Development of a global road safety performance function using deep neural networks

This paper explores the idea of applying a machine learning approach to develop a global road safety performance function (SFP) that can be used to predict the expected crash frequencies of different highways from different regions. A deep belief network (DBN) – one of the most popular deep learning...

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Bibliographic Details
Main Authors: Guangyuan Pan, Liping Fu, Lalita Thakali
Format: Article
Language:English
Published: Elsevier 2017-09-01
Series:International Journal of Transportation Science and Technology
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2046043017300199
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spelling doaj-6dcefafef18f456c805c18f61bbefb5d2020-11-25T00:02:59ZengElsevierInternational Journal of Transportation Science and Technology2046-04302017-09-016315917310.1016/j.ijtst.2017.07.004Development of a global road safety performance function using deep neural networksGuangyuan Pan0Liping Fu1Lalita Thakali2Department of Civil & Environmental Engineering, University of Waterloo, Waterloo, ON N2L 3G1, CanadaDepartment of Civil & Environmental Engineering, University of Waterloo, Waterloo, ON N2L 3G1, CanadaDepartment of Civil & Environmental Engineering, University of Waterloo, Waterloo, ON N2L 3G1, CanadaThis paper explores the idea of applying a machine learning approach to develop a global road safety performance function (SFP) that can be used to predict the expected crash frequencies of different highways from different regions. A deep belief network (DBN) – one of the most popular deep learning models is introduced as an alternative to the traditional regression models for crash modelling. An extensive empirical study is conducted using three real world crash data sets covering six classes of highways as defined by location (urban vs. rural), number of lanes, access control, and region. The study involves a number of experiments aiming at addressing several critical questions pertaining to the relative performance of the DBN in terms of network structure, training method, data size, and generalization ability, as compared to the traditional regression models. The experimental results have shown that a DBN model could be trained with different crash datasets with prediction performance being at least comparable to that of the locally calibrated negative binomial (NB) model.http://www.sciencedirect.com/science/article/pii/S2046043017300199Road safetyCollision modelGlobal modelDeep learning
collection DOAJ
language English
format Article
sources DOAJ
author Guangyuan Pan
Liping Fu
Lalita Thakali
spellingShingle Guangyuan Pan
Liping Fu
Lalita Thakali
Development of a global road safety performance function using deep neural networks
International Journal of Transportation Science and Technology
Road safety
Collision model
Global model
Deep learning
author_facet Guangyuan Pan
Liping Fu
Lalita Thakali
author_sort Guangyuan Pan
title Development of a global road safety performance function using deep neural networks
title_short Development of a global road safety performance function using deep neural networks
title_full Development of a global road safety performance function using deep neural networks
title_fullStr Development of a global road safety performance function using deep neural networks
title_full_unstemmed Development of a global road safety performance function using deep neural networks
title_sort development of a global road safety performance function using deep neural networks
publisher Elsevier
series International Journal of Transportation Science and Technology
issn 2046-0430
publishDate 2017-09-01
description This paper explores the idea of applying a machine learning approach to develop a global road safety performance function (SFP) that can be used to predict the expected crash frequencies of different highways from different regions. A deep belief network (DBN) – one of the most popular deep learning models is introduced as an alternative to the traditional regression models for crash modelling. An extensive empirical study is conducted using three real world crash data sets covering six classes of highways as defined by location (urban vs. rural), number of lanes, access control, and region. The study involves a number of experiments aiming at addressing several critical questions pertaining to the relative performance of the DBN in terms of network structure, training method, data size, and generalization ability, as compared to the traditional regression models. The experimental results have shown that a DBN model could be trained with different crash datasets with prediction performance being at least comparable to that of the locally calibrated negative binomial (NB) model.
topic Road safety
Collision model
Global model
Deep learning
url http://www.sciencedirect.com/science/article/pii/S2046043017300199
work_keys_str_mv AT guangyuanpan developmentofaglobalroadsafetyperformancefunctionusingdeepneuralnetworks
AT lipingfu developmentofaglobalroadsafetyperformancefunctionusingdeepneuralnetworks
AT lalitathakali developmentofaglobalroadsafetyperformancefunctionusingdeepneuralnetworks
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