Study of traffic incident classification using support vector machine

Traffic incidents such as accidents, vehicle breakdowns, unattended vehicles, and so on, tends to have an impact on traffic conditions of the roads. It is a non-recurring cause of traffic congestion, which would potentially affect the operational performance and safety issues of the traffic systems....

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Main Author: Tan, Jing Mei
Other Authors: Zhu Feng
Format: Final Year Project
Language:English
Published: 2017
Subjects:
Online Access:http://hdl.handle.net/10356/72988
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-729882023-03-03T17:26:39Z Study of traffic incident classification using support vector machine Tan, Jing Mei Zhu Feng School of Civil and Environmental Engineering DRNTU::Engineering::Civil engineering::Transportation Traffic incidents such as accidents, vehicle breakdowns, unattended vehicles, and so on, tends to have an impact on traffic conditions of the roads. It is a non-recurring cause of traffic congestion, which would potentially affect the operational performance and safety issues of the traffic systems. Hence, it is essential to detect and predict traffic incidents so as to alleviate the problem as soon as possible. In this project, Support Vector Machine (SVM) model is explored and used for traffic incident type prediction based on traffic data collected. To do so, real-time traffic data for a period of one week is extracted and retrieved from Land Transport Authority (LTA) of Singapore’s DataMall. Statistical analysis of the one week traffic data is carried out to analyse the percentage of incident counts in accordance to the traffic speed bands, road category and incident types. A selection of SVM kernel functions and parameters will be trained and tested to determine the optimum prediction model in regards to the prediction accuracy. As a result, the outcomes showed that the SVM for radial basis function (RBF) kernel of gamma and C values equal to 100 provides the best prediction accuracy with an average of 90%. Furthermore, the RBF kernel function was found to perform better than the linear kernel function. Bachelor of Engineering (Civil) 2017-12-18T07:12:28Z 2017-12-18T07:12:28Z 2017 Final Year Project (FYP) http://hdl.handle.net/10356/72988 en Nanyang Technological University 114 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Civil engineering::Transportation
spellingShingle DRNTU::Engineering::Civil engineering::Transportation
Tan, Jing Mei
Study of traffic incident classification using support vector machine
description Traffic incidents such as accidents, vehicle breakdowns, unattended vehicles, and so on, tends to have an impact on traffic conditions of the roads. It is a non-recurring cause of traffic congestion, which would potentially affect the operational performance and safety issues of the traffic systems. Hence, it is essential to detect and predict traffic incidents so as to alleviate the problem as soon as possible. In this project, Support Vector Machine (SVM) model is explored and used for traffic incident type prediction based on traffic data collected. To do so, real-time traffic data for a period of one week is extracted and retrieved from Land Transport Authority (LTA) of Singapore’s DataMall. Statistical analysis of the one week traffic data is carried out to analyse the percentage of incident counts in accordance to the traffic speed bands, road category and incident types. A selection of SVM kernel functions and parameters will be trained and tested to determine the optimum prediction model in regards to the prediction accuracy. As a result, the outcomes showed that the SVM for radial basis function (RBF) kernel of gamma and C values equal to 100 provides the best prediction accuracy with an average of 90%. Furthermore, the RBF kernel function was found to perform better than the linear kernel function.
author2 Zhu Feng
author_facet Zhu Feng
Tan, Jing Mei
format Final Year Project
author Tan, Jing Mei
author_sort Tan, Jing Mei
title Study of traffic incident classification using support vector machine
title_short Study of traffic incident classification using support vector machine
title_full Study of traffic incident classification using support vector machine
title_fullStr Study of traffic incident classification using support vector machine
title_full_unstemmed Study of traffic incident classification using support vector machine
title_sort study of traffic incident classification using support vector machine
publishDate 2017
url http://hdl.handle.net/10356/72988
_version_ 1759856091984822272