车辆事故热点识别:基于大数据的方法

I. Triguero, G. Figueredo, M. Mesgarpour, J. Garibaldi, R. John
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引用次数: 10

摘要

本文介绍了一种基于Apache Spark的道路事故热点快速大数据识别方法。我们实现了一个现有的免疫启发机制,即SeleSup,作为一系列类似mapreduce的操作。SeleSup由多次迭代组成,可以消除数据冗余,从而检测出车辆事故的高可能性区域。它已经成功地应用于大型数据集,但是,当数据的大小增加到数百万个实例时,它的性能会显著下降。因此,我们的目标是重新定义大数据的方法。在本文中,我们介绍了新的实现,在将该方法转换为Apache Spark平台时所面临的挑战以及所获得的结果。在我们的实验中,我们使用了一个大型数据集,其中包含数十万个重型车辆事故,这些事故是通过远程信息处理收集的。结果表明,在不损害该方法的准确性的情况下,性能有了显著改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle Incident Hot Spots Identification: An Approach for Big Data
In this work we introduce a fast big data approach for road incident hot spot identification using Apache Spark. We implement an existing immuno-inspired mechanism, namely SeleSup, as a series of MapReduce-like operations. SeleSup is composed of a number of iterations that remove data redundancies and result in the detection of areas of high likelihood of vehicles incidents. It has been successfully applied to large datasets, however, as the size of the data increases to millions of instances, its performance drops significantly. Our objective therefore is to re-conceptualise the method for big data. In this paper we present the new implementation, the challenges faced when converting the method for the Apache Spark platform as well as the outcomes obtained. For our experiments we employ a large dataset containing hundreds of thousands of Heavy Good Vehicles incidents, collected via telematics. Results show a significant improvement in performance with no detriment to the accuracy of the method.
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