Operating speed prediction models of trucks at interchange ramps based on high-frequency GPS data

被引:0
|
作者
Zhang, Min [1 ]
Liu, Kai [2 ]
Zhang, Chi [3 ]
Xi, Sheng-Yu [3 ]
Nie, Yu-Han [1 ]
机构
[1] School of Transportation Engineering, Chang'an University, Shaanxi, Xi'an,710064, China
[2] Shenzhen Port Group Co., Ltd., Guangdong, Shenzhen,518083, China
[3] School of Highway, Chang'an University, Shaanxi, Xi'an,710064, China
关键词
Characteristic point - GPS data - High frequency HF - Interchange ramps - Operating speed - Operating speed prediction model - Ramp - Speed prediction models - Traffic Engineering - Traffic safety;
D O I
10.19818/j.cnki.1671-1637.2024.04.017
中图分类号
学科分类号
摘要
To clarify the operating speed rules for trucks at interchange ramps, operating speed models for trucks on interchange ramps were constructed based on the analysis of the measured high-frequency GPS data of trucks from the mainline to the end of the ramp on an expressway. Through the analysis of the measured speeds of trucks, the characteristic points of the truck operating speeds at the ramp were determined, and correlation analysis was carried out for design elements that might be related to the speed at the characteristic points. Multiple operating speed models for trucks at characteristic points were established by using all subsets regression methods. By comparing the Akaike information criterion, mallows's CfJ statistic, and model test values of different models, the parameters of the independent variables were determined, and prediction models for truck operating speed at various locations were developed, including the small nose point of interchanges, the midpoint of the ramp curve, and the merging nose of the ramps and the connecting lines. These models were validated by using data from four ramps. Research results show that the small nose point of interchanges, the midpoint of the ramp curve, and the merging nose of the ramps and the connection lines can be considered as the characteristic points of truck operating speed at ramps. The radius of the ramp curve, the gradient rate of the exit, and the operating speed of the diversion point have significant effects on the operating speed at the small nose point. The radius, the distance from the midpoint to the merging nose of the ramp, and the operating speed at the small nose point have significant effects on the operating speed at the midpoint of the ramp curve. The longitudinal slope in the first half of the midpoint, the curvature of the curve, and the operating speed at the midpoint have significant effects on the operating speed at the merging nose. The correlation coefficients of the operating speed prediction models at the three characteristic points arc 0. 988, 0. 993, and 0. 990, respectively. The mean absolute percentage errors between the predicted and measured values arc less than 10%, which meet the requirements of model accuracy. 9 tabs, 8 figs, 30 refs. © 2024 Chang'an University. All rights reserved.
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页码:228 / 242
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