of 0.844 for the primary and secondary suspension system.
机译:搭乘列车运输货运和乘客是最古老的运输类型之一,现在在大多数发展中国家都扎根于非洲。最近,随着高速列车的出现和发展,持续监测铁路车辆悬架具有重要意义。因此,应持续监测铁路车辆以避免灾难性事件,确保舒适,安全,以及在降低生命周期成本的同时提高性能。悬架系统是支撑车身和转向架的铁路车辆的一个非常重要的部分,使由轮子处的轨道不均匀产生的力分离并控制车身相对于轨道表面的姿态乘坐舒适。其可靠性与车辆安全直接相关。铁路车辆悬架经常发展故障;磨损的弹簧和次级悬浮液中的阻尼器。为避免完整的系统故障,早期检测列车的悬架中的故障具有很高的重要性。研究工作的主要贡献是基于混合模型预测铁路车辆悬架的故障制度。混合模型框架有四个褶皱;首先,进行车辆悬架系统的建模,以产生铁路车辆的垂直加速度,参数估计或识别,以获得基于第二倍的测量数据的车辆悬架系统的标称参数值,此外,该监督机器学习模型建成以预测基于支持向量机(SVM)的暂停系统组件(损坏方案)的故障和健康状态,最后,具有损坏方案的新SVM模型的开发,以预测测试数据的故障。确定了弹簧和阻尼器对PRI Mary和二次悬架系统发生故障的降解水平。当标称值分别为次级和初级悬架系统分别降低50%和40%和40%时,弹簧和阻尼器变得有故障。所提出的模型能够预测初级和二次悬架系统的精度为0.844的故障组件。

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