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Multi-objective optimal predictive control of signals in urban traffic network

机译:城市交通网络中信号的多目标最优预测控制

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摘要

Traffic congestion in urban network has been a serious problem for decades. In this paper, a novel dynamic multi-objective optimization method for designing predictive controls of network signals is proposed. The popular cell transmission model (CTM) is used for traffic prediction. Two network models are considered, i.e., simple network which captures basic macroscopic traffic characteristics and advanced network that further considers vehicle turning and different traveling routes between origins and destinations. A network signal predictive control algorithm is developed for online multi-objective optimization. A variety of objectives are considered such as system throughput, vehicle delay, intersection crossing volume, and spillbacks. The genetic algorithm (GA) is applied to solve the optimization problem. Three example networks with different complexities are studied. It is observed that the optimal traffic performance can be achieved by the dynamic control in different situations. The influence of the objective selection on short-term and long-term network benefits is studied. With the help of parallel computing, the proposed method can be implemented in real time and is promising to improve the performance of real traffic network.
机译:数十年来,城市网络中的交通拥堵一直是一个严重的问题。提出了一种新颖的动态多目标优化设计方法,用于网络信号的预测控制。流行的小区传输模型(CTM)用于流量预测。考虑了两种网络模型,即捕获基本宏观交通特征的简单网络和进一步考虑车辆转弯以及始发地与目的地之间的不同行驶路线的高级网络。针对在线多目标优化开发了网络信号预测控制算法。考虑了各种目标,例如系统吞吐量,车辆延误,交叉路口通行量和溢出。应用遗传算法(GA)解决了优化问题。研究了三个具有不同复杂度的示例网络。可以看出,通过在不同情况下进行动态控制可以实现最佳的交通性能。研究了目标选择对短期和长期网络利益的影响。借助于并行计算,该方法可以实时实现,有望提高实际交通网络的性能。

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