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Neural networks for local monitoring of traffic magnetic sensors

机译:用于交通磁传感器本地监控的神经网络

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A real-time traffic incident detection algorithm is proposed and applied to the monitoring of a complex road junction in the city of Nancy in France. This algorithm has the potential to provide local monitoring of traffic sensors. Our approach is based on macroscopic traffic flow models, and more precisely on the flow-density relationship. Once this relation is extracted from real traffic data, an admissible region is defined in the flow-density space. Then, the classification properties of neural networks are used to design the monitoring network, which detects and isolates the incidents that disturb the traffic, when the measured data are out of the admissible region. A hierarchical scheme to deal with incidents in large-scale networks is developed as well.
机译:提出了一种实时交通事件检测算法,并将其应用于法国南锡市复杂路口的监控。该算法具有提供交通传感器本地监视的潜力。我们的方法基于宏观交通流模型,更确切地说,基于交通密度关系。一旦从实际交通数据中提取了这种关系,就可以在流量密度空间中定义一个允许区域。然后,使用神经网络的分类属性来设计监视网络,当测量数据超出允许范围时,该监视网络会检测并隔离干扰交通的事件。还开发了用于处理大型网络中的事件的分层方案。

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