Road profile modeling by subspace identification methods

S. Turkay, H. Akçay
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引用次数: 1

Abstract

In this paper, spectral models of road profiles using nonparametric and subspace identification methods are developed from road elevation measurements. First, power spectra of road profiles are estimated on uniform grids of frequencies by averaging and windowing from road measurements. These results are illustrated on the data sets obtained from the University of Michigan Transportation Research Institute archives by computing Welch spectrum estimates for left and right vehicle tracks. Then, curve fitting by the single and two-slope approximations are applied on the Welch estimates. Rational approximations, by considering a recent subspace algorithm, the regularized nuclear norm and the regularized and reweighted nuclear norm heuristics are performed for a further shaping of power spectrum estimates. Preliminary results show that the regularized and reweighted nuclear norm heuristic algorithm yields best fits to the data by low order rational spectra without distorting too much the homogeneous road assumption. Finally, for comparision of the roughness evaluation the IRI roughness index is calculated for different algorithms assuming that road excitations are zero-mean Gaussian processes.
基于子空间识别方法的道路轮廓建模
本文从道路高程测量数据出发,利用非参数和子空间识别方法建立了道路轮廓的光谱模型。首先,通过对道路测量数据进行平均和加窗,在均匀的频率网格上估计道路轮廓的功率谱。这些结果是通过计算左右车辆轨迹的韦尔奇频谱估计从密歇根大学交通研究所档案中获得的数据集来说明的。然后,对Welch估计应用单斜率和双斜率近似的曲线拟合。通过考虑一种最新的子空间算法、正则化核范数以及正则化和重加权核范数启发式进行理性逼近,进一步形成功率谱估计。初步结果表明,正则化和重加权核范数启发式算法对低阶有理谱数据的拟合效果最好,且不会过多地扭曲均匀道路假设。最后,为了比较粗糙度评价,假设道路激励为零均值高斯过程,计算了不同算法下的IRI粗糙度指数。
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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