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Control of Traffic Signals in a Model Predictive Control Framework

机译:在模型预测控制框架中控制交通信号

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This paper presents a signal control method of urban road traffic by using model predictive control (MPC), where online adjustments of all free parameters of traffic signals, i.e., cycle times, split times and offsets, are focused on simultaneously. A simple model of macroscopic traffic, whose dynamics are nonlinear involving binary representation corresponding to green and red signals, is formulated. The parameters of the model are calibrated by using data obtained from detailed microscopic simulation that yields realistic statistics. The simple model is transformed into a mixed logical dynamical system (MLDS), and a mixed integer optimization is applied in the MPC framework. The proposed control scheme makes the signals flexibly turn to red and green depending on traffic conditions in the road network. By adapting quickly to any changes in traffic conditions, the scheme generates appropriate traffic signals, and the traffic flow is kept optimum regardless of such changes. Results of optimization are also verified by microscopic traffic simulation using a detailed model. It is demonstrated that the proposed control scheme reduces the average number of vehicles and their average stay time in the network by outperforming other ones that control only the frequency and the phase of each traffic signal.
机译:本文采用了使用模型预测控制(MPC)的城市道路交通信号控制方法,其中交通信号的所有免费参数,即循环时间,分流时间和偏移的在线调整。制定了一个简单的宏观流量模型,其动态是涉及与绿色和红色信号对应的二进制表示的非线性的非线性。通过使用从详细的微观模拟中获得的数据来校准模型的参数,从而产生逼真的统计数据。简单模型被转换为混合逻辑动力系统(MLD),并在MPC框架中应用混合整数优化。所提出的控制方案使信号灵活地转向红色和绿色,具体取决于道路网络中的交通状况。通过快速调整到流量条件的任何变化,该方案产生适当的流量信号,无论此类更改如何,都会保持最佳的流量。通过使用详细模型,还通过微观流量仿真验证了优化结果。据证明,所提出的控制方案通过优于仅控制每个交通信号的频率和相位的其他方式来减少网络中的平均车辆数量及其平均停留时间。

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