Estimation of annual average daily traffic (AADT) data for low-volume roads: a systematic literature review and meta-analysis

Edmund Baffoe-Twum, Eric Asa, Bright Awuku
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引用次数: 1

Abstract

Background: The annual average daily traffic (AADT) data from road segments are critical for roadway projects, especially with the decision-making processes about operations, travel demand, safety-performance evaluation, and maintenance. Regular updates help to determine traffic patterns for decision-making. Unfortunately, the luxury of having permanent recorders on all road segments, especially low-volume roads, is virtually impossible. Consequently, insufficient AADT information is acquired for planning and new developments. A growing number of statistical, mathematical, and machine-learning algorithms have helped estimate AADT data values accurately, to some extent, at both sampled and unsampled locations on low-volume roadways. In some cases, roads with no representative AADT data are resolved with information from roadways with similar traffic patterns. Methods: This study adopted an integrative approach with a combined systematic literature review (SLR) and meta-analysis (MA) to identify and to evaluate the performance, the sources of error, and possible advantages and disadvantages of the techniques utilized most for estimating AADT data. As a result, an SLR of various peer-reviewed articles and reports was completed to answer four research questions. Results: The study showed that the most frequent techniques utilized to estimate AADT data on low-volume roadways were regression, artificial neural-network techniques, travel-demand models, the traditional factor approach, and spatial interpolation techniques. These AADT data-estimating methods’ performance was subjected to meta-analysis. Three studies were completed: R squared, root means square error, and mean absolute percentage error. The meta-analysis results indicated a mixed summary effect: 1. all studies were equal; 2. all studies were not comparable. However, the integrated qualitative and quantitative approach indicated that spatial-interpolation (Kriging) methods outperformed the others. Conclusions: Spatial-interpolation methods may be selected over others to generate accurate AADT data by practitioners at all levels for decision making. Besides, the resulting cross-validation statistics give statistics like the other methods' performance measures.
低交通量道路年平均日交通量(AADT)数据的估计:系统文献综述和荟萃分析
背景:来自路段的年平均日交通(AADT)数据对道路项目至关重要,特别是在有关运营、出行需求、安全性能评估和维护的决策过程中。定期更新有助于确定决策的交通模式。不幸的是,在所有路段,特别是低流量道路上安装永久记录仪实际上是不可能的。因此,没有足够的AADT信息用于规划和新的发展。在一定程度上,越来越多的统计、数学和机器学习算法有助于在小容量道路上的采样和非采样位置准确地估计AADT数据值。在某些情况下,没有代表性的AADT数据的道路是用具有类似交通模式的道路的信息来解决的。方法:本研究采用系统文献综述(SLR)和荟萃分析(MA)相结合的综合方法来识别和评估AADT数据估计中最常用的技术的性能、误差来源以及可能的优缺点。因此,完成了各种同行评议文章和报告的单反,以回答四个研究问题。结果:小容量道路AADT数据估计最常用的技术是回归、人工神经网络技术、出行需求模型、传统因子法和空间插值技术。这些AADT数据估计方法的性能进行meta分析。完成了三项研究:R平方、均方根误差和平均绝对百分比误差。meta分析结果显示混合汇总效应:1。所有的研究都是平等的;2. 所有的研究都没有可比性。然而,综合定性和定量方法表明,空间插值(Kriging)方法优于其他方法。结论:空间插值方法可为各级从业人员的决策提供准确的AADT数据。此外,产生的交叉验证统计数据提供了与其他方法的性能度量类似的统计数据。
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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