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An intelligent-based prediction system for incident-induced congestion spreading

机译:基于智能的事件诱发拥塞扩散预测系统

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Traffic congestion is a severe problem in many modern cities around the world. The non-recurring occurrence of incident-induced congestion sometimes may cause large-scale traffic congestion. This paper proposes an intelligent-based prediction system, Fuzzy-Neural Network Prediction System (FNNPS), as decision support to operators. Fuzzy algorithm is used in FNNPS to handle the different sources of heterogeneous input data including the static structure variables of road network, the real-time traffic flow information (i.e. the average volumes and velocity of 5-minute intervals), and incident reports including incident location, type and severity etc. The whole system is linear time complexity to give real-time prediction results. The FNNPS performances show perfect prediction during the congestion spreading process with system parameters of the number of membership functions of inputs and the frequency of re-trainings in a busy area of Beijing.
机译:在世界许多现代城市中,交通拥堵是一个严重的问题。偶然发生的事件引发的拥塞有时可能会导致大规模的交通拥塞。本文提出了一种基于智能的预测系统,即模糊神经网络预测系统(FNNPS),作为对运营商的决策支持。 FNNPS中使用模糊算法来处理异构输入数据的不同来源,包括道路网络的静态结构变量,实时交通流信息(即5分钟间隔的平均流量和速度)以及包括事故的事故报告位置,类型和严重性等。整个系统具有线性时间复杂度,可提供实时预测结果。在北京繁忙地区,FNNPS的性能表现出对拥塞扩散过程的完美预测,其系统参数包括输入的隶属函数数量和再培训的频率。

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