基于LTPP数据的沥青路面性能研究——基于地理空间热点分析和决策树模型

IF 4.3 Q2 TRANSPORTATION
Kun Zhang , Zhongren Wang
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引用次数: 4

摘要

环境因素和卡车交通荷载对沥青路面性能影响显著。本研究运用地理空间热点分析、相关分析及决策树分析,探讨环境因素及货车交通荷载对沥青路面性能的影响。基于长期路面性能(LTPP)项目中1725个沥青路面路段的路面数据库,采用地理空间热点分析方法对美国和加拿大不同气候区域的环境因素、卡车交通载荷和沥青路面病害的空间格局进行了表征。通过统计相关分析,发现环境因素热点、卡车交通荷载与沥青路面病害之间存在显著相关。决策树模型是一种有监督的机器学习方法,用于根据环境和交通状况评估与较高遇险风险相关的区域的路面性能。热点分析表明,位于干燥无冻区的路面路段具有较高的卡车交通荷载热点及相关荷载诱发的损伤,如疲劳开裂、纵向轮径开裂和车辙。在干燥无冻结地区,较高百分比的路面路段也被归类为横向开裂的热点。在湿冻区路面路段更容易经历纵向非轮径开裂和表面粗糙度。建立决策树模型,结合环境因素和卡车交通荷载,识别沥青路面损伤热点的可能性。这些决策树模型为路面设计和养护提供了更好的决策信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LTPP data-based investigation on asphalt pavement performance using geospatial hot spot analysis and decision tree models

Environmental factors and truck traffic loads have significant impacts on asphalt pavement performance. This study implements geospatial hot spot, correlation, and decision tree analyses to investigate the impacts of environmental factors and truck traffic loads on asphalt pavement performance. A pavement database with 1725 asphalt pavement sections from the Long-Term Pavement Performance (LTPP) program was built and analyzed using geospatial hot spot analysis to characterize the spatial patterns of environmental factors, truck traffic loads, and asphalt pavement distresses in different climatic regions across the United States and Canada. The statistical correlation analysis was conducted to identify significant correlations among hot spots of environmental factors, truck traffic loads, and asphalt pavement distresses. The decision tree model, which is a supervised machine learning method, was used to assess pavement performance in an area that is associated with higher risks of distress based on contributing environmental and traffic conditions. The hot spot analysis showed that the pavement sections located in the dry no-freeze region had higher percentages of hot spots of truck traffic loads and associated load-induced distresses, such as fatigue cracking, longitudinal wheel path cracking, and rutting. In the dry no-freeze region, higher percentages of pavement sections were also classified as hot spots of transverse cracking. The pavement sections in the wet freeze region are more likely to experience longitudinal non-wheel path cracking and surface roughness. The decision tree models were built to identify the likeliness of hot spots of asphalt pavement distresses using environmental factors and truck traffic loads. These decision tree models provide enhanced decision-making information in pavement design and maintenance.

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来源期刊
International Journal of Transportation Science and Technology
International Journal of Transportation Science and Technology Engineering-Civil and Structural Engineering
CiteScore
7.20
自引率
0.00%
发文量
105
审稿时长
88 days
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