An Intelligent traffic network optimisation by use of Bayesian inference methods to combat air pollution
Date
2017-06
Authors
Advisors
Journal Title
Journal ISSN
ISSN
DOI
Volume Title
Publisher
PTRC Education and Research Services Limited
Type
Conference
Peer reviewed
Abstract
Traffic flow related air pollution is one of the major problems in urban areas, and is often difficult to avoid it if the time sequenced dynamic pollution and traffic parameters are not identified and modelled efficiently. In our introduced work here, an artificial intelligence technique such as Bayesian networks are used for a robust traffic data analysis and modelling. The most common challenge in traditional data analysis is a lack of capability of unveiling the hidden links between the distant data attributes (e.g. pollution sources, dynamic traffic parameters, geographic location characteristics, etc.), whereas some subtle effects of these parameters or events may play an important role in pollution on a long term basis.
Description
CCI Group has contributed to the research
Keywords
traffic network design, optimisation, air pollution, Bayesian networks
Citation
Elizondo, D. and Orun, A. (2017) An Intelligent traffic network optimisation by use of Bayesian inference methods to combat air pollution, TPM- Transport Practitioner’s Meeting Conference, 28-29 June 2017, Nottingham