Towards Universality in Automatic Freeway Incident Detection: A Calibration-Free Algorithm

Freeway automatic incident detection (AID) algorithms have been extensively investigated over the last forty years. A myriad of algorithms, covering a broad range of types in terms of complexity, data requirements, and efficiency have been published in the literature. However, a 2007 nationwide surv...

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Main Author: de Castro-Neto, Manoel Mendonca
Format: Others
Published: Trace: Tennessee Research and Creative Exchange 2009
Subjects:
Online Access:http://trace.tennessee.edu/utk_graddiss/53
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spelling ndltd-UTENN-oai-trace.tennessee.edu-utk_graddiss-10832011-12-13T16:06:46Z Towards Universality in Automatic Freeway Incident Detection: A Calibration-Free Algorithm de Castro-Neto, Manoel Mendonca Freeway automatic incident detection (AID) algorithms have been extensively investigated over the last forty years. A myriad of algorithms, covering a broad range of types in terms of complexity, data requirements, and efficiency have been published in the literature. However, a 2007 nationwide survey concluded that the implementation of AID algorithms in traffic management centers is still very limited. There are a few reasons for this discrepancy between the state-of-the-art and the state-of the-practice. First, current AID algorithms yield unacceptably high rates of false alarm when implemented in real-world. Second, the complexities involved in algorithm calibration require levels of efforts and diligence that may overburden Traffic Management Center (TMC) personnel. The main objective of this research was to develop a self-learning, transferable algorithm that requires no calibration. The dynamic thresholds of the proposed algorithm are based on historical data of traffic, thus accounting for variations of traffic throughout the day. Therefore, the novel approach is able to recognize recurrent congestion, thus greatly reducing the incidence of false alarms. In addition, the proposed method requires no human-intervention, which certainly encourages its implementation. The presented model was evaluated in a newly developed incident database, which contained forty incidents. The model performed better than the California, Minnesota, and Standard Normal Deviation algorithms. 2009-08-01 text application/pdf http://trace.tennessee.edu/utk_graddiss/53 Doctoral Dissertations Trace: Tennessee Research and Creative Exchange Civil and Environmental Engineering
collection NDLTD
format Others
sources NDLTD
topic Civil and Environmental Engineering
spellingShingle Civil and Environmental Engineering
de Castro-Neto, Manoel Mendonca
Towards Universality in Automatic Freeway Incident Detection: A Calibration-Free Algorithm
description Freeway automatic incident detection (AID) algorithms have been extensively investigated over the last forty years. A myriad of algorithms, covering a broad range of types in terms of complexity, data requirements, and efficiency have been published in the literature. However, a 2007 nationwide survey concluded that the implementation of AID algorithms in traffic management centers is still very limited. There are a few reasons for this discrepancy between the state-of-the-art and the state-of the-practice. First, current AID algorithms yield unacceptably high rates of false alarm when implemented in real-world. Second, the complexities involved in algorithm calibration require levels of efforts and diligence that may overburden Traffic Management Center (TMC) personnel. The main objective of this research was to develop a self-learning, transferable algorithm that requires no calibration. The dynamic thresholds of the proposed algorithm are based on historical data of traffic, thus accounting for variations of traffic throughout the day. Therefore, the novel approach is able to recognize recurrent congestion, thus greatly reducing the incidence of false alarms. In addition, the proposed method requires no human-intervention, which certainly encourages its implementation. The presented model was evaluated in a newly developed incident database, which contained forty incidents. The model performed better than the California, Minnesota, and Standard Normal Deviation algorithms.
author de Castro-Neto, Manoel Mendonca
author_facet de Castro-Neto, Manoel Mendonca
author_sort de Castro-Neto, Manoel Mendonca
title Towards Universality in Automatic Freeway Incident Detection: A Calibration-Free Algorithm
title_short Towards Universality in Automatic Freeway Incident Detection: A Calibration-Free Algorithm
title_full Towards Universality in Automatic Freeway Incident Detection: A Calibration-Free Algorithm
title_fullStr Towards Universality in Automatic Freeway Incident Detection: A Calibration-Free Algorithm
title_full_unstemmed Towards Universality in Automatic Freeway Incident Detection: A Calibration-Free Algorithm
title_sort towards universality in automatic freeway incident detection: a calibration-free algorithm
publisher Trace: Tennessee Research and Creative Exchange
publishDate 2009
url http://trace.tennessee.edu/utk_graddiss/53
work_keys_str_mv AT decastronetomanoelmendonca towardsuniversalityinautomaticfreewayincidentdetectionacalibrationfreealgorithm
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