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Use of System of Systems and Decentralized Optimization Concepts for Integrated Traffic Control via Dynamic Signalization and Embedded Speed Recommendation

机译:通过动态信号化和嵌入式速度建议将系统系统和分散优化概念用于综合交通控制

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In the frame of the European research project Local4Global, urban traffic control is one of the demonstrative use cases of a developed decentralized control method based on the Technical System of Systems (TSoS) concept and using machine learning capabilities. TSoS concept consists of dividing the system to semiautonomous elementary systems, called constituent systems, which shall enjoy to a major extent a local decision possibility. A remaining part of the decision shall be made after exchanging information between all participating systems to learn from each other and improve the overall performance.In the traffic context, two basic classes of constituent systems are suggested: dynamically signalized traffic junctions and connected vehicles with speed control capabilities. Both traffic signals and vehicle speed controls receive a correction from the L4GCAO global optimizer in a bigger and common control cycle, namely each day.This paper describes the methodology and the results of a VISSIM microscopic traffic simulation of a road section situated near Munich. For the strategy evaluation, the results in terms of the performance index, waiting time per link, coordination proportion, mean network speed and travel time are compared to a baseline. This is during off peak demand a currently running fixed green wave signalization and during rush hour demand on the evening time of day signalization, having additional both demands combined with a speed recommendation with corrections. First results show that during rush hour the overall performance is improved compared to the initial scenario, nevertheless in low demands opposite situation is observed.A general advantage of such method is that it is easily scalable and transposable to other portions of the network. Since machine learning capabilities are introduced, algorithms are self-adaptive to yearly and seasonally varying demand and no important human involvement is needed. An outlook is given, how to transfer the strategy to the real road and test it in a field test.
机译:在欧洲研究项目Local4Global的框架中,城市交通控制是基于系统技术系统(TSoS)概念并使用机器学习功能的发达的分散控制方法的示范用例之一。 TSoS概念包括将系统划分为半自治的基本系统,称为组成系统,该系统在很大程度上应享有局部决策的可能性。在所有参与系统之间交换信息以相互学习并提高整体性能后,应做出其余决定。在交通方面,建议使用两个基本类别的组成系统:动态信号化交通枢纽和高速互联车辆控制功能。 L4GCAO全球优化器会在一个较大且通用的控制周期(即每天)中对交通信号和车速控制进行校正。本文介绍了慕尼黑附近路段的VISSIM微观交通仿真的方法和结果。对于策略评估,将性能指标,每条链路的等待时间,协调比例,平均网络速度和运行时间等结果与基准进行比较。这是在非高峰需求期间当前正在运行的固定绿波信号通知,以及在高峰时段在一天中晚上的信号通知期间的需求,同时兼有其他两个需求以及带有校正的速度建议。最初的结果表明,在高峰时段,与最初的情况相比,整体性能得到了改善,但是在需求低的情况下却可以观察到相反的情况。这种方法的一个普遍优势是,它易于扩展并可以转移到网络的其他部分。由于引入了机器学习功能,因此算法可自适应于年度和季节性变化的需求,并且不需要任何重要的人力参与。给出了一个展望,介绍了如何将该策略应用于实际道路并在现场测试中对其进行测试。

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