利用cokriging技术和人口普查/人口数据估算小流量道路的年平均日交通(AADT)数据

Edmund Baffoe-Twum, Eric Asa, Bright Awuku
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摘要

背景:地统计学侧重于空间或时空数据集。地质统计学最初是为了在采矿业中产生矿石品位的概率分布预测而发展起来的;然而,它已经成功地应用于不同的科学学科。该技术包括单变量、多变量和模拟。克里格地质统计方法是简单的、普通的、通用的克里格方法,不是通常统计函数中的多元模型。尽管如此,简单、普通和通用的克里格技术在建模一个属性时使用随机函数模型,其中包括无限随机变量。coKriging技术是一种多变量估计方法,它可以同时对具有相同域的两个或多个属性进行建模。目的:研究人口对交通流量的影响。附加变量决定了采用数据集成时获得的强度或精度。此外,这有助于改进对年平均日交通量(AADT)的估计。方法程序和过程:采用coKriging技术,以蒙大拿州、明尼苏达州和华盛顿州2009 - 2016年的AADT数据为主要属性,人口为控制因素(第二变量)。在回顾了文献和已完成的工作,并与其他地统计学方法进行了比较后,本研究采用了CK方法。结果、观察和结论:调查采用了两个变量。CK采用的数据集成方法由于其强度来自多个变量,因此模型更可靠。使用CK技术探索的模型类型的交叉验证结果成功地评估了插值技术的性能,并有助于为每个状态选择最优模型。蒙大拿州和明尼苏达州模型的结果准确地代表了这两个州的交通和人口密度。华盛顿模式也有一些例外。然而,第二个属性有助于产生准确的解释。因此,旅游、购物、娱乐中心和全州可能的交通模式的影响值得探索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating annual average daily traffic (AADT) data on low-volume roads with the cokriging technique and census/population data
Background: Geostatistics focuses on spatial or spatiotemporal datasets. Geostatistics was initially developed to generate probability distribution predictions of ore grade in the mining industry; however, it has been successfully applied in diverse scientific disciplines. This technique includes univariate, multivariate, and simulations. Kriging geostatistical methods, simple, ordinary, and universal Kriging, are not multivariate models in the usual statistical function. Notwithstanding, simple, ordinary, and universal kriging techniques utilize random function models that include unlimited random variables while modeling one attribute. The coKriging technique is a multivariate estimation method that simultaneously models two or more attributes defined with the same domains as coregionalization. Objective: This study investigates the impact of populations on traffic volumes as a variable. The additional variable determines the strength or accuracy obtained when data integration is adopted. In addition, this is to help improve the estimation of annual average daily traffic (AADT). Methods Procedures, Process: The investigation adopts the coKriging technique with AADT data from 2009 to 2016 from Montana, Minnesota, and Washington as primary attributes and population as a controlling factor (second variable). CK is implemented for this study after reviewing the literature and work completed by comparing it with other geostatistical methods. Results, Observations, and Conclusions: The Investigation employed two variables. The data integration methods employed in CK yield more reliable models because their strength is drawn from multiple variables. The cross-validation results of the model types explored with the CK technique successfully evaluate the interpolation technique's performance and help select optimal models for each state. The results from Montana and Minnesota models accurately represent the states' traffic and population density. The Washington model had a few exceptions. However, the secondary attribute helped yield an accurate interpretation. Consequently, the impact of tourism, shopping, recreation centers, and possible transiting patterns throughout the state is worth exploring.
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