基于粒子群算法的双RBF神经网络城市交通流预测模型

Jianyu Zhao, L. Jia, Yuehui Chen, Xudong Wang
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引用次数: 10

摘要

城市交通实时自适应控制作为一个复杂的大系统,通常需要提前了解各个交叉口的交通情况。因此,交通流预测是实现城市交通实时自适应控制的关键问题。本文的研究对象是两个典型的城市道路相邻交叉口。提出了一种带分类系数的双RBF神经网络模型。该模型将高维输入样本空间划分为两个低维子空间。从而大大降低了空间样本的非线性程度。采用粒子群优化算法分别确定两个RBF神经网络的参数。该方法不仅简化了RBF神经网络的结构,而且提高了训练速度和映射精度。仿真结果表明了该模型的有效性
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Urban Traffic Flow Forecasting Model of Double RBF Neural Network Based on PSO
The real time adaptive control of urban traffic, as a complex large system, usually needs to know the traffic of every intersection in advance. So traffic flow forecasting is a key problem in the real time adaptive control of urban traffic. This paper's research object is two typical adjacent intersections of city road. A double RBF NN model with classifying coefficient is presented. The space of high dimensional input samples is divided into two lower dimensional subspaces by the model. Then the nonlinear degree of the space samples is reduced greatly. Particle swarm optimization (PSO) algorithm is used to determine the parameters of two RBF NN respectively. The method not only simplifies the structure of RBF NN, but also enhances training speed and mapping accurate. The simulation results show the effectiveness of the model
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