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Road traffic prediction using Bayesian networks

机译:使用贝叶斯网络进行道路交通预测

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摘要

Having prior road condition knowledge for planned or unplanned journeys will be beneficial in terms of not only time but potentially cost. Being able to obtain real-time information will further enhance these benefits. Current systems rely on huge infrastructure investments by governments to install cameras, road sensors and billboards to keep motorists informed. These efforts can only be, at best, available at pre-identified hotspots. Radio broadcast is an alternative, where they rely on reports by other motorists. However, such reports are often delayed and not tailored to individual motorist. Seeing the limitations of existing approaches to obtain real-time road conditions, this research work leverages on mobile devices that provide context sensitive information to propose a predictive analytics framework based on a Bayesian Network for road condition prediction. This paper aims to contribute to (i) defining a set of evidences (variables) that could potentially be utilized for road condition prediction and (ii) construction of a Bayesian Network model to predict road conditions. In conclusion, we presented a novel approach to provide potentially unlimited coverage of road traffic conditions with substantially reduced infrastructure investments.
机译:具有计划或计划外行程的事先路况知识将不仅有益于时间,而且可能具有成本优势。能够获取实时信息将进一步增强这些优势。当前的系统依靠政府的大量基础设施投资来安装摄像头,道路传感器和广告牌,以使驾驶者随时了解情况。这些努力最多只能在预先确定的热点中进行。无线电广播是一种替代方法,他们依靠其他驾驶者的报告。但是,此类报告通常会延迟发送,而不是针对单个驾车者的。考虑到现有方法获取实时道路状况的局限性,这项研究工作利用提供上下文相关信息的移动设备来提出基于贝叶斯网络的道路状况预测的预测分析框架。本文旨在帮助(i)定义一组可能用于道路状况预测的证据(变量),以及(ii)构建贝叶斯网络模型以预测道路状况。总之,我们提出了一种新颖的方法,可通过减少基础设施投资来无限可能地覆盖道路交通状况。

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