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The use of simulation modelling in the design of a road transport incident detection algorithm

The use of simulation modelling in the design of a road transport incident detection algorithm
The use of simulation modelling in the design of a road transport incident detection algorithm
Automatic incident detection is becoming one of the core tools of urban traffic management, enabling rapid responses to developing congestion. Existing incident detection systems however can be hard to calibrate and require the system to be operational before the process can begin. This paper reports on the development of a new incident detection system ('RAID'), with the facility to use simulation modelling as an integral part of the calibration process.
A commercial traffic simulation model was augmented with additional code developed to mimic the data and messages produced by a real urban traffic control system. These messages could then be fed directly into an offline version of the developed detection algorithms. This approach allows the network managers to both visualise the system in operation and assess the impact of changing rule settings or traffic detector placements without the need for any on-street infrastructure to be installed.
Waterson, B.J.
60a59616-54f7-4c31-920d-975583953286
Cherrett, T.J.
e5929951-e97c-4720-96a8-3e586f2d5f95
Waterson, B.J.
60a59616-54f7-4c31-920d-975583953286
Cherrett, T.J.
e5929951-e97c-4720-96a8-3e586f2d5f95

Waterson, B.J. and Cherrett, T.J. (2004) The use of simulation modelling in the design of a road transport incident detection algorithm. 46th Annual Conference of the Operational Research Society, York, UK. 07 - 09 Sep 2004.

Record type: Conference or Workshop Item (Paper)

Abstract

Automatic incident detection is becoming one of the core tools of urban traffic management, enabling rapid responses to developing congestion. Existing incident detection systems however can be hard to calibrate and require the system to be operational before the process can begin. This paper reports on the development of a new incident detection system ('RAID'), with the facility to use simulation modelling as an integral part of the calibration process.
A commercial traffic simulation model was augmented with additional code developed to mimic the data and messages produced by a real urban traffic control system. These messages could then be fed directly into an offline version of the developed detection algorithms. This approach allows the network managers to both visualise the system in operation and assess the impact of changing rule settings or traffic detector placements without the need for any on-street infrastructure to be installed.

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More information

Published date: October 2004
Additional Information: This paper was subsequently published in Journal of the Operational Research Society, 2005. See eprint 39432
Venue - Dates: 46th Annual Conference of the Operational Research Society, York, UK, 2004-09-07 - 2004-09-09

Identifiers

Local EPrints ID: 53778
URI: http://eprints.soton.ac.uk/id/eprint/53778
PURE UUID: 6b8bee08-8352-43ec-ae59-b2be5f7da9ff
ORCID for B.J. Waterson: ORCID iD orcid.org/0000-0001-9817-7119
ORCID for T.J. Cherrett: ORCID iD orcid.org/0000-0003-0394-5459

Catalogue record

Date deposited: 23 Jul 2008
Last modified: 03 Mar 2023 02:34

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