2021
DOI: 10.1177/03611981211027151
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A Deep Learning Model for Off-Ramp Hourly Traffic Volume Estimation

Abstract: This paper addresses estimation of traffic volume of freeway off-ramps. Freeways are the transportation network’s main corridors, serving a large portion of the traffic volume. This traffic passes into the lower-level roads through off-ramps. Therefore, the traffic condition of the off-ramps is an essential factor affecting the operation of the transportation network. The continuous collection of volume data is impractical, and transportation authorities install vehicle detectors permanently on only a few off-… Show more

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Cited by 9 publications
(1 citation statement)
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“…In deep learning approaches, Nohekhan et al [10] proposed using a deep learning model to estimate the hourly traffic volume of highway off-ramps. The downstream traffic volumes, probe speeds, and infrastructure characteristics of the road segments were used as explanatory variables.…”
Section: ) Models For Temporal Similarities In Traffic Fluctuationsmentioning
confidence: 99%
“…In deep learning approaches, Nohekhan et al [10] proposed using a deep learning model to estimate the hourly traffic volume of highway off-ramps. The downstream traffic volumes, probe speeds, and infrastructure characteristics of the road segments were used as explanatory variables.…”
Section: ) Models For Temporal Similarities In Traffic Fluctuationsmentioning
confidence: 99%