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Data-Driven Imputation Method for Traffic Data in Sectional Units of Road Links

机译:道路连接断面单位交通数据的数据驱动推算方法

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摘要

Missing data imputation is a critical step in data processing for intelligent transportation systems. This paper proposes a data-driven imputation method for sections of road based on their spatial and temporal correlation using a modified - nearest neighbor method. This computing-distributable imputation method is different from the conventional algorithms in the fact that it attempts to impute missing data of a section with multiple sensors that have correlation to each other, at once. This increases computational efficiency greatly compared with other methods, whose imputation subject is individual sensors. In addition, the geometrical property of each section is conserved; in other words, the continuation of traffic properties that each sensor captures is conserved, therefore increasing accuracy of imputation. This paper shows results and analysis of comparison of the proposed method to others such as nearest historical data and expectation maximization by varying missing data type, missing ratio, traffic state, and day type. The results show that the proposed algorithm achieves better performance in almost all of the missing types, missing ratios, day types, and traffic states. When the missing data type cannot be identified or various missing types are mixed, the proposed algorithm shows accurate and stable imputation performance.
机译:丢失数据归因是智能运输系统数据处理中的关键步骤。本文提出了一种基于数据驱动的路段插补方法,该方法基于路段的时空相关性,采用改进的最近邻法。这种可分配计算的插补方法与常规算法的不同之处在于,它试图使用多个相互关联的传感器一次插补一个部分的缺失数据。与归因于个别传感器的其他方法相比,这大大提高了计算效率。另外,每个部分的几何特性都得到保留。换句话说,保留了每个传感器捕获的流量属性的连续性,因此提高了插补的准确性。本文显示了该方法与其他方法(如最近的历史数据和通过更改丢失的数据类型,丢失的比率,流量状态和日期类型的期望最大化)的比较结果和分析。结果表明,所提出的算法在几乎所有丢失类型,丢失比率,日期类型和交通状态下均实现了更好的性能。当无法识别丢失的数据类型或混合各种丢失的类型时,所提出的算法显示出准确而稳定的插补性能。

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