利用连续和短时交通流量计数评估基于探头的卡车流量的准确性

Cassidy Zrobek, Giuseppe Grande, Jonathan D. Regehr, Babak Mehran
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引用次数: 0

摘要

随着手机和联网汽车导航系统的普及,市场上出现了基于探头的交通数据产品。本研究评估了使用北美一家名为 StreetLight Data (StL) 的公司提供的基于探针的交通活动指数获得的年均日交通总量、卡车交通量、中型卡车交通量和重型卡车交通量的准确性。基于探头的估算结果与温尼伯大都会区 11 个连续计数点的 2019、2020 和 2021 年交通量以及 29 个短时计数点的 2019 年交通量进行了比较。结果显示,地面实况与基于探针的总流量估算值之间存在合理的一致性,各研究年份的平均绝对百分比误差 (MAPE) 从 8.8% 到 22.1% 不等。中型卡车估算值的误差大于总流量,MAPE 为 29.9% 至 37.5%。尽管重型卡车的交通量高于中型卡车,但其探测数据样本最小,误差也最大,MAPE 为 56.6% 至 96.4%。由于样本量较大,StL 中型卡车指数比重型卡车指数更能预测重型卡车的交通量。此外,仅使用中型卡车指数估算的卡车总流量比使用中型和重型卡车指数估算的卡车总流量之和更为准确。最后,在仅使用中型卡车指数估算卡车交通量时,SDC 站点 2019 年年均日总交通量和卡车交通量估算值的百分比差异相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating the Accuracy of Probe-Based Truck Volumes using Continuous and Short-Duration Traffic Counts
The widespread nature of cell phones and connected vehicle navigation systems has led to the development of commercially available probe-based traffic data products. This study assesses the accuracy of annual average daily total traffic, truck traffic, medium-duty truck traffic, and heavy-duty truck traffic volumes obtained using probe-based traffic activity indices from a North American company called StreetLight Data (StL). The probe-based estimates were compared with 2019, 2020, and 2021 volumes at eleven continuous count sites and 2019 volumes at twenty-nine short-duration count (SDC) sites in the Winnipeg Metropolitan Region. The results showed reasonable agreement between the ground truth and probe-based total traffic estimates with mean absolute percent errors (MAPEs) ranging from 8.8% to 22.1% across the study years. The medium-duty truck estimates had larger errors than total traffic with MAPEs of 29.9% to 37.5%. Despite having higher volumes than medium-duty trucks, heavy-duty trucks had the smallest probe data sample and largest errors with MAPEs of 56.6% to 96.4%. Benefiting from its larger sample size, the StL medium-duty truck index was found to be a better predictor of heavy-duty truck traffic than the heavy-duty truck index. Further, the total truck volumes estimated using only the medium-duty index were more accurate than those taken as the sum of the medium and heavy-duty truck volumes obtained using their respective indices. Finally, the percent differences for the 2019 annual average daily total traffic and truck traffic estimates at the SDC sites were comparable when only the medium-duty index was used for truck volume estimation.
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