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Predicting Average Vehicle Speed in Two Lane Highways Considering Weather Condition and Traffic Characteristics

机译:考虑到天气状况和交通特性,预测两条车道高速公路的平均车速

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Analysis of vehicle speed with different weather condition and traffic characteristics is very effective in traffic planning. Since the weather condition and traffic characteristics vary every day, the prediction of average speed can be useful in traffic management plans. In this study, traffic and weather data for a two-lane highway located in Northwest of Iran were selected for analysis. After merging traffic and weather data, the linear regression model was calibrated for speed prediction using STATA12.1 Statistical and Data Analysis software. Variables like vehicle flow, percentage of heavy vehicles, vehicle flow in opposing lane, percentage of heavy vehicles in opposing lane, rainfall (mm), snowfall and maximum daily wind speed more than 13m/s were found to be significant variables in the model. Results showed that variables of vehicle flow and heavy vehicle percent acquired the positive coefficient that shows, by increasing these variables the average vehicle speed in every weather condition will also increase. Vehicle flow in opposing lane, percentage of heavy vehicle in opposing lane, rainfall amount (mm), snowfall and maximum daily wind speed more than 13m/s acquired the negative coefficient that shows by increasing these variables, the average vehicle speed will decrease.
机译:具有不同天气状况和交通特性的车速分析在交通规校中非常有效。由于天气状况和交通特性每天都有所不同,因此平均速度的预测可用于交通管理计划。在本研究中,选择位于伊朗西北部的双线公路的交通和天气数据进行分析。合并流量和天气数据后,使用STATA12.1统计和数据分析软件校准线性回归模型以进行速度预测。像车辆流量一样的变量,重型车辆的百分比,相对车道的车辆流量,相反泳道中的重型车辆的百分比,降雨(mm),降雪和最大日常风速超过13m / s的模型中的显着变量。结果表明,通过增加这些变量在每种天气条件下的平均车速也会增加,乘法网流量和重型车辆百分比获得的阳性系数也会增加。车辆流量在相对的车道中,相反的车道中的重型车辆的百分比,降雨量(mm),降雪量和最大的日常风速超过13m / s,获得了通过增加这些变量来显示的负系数,平均车速将减少。

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