Rail Track Modelling by Using Identification and Curve Fitting Techniques

S. Türkay, A. S. Leblebici, H. Akçay
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引用次数: 3

Abstract

In this paper, a seventeen-degree-of-freedom full-car model of a high speed railway vehicle excited by real track profile is going to be studied. The field measurements are collected by Turkish State Railways (TCDD) on a pre-specified pilot section at a constant forward train speed. First, empirical auto-power spectral densities of the left and the right tracks are estimated on the uniform frequency range by using the Welch-method. The estimated power spectra is matched by generally preferred mathematical track spectrum in the Federal Railroad Administration Standard (FRA). Then, curve fitting techniques in the frequency domain as the two-slope and three-slope approximations are performed on the Welch estimated track spectra. Next, subspace-based identification algorithms are applied to shape to the Welch’s rail spectrum for the right and left tracks. Based on all these parametric and non-parametric studies, the simulation studies showed that the effect of the rail track modelling on the performance enhancement of the vehicle is quite large.
基于识别和曲线拟合技术的轨道建模
本文以高速铁路车辆为研究对象,建立了受真实轨道廓线激励的17自由度全车厢模型。现场测量数据由土耳其国家铁路公司(TCDD)在预先指定的试点路段以恒定的列车前进速度收集。首先,利用welch方法在均匀频率范围内估计了左右轨迹的经验自功率谱密度;估算的功率谱与联邦铁路局标准(FRA)中常用的数学轨道谱相匹配。然后,对Welch估计的航迹谱进行两斜率和三斜率近似的频域曲线拟合技术。接下来,基于子空间的识别算法被应用于左右轨道的韦尔奇轨道频谱的形状。基于这些参数化和非参数化研究,仿真研究表明,轨道建模对车辆性能提升的影响是相当大的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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