基于浮动汽车轨迹的超速可能性贝叶斯空间建模

IF 7.4 2区 工程技术 Q1 ENGINEERING, CIVIL
Haiyue Liu , Chaozhe Jiang , Chuanyun Fu , Yue Zhou , Chenyang Zhang , Zhiqiang Sun
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引用次数: 0

摘要

超速可能性通常用来衡量司机超速的倾向。虽然有一些研究分析了超速可能性,但在分析城市路网超速行为时,大多没有考虑到空间效应。本研究旨在利用空间模型对超速似然进行建模,以填补这一知识空白,并评估各影响因素的影响。采用超速观测的百分比(PSO)来表示超速可能性。从成都市的GPS轨迹中提取了每辆浮动汽车(即出租车)的超速行为和PSO。PSO模型采用几种具有空间效应的贝叶斯β一般线性模型,即β模型、β logit-normal模型、β intrinsic conditional autoregressive (ICAR)模型、β besag - york - molli (BYM)模型和β BYM2模型。结果表明,beta BYM2模型在数据拟合方面优于其他模型。根据beta BYM2的估计,空间相关性是造成模式变异的主要原因。车道较多的道路和高架道路连接的道路增加了超速可能性,而较高的限速、交叉口密度、交通拥堵和路边停车与较低的超速可能性相关。这些发现为设计有效的城市道路网络反超速对策提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian spatial modeling for speeding likelihood using floating car trajectories
Speeding likelihood is usually used to measure drivers' propensity of committing speeding. Albeit some studies have analyzed speeding likelihood, most of them are inadequate in considering spatial effects when analyzing speeding behaviors on urban road networks. This study aims to fill this knowledge gap by modeling speeding likelihood with spatial models and then evaluate the influence of contributing factors. The percent of speeding observations (PSO) is adopted to represent the speeding likelihood. The speeding behaviors and PSO of each floating car (i.e., taxi) are extracted from the GPS trajectories in Chengdu, China. PSO is modeled by several Bayesian beta general linear models with spatial effects, namely the beta model, beta logit-normal model, beta intrinsic conditional autoregressive (ICAR) model, beta Besag-York-Mollié (BYM) model, and beta BYM2 model. Results show that the beta BYM2 model performs better than other models in terms of data-fitting. According to the estimates from the beta BYM2, spatial correlation is the main reason for the model variability. The roads with more lanes and roads linked by elevated roads are found to increase the speeding likelihood, while higher speed limits, intersection density, traffic congestion, and roadside parking are associated with lower speeding likelihood. These findings provide valuable insights for designing effective anti-speeding countermeasures on urban road networks.
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来源期刊
CiteScore
13.60
自引率
6.30%
发文量
402
审稿时长
15 weeks
期刊介绍: The Journal of Traffic and Transportation Engineering (English Edition) serves as a renowned academic platform facilitating the exchange and exploration of innovative ideas in the realm of transportation. Our journal aims to foster theoretical and experimental research in transportation and welcomes the submission of exceptional peer-reviewed papers on engineering, planning, management, and information technology. We are dedicated to expediting the peer review process and ensuring timely publication of top-notch research in this field.
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