MODELING SPATIAL EFFECT ON TRAVEL MODE CHOICE USING A SYNTHETIC SPATIALLY CORRELATED DATA SET

IF 0.5 Q3 Earth and Planetary Sciences Boletim De Ciencias Geodesicas Pub Date : 2021-02-18 DOI:10.1590/S1982-21702021000100008
Lucas Assirati, C. Pitombo
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Abstract

: Urban dynamics can be characterized more effectively by considering spatial aspects in studies. This paper, using a synthetic spatially correlated data set, aims to model the spatial effect on travel mode choice based on geostatistics precepts. A method was proposed based on three main steps. The first step consists of building synthetic spatially correlated data, using the intrinsic spatial dependence on travel demand data and mathematical principles of bilinear interpolation. The following two steps correspond to the modeling approach. The Exploratory Spatial Data Analysis stage aimed to attest the existence of spatial autocorrelation of the data set using two indicators: Moran and G-SIVAR (Global Spatial Indicator Based on Variogram). The Confirmatory Spatial Data Analysis stage proposed the calibration of two Binomial Logit models. The first model includes only the original database variables (non-spatial model). The second one is analogous to the original but added to spatial covariates obtained by geostatistical concepts (spatial model). A 15% increase in cross-validation hit rates is achieved when spatial variables are included. This paper presents three significant research contributions: (1) The methodological procedure to model spatial effect on travel mode choice; (2) The proposal of spatial covariates based on geostatistical assumptions; and (3) The suggestion of a simple procedure to propose a simulation of a spatially correlated database.
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基于空间相关数据集的出行方式选择空间效应建模
:通过在研究中考虑空间方面,可以更有效地描述城市动力学。本文使用一个合成的空间相关数据集,旨在基于地统计学规则对出行方式选择的空间影响进行建模。提出了一种基于三个主要步骤的方法。第一步是利用对出行需求数据的内在空间依赖性和双线性插值的数学原理,构建合成的空间相关数据。以下两个步骤对应于建模方法。探索性空间数据分析阶段旨在使用两个指标来证明数据集的空间自相关的存在:Moran和G-SIVAR(基于变差图的全球空间指标)。验证性空间数据分析阶段提出了两个二项式Logit模型的校准。第一个模型仅包括原始数据库变量(非空间模型)。第二个类似于原始的,但添加到通过地质统计学概念(空间模型)获得的空间协变量中。当包含空间变量时,交叉验证命中率提高了15%。本文提出了三个重要的研究贡献:(1)对出行方式选择的空间效应建模的方法论过程;(2) 基于地质统计学假设提出的空间协变量;以及(3)提出一个简单程序的建议,以提出空间相关数据库的模拟。
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来源期刊
Boletim De Ciencias Geodesicas
Boletim De Ciencias Geodesicas Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
1.70
自引率
20.00%
发文量
10
审稿时长
3 months
期刊介绍: The Boletim de Ciências Geodésicas publishes original papers in the area of Geodetic Sciences and correlated ones (Geodesy, Photogrammetry and Remote Sensing, Cartography and Geographic Information Systems). Submitted articles must be unpublished, and should not be under consideration for publication in any other journal. Previous publication of the paper in conference proceedings would not violate the originality requirements. Articles must be written preferably in English language.
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