Modelling Road Congestion Using a Fuzzy System and Real-World Data for Connected and Autonomous Vehicles

Luke Abberley, Keeley A. Crockett, Jianquan Cheng
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引用次数: 3

Abstract

Road congestion is estimated to cost the United Kingdom £307 billion by 2030. Furthermore, congestion contributes enormously to damaging the environment and people’s health. In an attempt to combat the damage congestion is causing, new technologies are being developed, such as intelligent infrastructures and smart vehicles. The aim of this study is to develop a fuzzy system that can classify congestion using a real-world dataset referred to as Manchester Urban Congestion Dataset, which contains data similar to that collected by connected and autonomous vehicles. A set of fuzzy membership functions and rules were developed using a road congestion ontology and in conjunction with domain experts. Experiments are conducted to evaluate the fuzzy system in terms of its precision and recall in classifying congestion. Comparisons are made in terms of performance with traditional classification algorithms decision trees and Naïve Bayes using the Red, Amber, and Green classification methods currently implemented by Transport for Greater Manchester to label the dataset. The results have shown the fuzzy system has the ability to predict road congestion using volume and journey time, outperforming both decision trees and Naïve Bayes.
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使用模糊系统和真实世界数据对联网和自动驾驶车辆进行道路拥堵建模
据估计,到2030年,道路拥堵将给英国带来3070亿英镑的损失。此外,交通拥堵极大地损害了环境和人们的健康。为了应对拥堵造成的损害,人们正在开发智能基础设施和智能汽车等新技术。本研究的目的是开发一个模糊系统,该系统可以使用被称为曼彻斯特城市拥堵数据集的真实数据集对拥堵进行分类,该数据集包含与联网和自动驾驶汽车收集的数据相似的数据。利用道路拥堵本体,结合领域专家,开发了一套模糊隶属函数和规则。通过实验对模糊分类系统在拥塞分类中的准确率和召回率进行了评价。在性能方面与传统分类算法决策树和Naïve贝叶斯进行比较,使用大曼彻斯特交通局目前实施的红色、琥珀色和绿色分类方法来标记数据集。结果表明,模糊系统具有利用交通量和行程时间预测道路拥堵的能力,优于决策树和Naïve贝叶斯。
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