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On the new era of urban traffic monitoring with massive drone data: The pNEUMA large-scale field experiment

机译:在海量无人机数据监控城市交通的新时代:pNEUMA大规模现场试验

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The new era of sharing information and "big data" has raised our expectations to make mobility more predictable and controllable through a better utilization of data and existing resources. The realization of these opportunities requires going beyond the existing traditional ways of collecting traffic data that are based either on fixed-location sensors or GPS devices with low spatial coverage or penetration rates and significant measurement errors, especially in congested urban areas. Unmanned Aerial Systems (UAS) or simply "drones" have been proposed as a pioneering tool of the Intelligent Transportation Systems (ITS) infrastructure due to their unique characteristics, but various challenges have kept these efforts only at a small size. This paper describes the system architecture and preliminary results of a first-of-its-kind experiment, nicknamed pNEUMA, to create the most complete urban dataset to study congestion. A swarm of 10 drones hovering over the central business district of Athens over multiple days to record traffic streams in a congested area of a 1.3 km(2) area with more than 100 km-lanes of road network, around 100 busy intersections (signalized or not), many bus stops and close to half a million trajectories. The aim of the experiment is to record traffic streams in a multi-modal congested environment over an urban setting using UAS that can allow the deep investigation of critical traffic phenomena. The pNEUMA experiment develops a prototype system that offers immense opportunities for researchers many of which are beyond the interests and expertise of the authors. This open science initiative creates a unique observatory of traffic congestion, a scale an-order-of-magnitude higher than what was available till now, that researchers from different disciplines around the globe can use to develop and test their own models.
机译:共享信息和“大数据”的新时代提高了我们的期望,即通过更好地利用数据和现有资源使移动性更加可预测和可控制。要实现这些机会,就需要超越现有的基于固定位置传感器或GPS设备的交通数据收集传统方法,这些方法具有较低的空间覆盖率或穿透率,并且存在很大的测量误差,尤其是在拥挤的城市地区。由于其独特的特性,有人提出将无人航空系统(UAS)或简称为“无人机”作为智能交通系统(ITS)基础设施的先驱工具,但是各种挑战使这些努力一直停留在很小的规模上。本文描述了首个名为pNEUMA的同类试验的系统架构和初步结果,以创建最完整的城市数据集来研究交通拥堵。成群的10架无人机在数天内徘徊在雅典中央商务区上空,以记录1.3公里(2)区域拥挤的区域中的交通流,其中道路网超过100公里,约有100个繁忙路口(信号灯或否),许多公交车站和接近五十万条的轨迹。该实验的目的是使用UAS记录城市环境中多模式拥挤环境中的交通流,从而可以深入研究关键交通现象。 pNEUMA实验开发了一个原型系统,该系统为研究人员提供了巨大的机会,其中许多超出了作者的兴趣和专业水平。这项开放的科学计划创建了一个独特的交通拥堵观测站,其规模比现在高出一个数量级,全球不同学科的研究人员都可以使用它们来开发和测试他们自己的模型。

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