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Supervised learning from human performance at the computationally hard problem of optimal traffic signal control on a network of junctions

机译:在联结网络上最佳交通信号控制的计算难题上从人类绩效中监督学习

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摘要

Optimal switching of traffic lights on a network of junctions is a computationally intractable problem. In this research, road traffic networks containing signallized junctions are simulated. A computer game interface is used to enable a human ‘player’ to control the traffic light settings on the junctions within the simulation. A supervised learning approach, based on simple neural network classifiers can be used to capture human player's strategies in the game and thus develop a human-trained machine control (HuTMaC) system that approaches human levels of performance. Experiments conducted within the simulation compare the performance of HuTMaC to two well-established traffic-responsive control systems that are widely deployed in the developed world and also to a temporal difference learning-based control method. In all experiments, HuTMaC outperforms the other control methods in terms of average delay and variance over delay. The conclusion is that these results add weight to the suggestion that HuTMaC may be a viable alternative, or supplemental method, to approximate optimization for some practical engineering control problems where the optimal strategy is computationally intractable.
机译:交叉路口网络上交通信号灯的最佳切换是计算上难以解决的问题。在这项研究中,模拟了包含信号交叉口的道路交通网络。计算机游戏界面用于使人的“玩家”能够控制模拟中路口的交通信号灯设置。基于简单神经网络分类器的监督学习方法可用于捕获游戏中人类玩家的策略,从而开发一种接近人类性能水平的人类训练机控制(HuTMaC)系统。在仿真中进行的实验将HuTMaC的性能与发达国家中广泛部署的两个完善的交通响应控制系统以及基于时差学习的控制方法进行了比较。在所有实验中,HuTMaC在平均延迟和延迟方差方面均优于其他控制方法。结论是,这些结果增加了以下建议的重要性:HuTMaC可能是可行的替代方法或补充方法,可以对某些实际工程控制问题进行近似优化,而这些问题的最佳策略在计算上是难以解决的。

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