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Prediction of mechanical properties of rail pads under in-service conditions through machine learning algorithms

机译:通过机器学习算法预测轨道焊盘下的轨道焊盘力学性能

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摘要

Train operations generate high impact and fatigue loads that degrade the rail infrastructure and the vehicle components. Rail pads are installed between the rails and the sleepers in order to damp the transmission of vibrations and noise and to provide flexibility to the track. These components play a crucial role in maximizing the durability of the railway assets and minimizing maintenance costs. Rail pads can be fabricated with different polymeric materials that exhibit non-linear mechanical behaviours, which strongly depend on the service conditions. Therefore, it is extremely difficult to estimate their mechanical properties, in particular the dynamic stiffness. In this work, several machine learning methodologies (multilinear regression, K nearest neighbours, regression tree, random forest, gradient boosting, multi-layer perceptron and support vector machine) were used to determine the dynamic stiffness of rail pads depending on their in-service conditions (temperature, frequency, axle load and toe load). 720 experimental tests, under different realistic operating conditions, were performed to produce a dataset that was then used for the training and testing of the machine learning methods. The optimal algorithm was gradient boosting for EPDM (R~2 of 0.995 and mean absolute percentage error of 5.08% in the test dataset), TPE (0.994 and 2.32%) and EVA (0.968 and 4.91%) pads. This model was implemented in an application, available for the readers of this journal, developed on the Microsoft .Net platform that allows the dynamic stiffness of the pads study to be estimated as a function of the temperature, frequency, axle load and toe load.
机译:火车操作会产生高冲击和疲劳负载,从而降低轨道基础设施和车辆部件。轨道焊盘安装在导轨和枕垫之间,以便抑制振动和噪声的传输,并为轨道提供灵活性。这些组件在最大化铁路资产的耐用性和最小化维护成本方面发挥了至关重要的作用。轨道焊盘可以用不同的聚合物材料制造,其表现出非线性机械行为,这强烈取决于服务条件。因此,极难估计其机械性能,特别是动态刚度。在这项工作中,使用了几种机器学习方法(多线性回归,k最近邻居,回归树,随机林,梯度提升,多层的Perceptron和支持向量机)来确定轨道垫的动态刚度,这取决于其在役条件(温度,频率,轴载和脚趾负载)。 720实验测试在不同的现实操作条件下进行,以生产用于对机器学习方法的培训和测试的数据集。最佳算法对于EPDM(R〜2为0.995的R〜2,测试数据集中的5.08%的r〜2),TPE(0.994和2.32%)和EVA(0.968和4.91%)垫。该模型在应用程序中实现,可用于本轴颈的读者,在Microsoft .NET平台上开发,允许填充研究的动态刚度作为温度,频率,轴载和脚趾负载的函数。

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  • 来源
    《Advances in Engineering Software》 |2021年第1期|102927.1-102927.11|共11页
  • 作者单位

    LADICIM (Laboratory of Science and Engineering of Materials) University of Cantabria. E.T.S. de Ingenieros de Caminos Canales y Puertos Av. Los Castros 44 Santander 39005 Spain;

    LADICIM (Laboratory of Science and Engineering of Materials) University of Cantabria. E.T.S. de Ingenieros de Caminos Canales y Puertos Av. Los Castros 44 Santander 39005 Spain;

    LADICIM (Laboratory of Science and Engineering of Materials) University of Cantabria. E.T.S. de Ingenieros de Caminos Canales y Puertos Av. Los Castros 44 Santander 39005 Spain;

    GTI (Group of Information Technologies) University of Cantabria. E. T.S. de Ingenieros de Caminos Canales y Puertos Av. Los Castros 44 39005 Santander Spain;

    Institute of Railway Research University of Huddersfield Queensgate Huddersfield HD1 3DG UK IDMEC Instituto Superior Tecnico Universidade de Lisboa Lisboa Portugal and ISEL IPL Lisboa Portugal;

    LADICIM (Laboratory of Science and Engineering of Materials) University of Cantabria. E.T.S. de Ingenieros de Caminos Canales y Puertos Av. Los Castros 44 Santander 39005 Spain;

    LADICIM (Laboratory of Science and Engineering of Materials) University of Cantabria. E.T.S. de Ingenieros de Caminos Canales y Puertos Av. Los Castros 44 Santander 39005 Spain;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Railway dynamics; Sleeper pads; Machine learning; Rail service conditions; Dynamic stiffness;

    机译:铁路动力学;睡眠垫;机器学习;铁路服务条件;动态僵硬;

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