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Statistical modelling and analysis of sparse bus probe data in urban areas

机译:城市稀疏总线探测数据的统计建模与分析

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Congestion in urban areas causes financial loss to business and increased use of energy compared with free-flowing traffic. Providing citizens with accurate information on traffic conditions can encourage journeys at times of low congestion and uptake of public transport. Installing the measurement infrastructure in a city to provide this information is expensive and potentially invades privacy. Increasingly, public transport vehicles are equipped with sensors to provide real-time arrival time estimates, but these data are sparse. Our work shows how these data can be used to estimate journey times experienced by road users generally. In this paper we describe (i) what a typical data set from a fleet of over 100 buses looks like; (ii) describe an algorithm to extract bus journeys and estimate their duration along a single route; (iii) show how to visualise journey times and the influence of contextual factors; (iv) validate our approach for recovering speed information from the sparse movement data.
机译:与畅通无阻的交通相比,城市地区的交通拥堵给企业造成财务损失,并增加了能源的使用。向市民提供有关交通状况的准确信息可以鼓励人们在交通拥堵和公共交通使用率低的时候出行。在城市中安装测量基础设施以提供此信息非常昂贵,并且有可能侵犯隐私权。越来越多的公共交通工具配备了传感器,以提供实时的到达时间估计,但是这些数据很少。我们的工作显示了如何使用这些数据来估算道路使用者的一般旅行时间。在本文中,我们描述(i)来自100多辆公共汽车的车队的典型数据集是什么样的; (ii)描述一种算法,以提取公交旅程并估算单条路线的持续时间; (iii)展示如何可视化旅途时间和环境因素的影响; (iv)验证我们从稀疏运动数据中恢复速度信息的方法。

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