DocumentCode
3267243
Title
Support Vector Machine Technique for the Short Term Prediction of Travel Time
Author
Vanajakshi, Lelitha ; Rilett, Laurence
Author_Institution
IIT Madras, Chennai
fYear
2007
fDate
13-15 June 2007
Firstpage
600
Lastpage
605
Abstract
A vast majority of urban transportation systems in North America are equipped with traffic surveillance systems that provide real time traffic information to traffic management centers. The information from these are processed and provided back to the travelers in real time. However, the travelers are interested to know not only the current traffic information, but also the future traffic conditions predicted based on the real time data. These predicted values inform the drivers on what they can expect when they make the trip. Travel time is one of the most popular variables which the users are interested to know. Travelers make decisions to bypass congested segments of the network, to change departure time or destination etc., based on this information. Hence it is important that the predicted values be as accurate as possible. A number of different forecasting methods have been proposed for travel time forecasting including historic method, real-time method, time series analysis, and artificial neural networks (ANN). This paper examines the use of a machine learning technique, namely support vector machines (SVM), for the short-term prediction of travel time. While other machine learning techniques, such as ANN, have been extensively studied, the reported applications of SVM in the field of transportation engineering are very few. A comparison of the performance of SVM with ANN, real time, and historic approach is carried out. Data from the TransGuide Traffic Management center in San Antonio, Texas, USA is used for the analysis. From the results it was found that SVM is a viable alternative for short-term prediction problems when the amount of data is less or noisy in nature.
Keywords
neural nets; support vector machines; transportation; artificial neural network; machine learning; support vector machine; transportation engineering; travel time prediction; urban transportation system; Artificial neural networks; Information management; Machine learning; North America; Real time systems; Support vector machines; Surveillance; Telecommunication traffic; Time series analysis; Transportation; Inductive loop detectors; Machine learning techniques; Support vector machines; Travel time prediction;
fLanguage
English
Publisher
ieee
Conference_Titel
Intelligent Vehicles Symposium, 2007 IEEE
Conference_Location
Istanbul
ISSN
1931-0587
Print_ISBN
1-4244-1067-3
Electronic_ISBN
1931-0587
Type
conf
DOI
10.1109/IVS.2007.4290181
Filename
4290181
Link To Document