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Do new sources of traffic data make the application of Chaos Theory to traffic management a realistic possibility?

机译:交通数据的新来源是否使混沌理论在交通管理中的应用成为现实?

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Current signal systems for managing road traffic in many urban areas around the world lack a coordinated approach to detecting the spatial and temporal evolution of congestion across control regions within city networks. This severely inhibits these systems' ability to detect reliably, on a strategic level, the onset of congestion and implement effective preventative action. As traffic is a time-dependent and non-linear system, Chaos Theory is a prime candidate for application to Urban Traffic Control (UTC) to improve congestion and pollution management. Previous applications have been restricted to relatively uncomplicated motorway and inter-urban networks, arguably where the associated problems of congestion and vehicle emissions are less severe, due to a general unavailability of high-resolution temporal and spatial data that preserve the variability in short-term traffic patterns required for Chaos Theory to work to its full potential. This paper argues that this restriction can now be overcome due to the emergence of new sources of high-resolution data and large data storage capabilities. Consequently, this opens up the real possibility for a new generation of UTC systems that are better able to detect the dynamic states of traffic and therefore more effectively prevent the onset of traffic congestion in urban areas worldwide.
机译:当前,用于管理世界许多城市地区道路交通的信号系统缺乏一种协调的方法来检测城市网络内各个控制区域的拥堵的时空演变。这严重抑制了这些系统在战略水平上可靠地检测拥塞的发生并采取有效的预防措施的能力。由于交通是依赖时间的非线性系统,因此混沌理论是应用于城市交通控制(UTC)改善拥堵和污染管理的主要候选者。先前的应用仅限于相对简单的高速公路和城市间网络,可以说是由于普遍缺乏高分辨率的时空数据,这些数据在短期内保持可变性,因此拥挤和车辆排放的相关问题不太严重。混沌理论发挥其全部潜力所需的交通模式。本文认为,由于出现了高分辨率数据和大数据存储功能的新来源,现在可以克服这一限制。因此,这为新一代UTC系统打开了真正的可能性,该系统能够更好地检测交通的动态状态,从而更有效地防止全球城市地区交通拥堵的发生。

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