Enhancing Reliability in Automated Pavement Condition Data with a Data Quality Check Approach for Highway Agencies

Xiaohua Luo, Jueqiang Tao, Feng Wang, Ajmain Faieq, Haitao Gong, Feng Hong
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Abstract

Automated methods have been widely used by highway agencies to collect pavement condition data. However, there are still accuracy and precision issues associated with the reliability of the existing automated data collection methods. Therefore, this research aims to develop data quality check procedures to improve the reliability of automated pavement condition data for highway agencies. The study comprises three main components: identification of data quality check indexes; establishment of data quality thresholds; and implementation of data quality check procedures. Annual pavement rating data collected by a vendor using automated technologies and manual audit data from an independent third party were utilized to develop thresholds and test the procedures. Three districts, including two urban and one rural districts in Texas, were selected for the data quality check implementation. The results indicate that the proposed procedures, along with defined indexes and thresholds, efficiently identify pavements with data quality issues at both the section level and the county level. By pinpointing problematic areas, highway agencies can allocate resources for quick quality checks, enhancing the accuracy and precision of automated pavement condition data. The study can help highway agencies enhance the accuracy and precision of automated pavement condition data, ultimately leading to improvements in their pavement conditions.
为公路机构提供数据质量检查方法,提高路面状况自动数据的可靠性
公路机构已广泛采用自动化方法来收集路面状况数据。然而,现有的自动数据收集方法在可靠性方面仍存在准确性和精确性问题。因此,本研究旨在开发数据质量检查程序,以提高公路机构自动路面状况数据的可靠性。研究包括三个主要部分:确定数据质量检查指标;建立数据质量阈值;实施数据质量检查程序。利用供应商使用自动化技术收集的年度路面评级数据和独立第三方提供的人工审核数据来制定阈值和测试程序。德克萨斯州选择了三个地区(包括两个城市地区和一个农村地区)进行数据质量检查。结果表明,建议的程序以及定义的指标和阈值,可以在路段和县一级有效识别存在数据质量问题的路面。通过精确定位有问题的区域,公路机构可以分配资源进行快速质量检查,从而提高自动路面状况数据的准确性和精确度。该研究可帮助公路机构提高自动路面状况数据的准确性和精确度,最终改善路面状况。
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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