Speed Distribution Prediction of Freight Vehicles on Mountainous Freeway Using Deep Learning Methods

Driving speed is one of the most critical indicators in safety evaluation and network monitoring in freight transportation. Speed prediction model serves as the most efficient method to obtain the data of driving speed. Current speed prediction models mostly focus on operating speed, which is hard t...

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Main Authors: Yuren Chen, Yu Chen, Bo Yu
Format: Article
Language:English
Published: Hindawi-Wiley 2020-01-01
Series:Journal of Advanced Transportation
Online Access:http://dx.doi.org/10.1155/2020/8953182
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spelling doaj-99177446919a48de80d8efd7af19e14d2020-11-25T01:52:36ZengHindawi-WileyJournal of Advanced Transportation0197-67292042-31952020-01-01202010.1155/2020/89531828953182Speed Distribution Prediction of Freight Vehicles on Mountainous Freeway Using Deep Learning MethodsYuren Chen0Yu Chen1Bo Yu2Key Laboratory of Road and Traffic Engineering of the Ministry of Education, Tongji University, Shanghai, ChinaKey Laboratory of Road and Traffic Engineering of the Ministry of Education, Tongji University, Shanghai, ChinaUniversity of Michigan Transportation Research Institute, 2901 Baxter Rd, Ann Arbor, MI, USADriving speed is one of the most critical indicators in safety evaluation and network monitoring in freight transportation. Speed prediction model serves as the most efficient method to obtain the data of driving speed. Current speed prediction models mostly focus on operating speed, which is hard to reveal the overall condition of driving speed on the road section. Meanwhile, the models were mostly developed based on the regression method, which is inconsistent with natural driving process. Recurrent neural network (RNN) is a distinctive type of deep learning method to capture the temporary dependency in behavioral research. The aim of this paper is to apply the deep learning method to predict the general condition of driving speed in consideration of the road geometry and the temporal evolutions. 3D mobile mapping was applied to obtain road geometry information with high precision, and driving simulation experiment was then conducted with the help of the road geometry data. Driving speed was characterized by the bimodal Gauss mixture model. RNN and its variants including long short-term memory (LSTM) and RNN and gated recurrent units (GRUs) were utilized to predict speed distribution in a spatial-temporal dimension with KL divergence being the loss function. The result proved the applicability of the model in speed distribution prediction of freight vehicles, while LSTM holds the best performance with the length of input sequence being 400 m. The result can be related to the threshold of drivers’ information processing on mountainous freeway. Multiple linear regression models were constructed to be a contrast with the LSTM model, and the results showed that LSTM was superior to regression models in terms of the model accuracy and interpretability of the driving process and the formation of vehicle speed. This study may help to understand speed change behavior of freight vehicles on mountainous freeways, while providing the feasible method for safety evaluation or network efficiency analysis.http://dx.doi.org/10.1155/2020/8953182
collection DOAJ
language English
format Article
sources DOAJ
author Yuren Chen
Yu Chen
Bo Yu
spellingShingle Yuren Chen
Yu Chen
Bo Yu
Speed Distribution Prediction of Freight Vehicles on Mountainous Freeway Using Deep Learning Methods
Journal of Advanced Transportation
author_facet Yuren Chen
Yu Chen
Bo Yu
author_sort Yuren Chen
title Speed Distribution Prediction of Freight Vehicles on Mountainous Freeway Using Deep Learning Methods
title_short Speed Distribution Prediction of Freight Vehicles on Mountainous Freeway Using Deep Learning Methods
title_full Speed Distribution Prediction of Freight Vehicles on Mountainous Freeway Using Deep Learning Methods
title_fullStr Speed Distribution Prediction of Freight Vehicles on Mountainous Freeway Using Deep Learning Methods
title_full_unstemmed Speed Distribution Prediction of Freight Vehicles on Mountainous Freeway Using Deep Learning Methods
title_sort speed distribution prediction of freight vehicles on mountainous freeway using deep learning methods
publisher Hindawi-Wiley
series Journal of Advanced Transportation
issn 0197-6729
2042-3195
publishDate 2020-01-01
description Driving speed is one of the most critical indicators in safety evaluation and network monitoring in freight transportation. Speed prediction model serves as the most efficient method to obtain the data of driving speed. Current speed prediction models mostly focus on operating speed, which is hard to reveal the overall condition of driving speed on the road section. Meanwhile, the models were mostly developed based on the regression method, which is inconsistent with natural driving process. Recurrent neural network (RNN) is a distinctive type of deep learning method to capture the temporary dependency in behavioral research. The aim of this paper is to apply the deep learning method to predict the general condition of driving speed in consideration of the road geometry and the temporal evolutions. 3D mobile mapping was applied to obtain road geometry information with high precision, and driving simulation experiment was then conducted with the help of the road geometry data. Driving speed was characterized by the bimodal Gauss mixture model. RNN and its variants including long short-term memory (LSTM) and RNN and gated recurrent units (GRUs) were utilized to predict speed distribution in a spatial-temporal dimension with KL divergence being the loss function. The result proved the applicability of the model in speed distribution prediction of freight vehicles, while LSTM holds the best performance with the length of input sequence being 400 m. The result can be related to the threshold of drivers’ information processing on mountainous freeway. Multiple linear regression models were constructed to be a contrast with the LSTM model, and the results showed that LSTM was superior to regression models in terms of the model accuracy and interpretability of the driving process and the formation of vehicle speed. This study may help to understand speed change behavior of freight vehicles on mountainous freeways, while providing the feasible method for safety evaluation or network efficiency analysis.
url http://dx.doi.org/10.1155/2020/8953182
work_keys_str_mv AT yurenchen speeddistributionpredictionoffreightvehiclesonmountainousfreewayusingdeeplearningmethods
AT yuchen speeddistributionpredictionoffreightvehiclesonmountainousfreewayusingdeeplearningmethods
AT boyu speeddistributionpredictionoffreightvehiclesonmountainousfreewayusingdeeplearningmethods
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