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Spatial Extension of Road Traffic Sensor Data with Artificial Neural Networks

机译:道路交通传感器数据的人工神经网络空间扩展

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摘要

This paper proposes a method for estimating traffic flows on some links of a road network knowing the data on other links that are monitored with sensors. In this way, it is possible to obtain more information on traffic conditions without increasing the number of monitored links. The proposed method is based on artificial neural networks (ANNs), wherein the input data are the traffic flows on some monitored road links and the output data are the traffic flows on some unmonitored links. We have implemented and tested several single-layer feed-forward ANNs that differ in the number of neurons and the method of generating datasets for training. The proposed ANNs were trained with a supervised learning approach where input and output example datasets were generated through traffic simulation techniques. The proposed method was tested on a real-scale network and gave very good results if the travel demand patterns were known and used for generating example datasets, and promising results if the demand patterns were not considered in the procedure. Numerical results have underlined that the ANNs with few neurons were more effective than the ones with many neurons in this specific problem.
机译:本文提出了一种估计道路网络某些链路上的交通流量的方法,该方法可以知道其他通过传感器监控的链路上的数据。这样,可以在不增加监视链接数的情况下获得有关交通状况的更多信息。所提出的方法基于人工神经网络(ANN),其中输入数据是一些受监控的道路链路上的交通流量,而输出数据是一些不受监控的链路上的交通流量。我们已经实现并测试了几种单层前馈ANN,它们在神经元数量和生成用于训练的数据集的方法方面有所不同。拟议的人工神经网络采用有监督的学习方法进行了训练,其中通过交通模拟技术生成了输入和输出示例数据集。所提出的方法在真实规模的网络上进行了测试,如果已知旅行需求模式并将其用于生成示例数据集,则将给出非常好的结果;如果在该过程中未考虑需求模式,则将给出有希望的结果。数值结果表明,在这个特定问题上,神经元少的人工神经网络比神经元多的人工神经网络更有效。

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