从树上

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引用次数: 0

摘要

为了提高大量历史数据的可用性,本文采用决策树技术,在历史DSRC车速数据的基础上推导出车速模式。这些模式通过生成按月份、时间和路段分类的模式单元来反映现实中的时空变迁。研究对象是在国内交通高峰频繁的京釜高速公路首尔TG ~安城IC区间。采用决策树技术对车速按周进行分类。因此,产生了五个不同的模式组:(星期一)(星期二·星期三·星期四)(星期五)(星期六)(星期日)。通过统计验证,对9个不同路段的模式进行了有效性验证,拟合准确率达到93%。为了减少对个人旅行速度数据的旅行模式误差,还测试了四个附加变量。其中,“上月交通状况”变量通过减少决策树模型中50%的速度方差,提高了模式分组的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Trees
In this paper, travel speed patterns were deducted based on historical DSRC travel speed data using Decision Tree technique to improve availability of the massive amount of historical data. These patterns were designed to reflect spatio-temporal vicissitudes in reality by generating pattern units classified by months, time of day, and highway sections. The study area was from Seoul TG to Ansung IC sections on Gyung-bu highway where high peak time of day frequently occurs in South Korea. Decision Tree technique was applied to categorize travel speed according to day of week. As a result, five different pattern groups were generated: (Mon)(Tue·Wed·Thu)(Fri)(Sat)(Sun). Statistical verification was conducted to prove the validity of patterns on nine different highway sections, and the accuracy of fitting was found to be 93%. To reduce travel pattern errors against individual travel speed data, inclusion of four additional variables were also tested. Among those variables, ‘traffic condition on previous month’ variable improved the pattern grouping accuracy by reducing 50% of speed variance in the decision tree model developed.
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