An application of artificial neural networks in freeway incident detection

Non-recurring congestion caused by incidents is a major source of traffic delay in freeway systems. With the objective of reducing these traffic delays, traffic operation managers are focusing on detecting incident conditions and dispatching emergency management teams to the scene quickly. During th...

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Main Author: Weerasuriya, Sujeeva A.
Format: Others
Published: Scholar Commons 1998
Subjects:
Online Access:http://scholarcommons.usf.edu/etd/2949
http://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=3957&context=etd
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spelling ndltd-USF-oai-scholarcommons.usf.edu-etd-39572015-09-30T04:40:14Z An application of artificial neural networks in freeway incident detection Weerasuriya, Sujeeva A. Non-recurring congestion caused by incidents is a major source of traffic delay in freeway systems. With the objective of reducing these traffic delays, traffic operation managers are focusing on detecting incident conditions and dispatching emergency management teams to the scene quickly. During the past few decades, a few number of conventional algorithms and artificial neural network models were proposed to automate the process of detecting incident conditions on freeways. These algorithms and models, known as automatic incident detection methods (AIDM), have experienced a varying degree of detection capability. Of these AIDMs, artificial neural network-based approaches have illustrated better detection performance than the conventional approaches such as filtering techniques, decision tree method, and catastrophe theory. So far, a few neural network model structures have been tested to detect freeway incidents. Since the freeway incidents directly affect the freeway traffic flow, majority of these models have used only traffic flow variables as model inputs. However, changes in traffic flow may also be stimulated by the other features (e.g., freeway geometry) to a greater extent. Many AIDMs have also used a conventional detection rate as a performance measure to assess the detection capability. Yet the principle function of incident detection model, which is to identify whether an incident condition exists for a given traffic pattern, is not measured in its entirety by this conventional measure. In this study, new input feature sets, including freeway geometry information, were proposed for freeway incident detection. Sixteen different artificial neural network (ANN) models based on feed forward and recurrent architectures with a variety of input feature sets were developed. ANN models with single and double hidden layers were investigated for incident detection performance. A modified form of a conventional detection rate was introduced to capture full capability of AIDMs in detecting incident patterns in the freeway traffic flow. Results of this study suggest that double hidden layer networks are better than single hidden layer networks. The study has demonstrated the potential of ANNs to improve the reliability using double layer networks when freeway geometric information is included in the model. 1998-01-01T08:00:00Z text application/pdf http://scholarcommons.usf.edu/etd/2949 http://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=3957&context=etd default Graduate Theses and Dissertations Scholar Commons artificial neural networks freeway incident detection American Studies Arts and Humanities
collection NDLTD
format Others
sources NDLTD
topic artificial neural networks
freeway
incident
detection
American Studies
Arts and Humanities
spellingShingle artificial neural networks
freeway
incident
detection
American Studies
Arts and Humanities
Weerasuriya, Sujeeva A.
An application of artificial neural networks in freeway incident detection
description Non-recurring congestion caused by incidents is a major source of traffic delay in freeway systems. With the objective of reducing these traffic delays, traffic operation managers are focusing on detecting incident conditions and dispatching emergency management teams to the scene quickly. During the past few decades, a few number of conventional algorithms and artificial neural network models were proposed to automate the process of detecting incident conditions on freeways. These algorithms and models, known as automatic incident detection methods (AIDM), have experienced a varying degree of detection capability. Of these AIDMs, artificial neural network-based approaches have illustrated better detection performance than the conventional approaches such as filtering techniques, decision tree method, and catastrophe theory. So far, a few neural network model structures have been tested to detect freeway incidents. Since the freeway incidents directly affect the freeway traffic flow, majority of these models have used only traffic flow variables as model inputs. However, changes in traffic flow may also be stimulated by the other features (e.g., freeway geometry) to a greater extent. Many AIDMs have also used a conventional detection rate as a performance measure to assess the detection capability. Yet the principle function of incident detection model, which is to identify whether an incident condition exists for a given traffic pattern, is not measured in its entirety by this conventional measure. In this study, new input feature sets, including freeway geometry information, were proposed for freeway incident detection. Sixteen different artificial neural network (ANN) models based on feed forward and recurrent architectures with a variety of input feature sets were developed. ANN models with single and double hidden layers were investigated for incident detection performance. A modified form of a conventional detection rate was introduced to capture full capability of AIDMs in detecting incident patterns in the freeway traffic flow. Results of this study suggest that double hidden layer networks are better than single hidden layer networks. The study has demonstrated the potential of ANNs to improve the reliability using double layer networks when freeway geometric information is included in the model.
author Weerasuriya, Sujeeva A.
author_facet Weerasuriya, Sujeeva A.
author_sort Weerasuriya, Sujeeva A.
title An application of artificial neural networks in freeway incident detection
title_short An application of artificial neural networks in freeway incident detection
title_full An application of artificial neural networks in freeway incident detection
title_fullStr An application of artificial neural networks in freeway incident detection
title_full_unstemmed An application of artificial neural networks in freeway incident detection
title_sort application of artificial neural networks in freeway incident detection
publisher Scholar Commons
publishDate 1998
url http://scholarcommons.usf.edu/etd/2949
http://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=3957&context=etd
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