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PassengerFlows: A Correlation-Based Passenger Estimator in Automated Public Transport

机译:乘客流:自动公共交通中基于相关的乘客估算器

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摘要

Human mobility information is widely needed by many sectors in smart cities, especially for public transport. This work designs lightweight algorithms to perform stop detection, passenger flow tracking, and passenger estimation in an automated train. The on-board learning and detection algorithms are running on an edge node that is integrated with Wi-Fi sniffing technology, a GPS sensor, and an inertial measurement unit (IMU) sensor. The stop detection algorithm determines if the automated train is static at which train station based on GPS and IMU data. When the train is moving, the correlations between statistical properties extracted from Wi-Fi probes and the actual number of passengers change. Therefore, two algorithms, passenger flow tracking and passenger estimation, are designed to analyze passenger mobility. The passenger flow tracking algorithm analyzes the number of incoming and outgoing passengers in the train. The passenger estimation algorithm approximates the number of passengers inside the train based on a multi-dimensional regression model created by statistical properties extracted from different device brands. The designed prototype is deployed in an automated hanging train to conduct real-world experiments. The experimental results indicate that the proposed passenger flow tracking algorithm reduces the average errors of 62.5% and 70% compared against two existing clustering algorithms respectively. When the devices' brands are split for creating a regression model, compared with two counting-based approaches, the proposed passenger estimation algorithm results in lower errors with a mean of 3.15 and a variance of 9.29.
机译:智能城市的许多部门广泛需要人类流动信息,特别是对于公共交通工具。这项工作设计了轻量级算法来执行自动列车中的停止检测,乘客流量跟踪和乘客估计。车载学习和检测算法正在与Wi-Fi嗅探技术,GPS传感器和惯性测量单元(IMU)传感器集成的边缘节点上运行。停止检测算法确定自动列车是否是基于GPS和IMU数据的火车站的静态。当火车移动时,从Wi-Fi探针提取的统计性质与实际乘客数之间的相关性。因此,设计了两种算法,乘客流量跟踪和乘客估计,旨在分析乘客移动性。乘客流量跟踪算法分析了火车中的进出乘客的数量。乘客估计算法基于由不同设备品牌提取的统计特性创建的多维回归模型来近似列车内的乘客数。设计的原型在自动悬挂式列车中部署,以进行现实世界的实验。实验结果表明,与两个现有的聚类算法相比,所提出的乘客流量跟踪算法降低了62.5%和70%的平均误差。当设备的品牌被分开以创建回归模型时,与基于两个计数的方法相比,所提出的乘客估计算法导致较低的误差,其平均值为3.15和9.29的方差。

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