利用人工神经网络测量铁路车辆质量的方法

Mark A. Denisenko, Alina S. Isaeva, A. Sinyukin, Andrey V. Kovalev
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引用次数: 0

摘要

快速、便捷、准确地确定铁路车辆的负载质量对于确保铁路基础设施的安全和资产计算至关重要。在本文中,我们提出了一种方法,用于模拟在通过铁路车轮传递的静载荷影响下,轨道腹板发生的机械变形。根据所提出的方法,可以通过钢轨变形值确定铁路车辆的重量。我们开发了一个包括轨枕、钢轨和车轮在内的轨道断面实体模型,并介绍了一种多物理场仿真技术,该技术可以确定应变片安装区域的变形值和机械应力。我们考虑了加载质量、钢轨温度以及车轮相对于应变片位置的位置的影响。我们还考虑了在不指定车轮位置坐标的情况下使用人工神经网络确定轨道车辆重量的可能性。我们还考虑了数据中的噪声对确定轨道车重量准确性的影响。
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A Method for Measuring the Mass of a Railroad Car Using an Artificial Neural Network
The fast, convenient, and accurate determination of railroad cars’ load mass is critical to ensure safety and allow asset counting in railway infrastructure. In this paper, we propose a method for modeling the mechanical deformations that occur in the rail web under the influence of a static load transmitted through a railway wheel. According to the proposed method, a railroad car’s weight can be determined from the rail deformation values. A solid model of a track section, including a railroad tie, rail, and wheel, is developed, and a multi-physics simulation technique that allows for the determination of the values of deformations and mechanical stresses in the strain gauge installation areas is presented. The influence of the loaded mass, the temperature of the rail, and the wheel position relative to the strain gauge location is considered. We also consider the possibility of using artificial neural networks to determine railroad cars’ weight without specifying the coordinates of the wheel position. The effect of noise in the data on the accuracy of determining the railroad car weight is considered.
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