首页> 外文OA文献 >Improved Annual Average Daily Traffic (AADT) Estimation for Local Roads using Parcel-Level Travel Demand Modeling
【2h】

Improved Annual Average Daily Traffic (AADT) Estimation for Local Roads using Parcel-Level Travel Demand Modeling

机译:使用包裹级旅行需求模型改进地方道路的年平均每日交通量(aaDT)

摘要

Annual Average Daily Traffic (AADT) is a critical input to many transportation analyses. By definition, AADT is the average 24-hour volume at a highway location over a full year. Traditionally, AADT is estimated using a mix of permanent and temporary traffic counts. Because field collection of traffic counts is expensive, it is usually done for only the major roads, thus leaving most of the local roads without any AADT information. However, AADTs are needed for local roads for many applications. For example, AADTs are used by state Departments of Transportation (DOTs) to calculate the crash rates of all local roads in order to identify the top five percent of hazardous locations for annual reporting to the U.S. DOT.This dissertation develops a new method for estimating AADTs for local roads using travel demand modeling. A major component of the new method involves a parcel-level trip generation model that estimates the trips generated by each parcel. The model uses the tax parcel data together with the trip generation rates and equations provided by the ITE Trip Generation Report. The generated trips are then distributed to existing traffic count sites using a parcel-level trip distribution gravity model. The all-or-nothing assignment method is then used to assign the trips onto the roadway network to estimate the final AADTs. The entire process was implemented in the Cube demand modeling system with extensive spatial data processing using ArcGIS.To evaluate the performance of the new method, data from several study areas in Broward County in Florida were used. The estimated AADTs were compared with those from two existing methods using actual traffic counts as the ground truths. The results show that the new method performs better than both existing methods. One limitation with the new method is that it relies on Cube which limits the number of zones to 32,000. Accordingly, a study area exceeding this limit must be partitioned into smaller areas. Because AADT estimates for roads near the boundary areas were found to be less accurate, further research could examine the best way to partition a study area to minimize the impact.
机译:年平均每日交通量(AADT)是许多交通分析的关键输入。根据定义,AADT是全年高速公路上平均24小时的通行量。传统上,AADT是使用永久性和临时性流量计数的组合来估算的。由于现场交通量统计很昂贵,因此通常只对主要道路进行收集,因此大部分本地道路都没有任何ADT信息。但是,对于许多应用而言,本地道路都需要AADT。例如,美国交通运输部(DOT)使用AADT来计算所有本地道路的撞车率,以识别出向美国DOT年度报告的危险位置的前5%,这是本文研究的一种新方法使用旅行需求建模的局部道路的AADT。新方法的主要组成部分涉及一个地块级行程生成模型,该模型估计每个地块生成的行程。该模型使用税收包裹数据以及ITE行程生成报告中提供的行程生成速率和方程式。然后,使用宗地级行程分布重力模型将生成的行程分配到现有的交通计数站点。然后,采用全有或全无分配方法将行程分配到道路网络上,以估算最终的AADT。整个过程在使用多维数据集的多维数据集需求建模系统中使用ArcGIS进行了广泛的空间数据处理。为了评估新方法的性能,使用了佛罗里达州布罗沃德县几个研究区域的数据。将估计的AADT与使用实际流量计数作为基本事实的两种现有方法进行比较。结果表明,新方法的性能要优于两种方法。新方法的局限性在于它依赖于多维数据集,该多维数据集将区域数限制为32,000。因此,必须将超出此限制的学习区域划分为较小的区域。由于发现AADT对边界区域附近道路的估算不太准确,因此进一步的研究可以研究划分研究区域以最大程度地减少影响的最佳方法。

著录项

  • 作者

    Wang Tao;

  • 作者单位
  • 年度 2012
  • 总页数
  • 原文格式 PDF
  • 正文语种
  • 中图分类

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号