重型卡车交通数据分析系统程序的开发

Q. Yao, W.G. Li, F. Najafi
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引用次数: 1

摘要

采用18基普等效单轴载荷(ESAL)法制定了公路工程寿命的等效单轴载荷。佛罗里达州标准城市交通模塑结构(FSUTMS)不预测重型卡车交通。系统的货车预测模型尚未得到开发。在没有部门卡车预测模型的情况下,未来的卡车交通是基于目前的卡车分类。假定卡车交通量的百分比与年平均每日交通量保持相同的关系。为了路面结构设计的目的,有必要对设计期内18基普esal的累积数量进行估算。由于计算ESALs需要卡车体积和损伤因子,因此估计频率和预测未来重卡交通趋势具有重要意义。本文提出了对重卡交通数据进行分类和分析的系统步骤,并尝试建立系统的重卡交通预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of systematic procedure for the analysis of heavy truck traffic data
The 18 kip equivalent single axle loading (ESAL) process has been taken to develop the expected ESALs for the life of highway projects. The Florida Standard Urban Transportation Molding Structure (FSUTMS) does not forecast heavy truck traffic. The development of systematic truck forecasting model has not been received yet. In the absence of a departmental truck forecasting model, future truck traffic is based on the present day truck classification. The percentage of truck traffic is assumed to hold the same relationship to annual average daily traffic. For the purpose of pavement structural design, it is necessary to estimate the cumulative number of 18 kip ESALs for the design period. Since truck volume and damage factors are needed to calculate ESALs, estimating the frequency and predicting the trend of future heavy truck traffic is significant. The paper presents a systematic procedure for the classification and analysis of heavy truck traffic data and an attempt of developing a systematic truck traffic forecasting model.
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