Artificial intelligence approach for optimizing traffic signal timings on urban road network

T. Nakatsuji, S. Seki, S. Shibuya, T. Kaku
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引用次数: 17

Abstract

Artificial intelligence techniques were applied to a traffic control problem on an urban road network and a method that optimizes signal timings was proposed. The method is separated into two processes, a training process and an optimization process. In the training process, two types of neural network model were used; a multilayer model and a Kohonen feature map model. The former model formed an input-output relationship between the timings and the objective function. The latter model improved the computational efficiency and the estimation precision. In the optimization process, to avoid the entrapment into a local minimum, two artificial intelligence methods were used; a Cauchy machine and a genetic algorithm. Signal timings were adjusted so as to minimize the total weighted sum of delay time and stop frequencies. The solutions were compared with those by a conventional method. The results here indicated that the AI models were useful for establishing advanced traffic control systems.<>
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城市路网交通信号配时优化的人工智能方法
将人工智能技术应用于城市道路网络的交通控制问题,提出了一种优化信号配时的方法。该方法分为两个过程,一个是训练过程,一个是优化过程。在训练过程中,使用了两种类型的神经网络模型;多层模型和Kohonen特征图模型。前一种模型在时序和目标函数之间形成了一种投入产出关系。后一种模型提高了计算效率和估计精度。在优化过程中,为了避免陷入局部最小值,采用了两种人工智能方法;柯西机和遗传算法。调整信号时序以使延迟时间和停止频率的总加权和最小。并与常规方法进行了比较。本文的研究结果表明,人工智能模型对于建立先进的交通控制系统是有用的
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