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Accurate Traffic Flow Prediction in Heterogeneous Vehicular Networks in an Intelligent Transport System Using a Supervised Non-Parametric Classifier

机译:使用监督性非参数分类器的智能运输系统中异构车辆网络中的准确交通流量预测

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摘要

Heterogeneous vehicular networks (HETVNETs) evolve from vehicular ad hoc networks (VANETs), which allow vehicles to always be connected so as to obtain safety services within intelligent transportation systems (ITSs). The services and data provided by HETVNETs should be neither interrupted nor delayed. Therefore, Quality of Service (QoS) improvement of HETVNETs is one of the topics attracting the attention of researchers and the manufacturing community. Several methodologies and frameworks have been devised by researchers to address QoS-prediction service issues. In this paper, to improve QoS, we evaluate various traffic characteristics of HETVNETs and propose a new supervised learning model to capture knowledge on all possible traffic patterns. This model is a refinement of support vector machine (SVM) kernels with a radial basis function (RBF). The proposed model produces better results than SVMs, and outperforms other prediction methods used in a traffic context, as it has lower computational complexity and higher prediction accuracy.
机译:异构车载网络(HETVNET)是从车载自组织网络(VANET)演变而来的,它使车辆始终保持连接状态,从而在智能运输系统(ITS)中获得安全服务。 HETVNETs提供的服务和数据不应中断也不应该延迟。因此,HETVNET的服务质量(QoS)的提高是引起研究人员和制造界关注的主题之一。研究人员已经设计出了几种方法和框架来解决QoS预测服务问题。在本文中,为了提高QoS,我们评估了HETVNET的各种流量特性,并提出了一种新的监督学习模型来捕获有关所有可能流量模式的知识。该模型是对带有径向基函数(RBF)的支持向量机(SVM)内核的改进。所提出的模型比SVM产生更好的结果,并且具有较低的计算复杂度和较高的预测精度,因此其性能优于交通上下文中使用的其他预测方法。

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