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车轮非圆化信号平滑处理方法及对多边形磨耗预测的影响OA

Smoothing Methods of Wheel Out-of-Roundness Signals and Their Effects on Polygonal Wear Prediction

中文摘要英文摘要

车轮踏面通常存在麻坑等缺陷,实测车轮非圆化信号往往包含高频噪声干扰,有时也会因为客观因素致使信号首尾端点不闭合.车轮非圆化是车辆-轨道耦合动力学模型中重要的轮轨界面激扰,对轮轨动力相互作用仿真和车轮非圆化磨耗预测具有重要影响,选取合适的平滑方法是保证仿真结果准确性的关键.本文对基于标准EN 15610、傅里叶级数、移动平均和形态学滤波 4种常用方法在实测车轮非圆化信号处理中的平滑效果展开研究,并讨论 4种方法在车轮多边形磨耗预测中的适用性.结果表明:在处理实测非圆化信号时,傅里叶级数和移动平均 2种方法能够在保留原始信号的波形特征下达到良好的平滑去噪效果并保证车轮不圆数据首尾闭合;此外,2种方法也适合在多边形磨耗预测中使用,使用时建议傅里叶级数的阶数取值大于 60,移动平均的平滑窗口长度取17 mm左右.

As defects such as pitting usually occur on the wheel tread,the measured wheel out-of-roundness(OOR)signals often contain high-frequency noise interference,and sometimes the signals are discontinuous at the start and end points due to objective factors.Wheel OOR is an important wheel-rail interface excitation in the vehicle-track coupled dynamics model,exerting significant effects on the simulation of dynamic wheel-rail interaction and wheel OOR wear prediction.Selecting the suitable smoothing method is key to ensuring the accuracy of the simulation results.The smoothing effects of four commonly adopted methods based on the EN 15610 standard,Fourier series,moving average,and morphological filtering on processing wheel OOR signals were investigated,and the applicability of the four methods in predicting polygonal wear was discussed.The results indicate that the two methods of Fourier series and moving average can achieve signal smoothing and de-noising effect,preserve the waveform characteristics of original signals,and ensure continuity and differentiability at the start and end points of wheel OOR data when processing measured wheel OOR signals.Additionally,the two methods are also suitable for application in polygonal wear prediction.When the two methods are employed,the order of the Fourier series should be greater than 60 and the smoothing window length of moving average should be about 17 mm.

杨晓璇;陶功权;温泽峰

西南交通大学轨道交通运载系统全国重点实验室,四川 成都 610031西南交通大学轨道交通运载系统全国重点实验室,四川 成都 610031西南交通大学轨道交通运载系统全国重点实验室,四川 成都 610031

交通工程

车轮非圆化数据平滑傅里叶级数移动平均形态学滤波多边形磨耗预测

wheelout-of-roundnessdata smoothingFourier seriesmoving averagemorphological filteringpolygonal wear prediction

《西南交通大学学报》 2026 (2)

341-350,362,11

国家自然科学基金项目(52002342,U21A20167)中国博士后科学基金面上项目(2020M673281)牵引动力国家重点实验室自主课题(2020TPL-T03)资助.

10.3969/j.issn.0258-2724.20240134

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