Collaborative sensing and control in large-scale transportation systems

Desheng Zhang, T. He
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引用次数: 1

Abstract

Transportation is the circulatory system of our economy. Yet many of our traditional transportation systems are inadequate to serve the needs of the 21st century. Thus, Intelligent Transportation Systems (ITS) has been proposed as a promising direction to provide innovative services in various modes of transport and traffic management. Researchers have accumulated abundant knowledge for designing ITS systems based on surveys and feedbacks from users and operators. However, the data collected from these manually conducted methods are often incomplete, inaccurate and out-of-date. Thus, based on these data, the applications, correlations and interactions among different forms of transportation are under-exploited [1]. This inefficiency calls for a new architecture, which collaboratively integrates sensing and control aspects in the data processing chain of ITS systems, i.e., data acquisition, data analysis, and data utilization, from multimodal transit systems, e.g., taxicab, bus, and subway, by fully automatic realtime methods. Because of the limited understanding on how to collaboratively interconnect different transit systems for realworld applications, we face an urgent and challenging task to investigate the theory and practice in order to coordinate the sensing and control aspects efficiently and collaboratively. To accomplish this task, this research aims at (i) addressing a fundamental challenge that uniquely defines sensing and control aspects in ITS - heterogeneity, (ii) proposing a design for a multi-level architecture to collaboratively handle different procedures of ITS datasets, and (iii) testing our architecture in one of the largest transportation systems in the world as reference implementation in real-world scenarios.
大型运输系统中的协同传感与控制
交通运输是我国经济的循环系统。然而,我们的许多传统交通系统已不足以满足21世纪的需求。因此,智能交通系统(ITS)已被提出作为一个有前途的方向,为各种运输方式和交通管理提供创新服务。研究人员根据用户和运营商的调查和反馈,积累了丰富的设计ITS系统的知识。然而,从这些手工方法中收集的数据往往是不完整、不准确和过时的。因此,基于这些数据,不同交通形式之间的应用、相关性和相互作用尚未得到充分利用。这种低效率需要一种新的架构,该架构通过全自动实时方法,协同集成ITS系统数据处理链中的传感和控制方面,即来自出租车、公共汽车和地铁等多式联运系统的数据采集、数据分析和数据利用。由于对实际应用中不同交通系统如何协同互联的认识有限,我们面临着一项紧迫而具有挑战性的任务,即研究理论和实践,以便有效地协调感知和控制方面。为了完成这项任务,本研究旨在(i)解决智能交通系统中传感和控制方面的一个基本挑战——异质性;(ii)提出一种多层次架构的设计,以协同处理智能交通系统数据集的不同过程;(iii)在世界上最大的交通系统之一中测试我们的架构,作为现实世界场景中的参考实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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