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Autonomic decision support system for traffic and environment management

机译:交通和环境管理的自主决策支持系统

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Outdoor air pollution causes approximately 1.3 milion deaths every year worldwide and approximately 310,000 premature deaths in Europe as revealed by the Department of Business, Innovation and Skills. Given road traffic and more specifically congestion is a major source of pollution, there is an urgent need to apply network management aimed at delivering air quality as well as carbon targets. Intelligent Transport Systems can be used for traffic management application and as a by-product of their control produce huge volumes of data that are useful to support traffic operators in their decision-making. Due to the increasing amount of available ITS, traffic operators are faced with an increasing amount of information overload. More sophistication is needed to achieve multiple policy objectives and across modes of transport. Autonomic computing is a software environment with the ability of self-management and dynamic adaption in relation to business policies and objectives alternatively defined as automation of system adaptation. Autonomic computing is a technology that comes into play where there is need to minimise cost and maximise efficiency through management of resources and applications. Following an overview of the policy context, this paper presents an autonomic system and demonstrates self-optimization of lane choice on a UK motorway and a Dutch trunk road through a case study. By creating an autonomic capability which can reason within the data analysis layer of a data platform, traffic control networks can begin to manage more effectively routine control decisions from day to day and as a next step against multiple objectives and thus free up engineers time to devote to the more complex tasks.
机译:商业,创新和技能部透露,全世界每年室外空气污染造成约130万人死亡,欧洲造成约31万例过早死亡。鉴于道路交通,更具体地说是交通拥堵是主要的污染源,迫切需要应用旨在提供空气质量和碳排放目标的网络管理。智能交通系统可用于交通管理应用,作为其控制的副产品,可产生大量数据,这些数据可用于支持交通运营商的决策。由于可用ITS数量的增加,交通运营商面临着越来越多的信息过载。为了实现多个政策目标和跨多种运输方式,还需要更多的技巧。自主计算是一种软件环境,具有与业务策略和目标相关的自我管理和动态适应能力,也可以定义为系统适应性自动化。自主计算是一项需要发挥作用的技术,它需要通过管理资源和应用程序来最小化成本和最大化效率。在对政策环境进行概述之后,本文提供了一个自治系统,并通过案例研究展示了英国高速公路和荷兰主干道路上车道选择的自我优化。通过创建可以在数据平台的数据分析层内进行推理的自主功能,流量控制网络可以开始更有效地日常管理日常控制决策,并作为下一步针对多个目标的下一步,从而腾出了工程师投入的时间处理更复杂的任务。

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