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Estimating Urban Traffic Patterns through Probabilistic Interconnectivity of Road Network Junctions

机译:通过路网路口的概率互连估计城市交通模式

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摘要

The emergence of large, fine-grained mobility datasets offers significant opportunities for the development and application of new methodologies for transportation analysis. In this paper, the link between routing behaviour and traffic patterns in urban areas is examined, introducing a method to derive estimates of traffic patterns from a large collection of fine-grained routing data. Using this dataset, the interconnectivity between road network junctions is extracted in the form of a Markov chain. This representation encodes the probability of the successive usage of adjacent road junctions, encoding routes as flows between decision points rather than flows along road segments. This network of functional interactions is then integrated within a modified Markov chain Monte Carlo (MCMC) framework, adapted for the estimation of urban traffic patterns. As part of this approach, the data-derived links between major junctions influence the movement of directed random walks executed across the network to model origin-destination journeys. The simulation process yields estimates of traffic distribution across the road network. The paper presents an implementation of the modified MCMC approach for London, United Kingdom, building an MCMC model based on a dataset of nearly 700000 minicab routes. Validation of the approach clarifies how each element of the MCMC framework contributes to junction prediction performance, and finds promising results in relation to the estimation of junction choice and minicab traffic distribution. The paper concludes by summarising the potential for the development and extension of this approach to the wider urban modelling domain.
机译:大型,细粒度的流动性数据集的出现为交通分析新方法的开发和应用提供了重要的机会。在本文中,研究了城市地区路由行为与交通模式之间的联系,介绍了一种从大量细粒度路由数据集合中得出交通模式估计值的方法。使用该数据集,以马尔可夫链的形式提取道路网络交叉口之间的互连性。此表示编码相邻道路交叉口连续使用的可能性,将路线编码为决策点之间的流量,而不是沿路段的流量。然后,将这种功能交互网络集成到经过修改的马尔可夫链蒙特卡洛(MCMC)框架中,该框架适用于估计城市交通模式。作为此方法的一部分,主要交叉点之间的数据派生链接会影响通过网络执行的有向随机游走的运动,以模拟起点-目的地旅程。仿真过程可以估算出整个道路网络的交通分布。本文介绍了英国伦敦改进的MCMC方法的实现,该模型基于近70万条微型驾驶室路线的数据集构建了MCMC模型。该方法的验证阐明了MCMC框架的每个元素如何对路口预测性能做出贡献,并发现了与路口选择和小型客舱交通分布估计有关的有希望的结果。本文通过总结该方法的发展潜力和将其扩展到更广泛的城市建模领域的结论。

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    Ed Manley;

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  • 年(卷),期 -1(10),5
  • 年度 -1
  • 页码 e0127095
  • 总页数 17
  • 原文格式 PDF
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