Automatic Imputation of Missing Highway Traffic Volume Data

Mohamed Elshenawy, M. El-Darieby, B. Abdulhai
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引用次数: 6

Abstract

Automatic data imputation is often needed in cyber-physical systems to enhance the quality of incomplete datasets produced by sensors. Existing methods require significant modeling and analysis efforts at each sensor location which hinders their applicability in large-scale systems. This paper presents an automatic approach to selecting and estimating autoregressive integrated moving average models for traffic volume imputation. We study real-life data collected from around 1030 sensors distributed along major highways in Toronto, Canada. We study the characteristics of missing data in order to provide measures for the quality of data collected. The proposed method estimates missing traffic volume data for any sensor from its own observed values. Results show that the proposed procedure can estimate short and mid-sized gaps (less than one week) with an accuracy that ranges between 7 and 25%.
公路交通量缺失数据的自动补全
在网络物理系统中,为了提高传感器产生的不完整数据集的质量,往往需要自动数据输入。现有的方法需要在每个传感器位置进行大量的建模和分析工作,这阻碍了它们在大规模系统中的适用性。提出了一种用于交通量估算的自回归综合移动平均模型的自动选择和估计方法。我们研究了从分布在加拿大多伦多主要高速公路上的大约1030个传感器收集的真实数据。我们研究了缺失数据的特征,以便为所收集数据的质量提供措施。该方法根据传感器自身的观测值估计缺失的交通量数据。结果表明,所提出的程序可以估计短期和中等规模的差距(少于一周),准确度在7%到25%之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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