基于无线局域网探测的公共交通占用估计

L. Mikkelsen, Radoslav Buchakchiev, T. Madsen, H. Schwefel
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引用次数: 22

摘要

预测实物服务的可用性对运输系统的运作是一个有价值的补充。在本文中,我们关注的是公共交通占用率(PTO)的估计,或者更具体地说,是公共汽车载客量的估计,即公共汽车上的人数。这些信息可以被公交运营商用作分析公交路线效率的输入,或者提供一个显示乘客负荷的应用程序。基于收集WiFi设备发射的WiFi探针的PTO估计成本低且易于安装。本文给出了该方法的原型实现,分析了采集到的数据和估计算法的精度。对公共汽车载客量的分析表明,使用WiFi探针进行估计存在两个主要挑战。该算法由于包含了总线外的WiFi设备而提供了高估,由于排除了没有激活WiFi设备的人或由于遗漏了检测算法中对车载设备的探针而提供了低估。我们已经展示了如何通过微调算法的参数,过滤掉从总线外的人接收到的探测,从而降低低估问题的严重性。解决高估问题的典型方法是根据拥有支持WiFi的智能设备的人数占总人口的统计比例进行调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Public transport occupancy estimation using WLAN probing
Prediction of availability of physical services can be a valuable addition to transportation systems operation. In this paper we are focusing on estimation of public transport occupancy (PTO), or more specifically, on estimating bus passenger load, i.e., the number of people on the bus. This information can be used by bus operators as input to the analysis of bus routes' efficiency, or to provide an app indicating passenger load. PTO estimation based on collecting WiFi probes emitted by WiFi enabled devices is cheap and easy to install. This paper presents a prototype implementation of this method, analysis of the collected data and of the estimation algorithm accuracy. Analysis of passenger load in a bus has indicated that there are two main challenges of the estimation using WiFi probes. The algorithm provides overestimation due to inclusion of WiFi devices that are outside the bus and underestimation due to exclusion of people without an active WiFi enabled device or by missing out probes in the detection algorithm from devices carried on board. We have shown how by fine-tuning parameters of the algorithm the probes received from people outside the bus can be filtered out thereby reducing the severity of the underestimation problem. The typical approach to combat the overestimation problem is to make the adjustments based on a statistical ratio of people possessing a WiFi enabled smart device over the whole population.
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