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AR(1) time series with autoregressive gamma variance for road topography modeling

机译:具有自回归伽玛方差的AR(1)时间序列,用于道路地形建模

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摘要

A non-Gaussian time series with a generalized Laplace marginal distribution is used to model road topography. The model encompasses variability exhibited by a Gaussian AR(1) process with randomly varying variance that follows a particular autoregressive model that features the gamma distribution as its marginal. A simple estimation method to fit the correlation coefficient of each of two autoregressive components is proposed. The one for the Gaussian AR(1) component is obtained by fitting the frequency of zero crossing, while the autocorrelation coefficient for the gamma autoregressive process is fitted from the autocorrelation of the squared values of the model. The shape parameter of the gamma distribution is fitted using the explicitly given moments of a generalized Laplace distribution. Another general method of model fitting based on the correlation function of the signal is also presented and compared with the zero-crossing method. It is demonstrated that the model has the ability to accurately represent hilliness features of road topography providing a significant improvement over a purely Gaussian model. (C) 2015 Elsevier Ltd. All rights reserved.
机译:具有广义拉普拉斯边际分布的非高斯时间序列用于建模道路地形。该模型包含高斯AR(1)过程表现出的可变性,其随机变化的方差遵循特定的自回归模型,该模型以伽马分布为边际。提出了一种适合两个自回归分量的相关系数的简单估计方法。通过拟合零交叉的频率获得高斯AR(1)分量的一个,而从模型平方值的自相关拟合出伽马自回归过程的自相关系数。使用明确给出的广义拉普拉斯分布的矩来拟合伽玛分布的形状参数。还提出了另一种基于信号相关函数的通用模型拟合方法,并将其与过零方法进行了比较。结果表明,该模型具有准确表示道路地形的丘陵特征的能力,与纯高斯模型相比,具有明显的改进。 (C)2015 Elsevier Ltd.保留所有权利。

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