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Changing lane probability estimating model based on neural network

机译:基于神经网络的变车道概率估计模型

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Changing lane is one of the methods to reach the destination faster and also could bring more highway traffic accidents. This study through the traffic feature recognition, cluster analysis, similarity measurements and estimation, analyzed the vehicle operation parameter before changing lane, proposed a changing lane probability estimating model which combines the SOM (Self-Organization Map) and BP (Back Propagation) artificial neural network and had passed the test of the Vissim micro traffic simulation data. This model contributes to the dynastic analysis and evaluation for changing lanes in the intelligent transportation system, the traffic accidents reduction. So it's a critical part for establishing the traffic safe system.
机译:变车道是更快到达目的地的方法之一,也可能带来更多的高速公路交通事故。该研究通过交通特征识别,聚类分析,相似性测量和估计,分析了改变车道之前的车辆操作参数,提出了一种结合了SOM(自组织图)和BP(反向传播)人工神经网络的改变车道概率估计模型。网络并通过了Vissim微流量模拟数据的测试。该模型有助于对智能交通系统中变车道进行动态分析和评估,减少交通事故。因此,这是建立交通安全系统的关键部分。

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