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基于神经网络的交叉口多相位模糊控制
引用本文:许伦辉,衷路生,徐建闽.基于神经网络的交叉口多相位模糊控制[J].华南理工大学学报(自然科学版),2004,32(6):67-70,79.
作者姓名:许伦辉  衷路生  徐建闽
作者单位:1. 华南理工大学,交通学院,广东,广州,510640
2. 南方冶金学院机电工程学院,江西,赣州,341000
基金项目:国家自然科学基金资助项目(60064001),广东省自然科学基金资助项目(20011707)
摘    要:根据城市交叉口交通流的特点,给出了一种交叉口多相位自适应控制算法,综合考虑相邻车道上的车队长度,利用多层BP神经网络实现了道路交叉口多相位模糊控制.仿真结果表明,文中所设计的模糊神经网络控制器能有效地减少单交叉口平均车辆延误,具有较强的学习和泛化能力,是实现交通系统智能控制的一条新途径.

关 键 词:交通控制  模糊控制  神经网络  BP学习算法  车辆平均延误
文章编号:1000-565X(2004)06-0067-04

Multi-phase Fuzzy Control of Intersections Based on Neural Network
Xu Lun-hui Zhong Lu-sheng Xu Jian-min.Multi-phase Fuzzy Control of Intersections Based on Neural Network[J].Journal of South China University of Technology(Natural Science Edition),2004,32(6):67-70,79.
Authors:Xu Lun-hui Zhong Lu-sheng Xu Jian-min
Abstract:According to the features of traffic flow in urban intersections, a multi-phase self-adaptive control algorithm was proposed. Multi-layer BP neural network was used to realize the multi-phase fuzzy control in road intersections by taking the queue length on contiguous phase lanes into account. Simulation results show that, as a new method of the intelligent control of traffic system, the proposed fuzzy neural network controller can decrease the average vehicle delay in single intersections and it possesses excellent learning and generating abilities.
Keywords:traffic control  fuzzy control  neutral network  BP learning algorithm  average vehicle delay
本文献已被 CNKI 维普 万方数据 等数据库收录!
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