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A review on agent-based technology for traffic and transportation

Published online by Cambridge University Press:  03 May 2013

Ana L. C. Bazzan
Affiliation:
Instituto de Informática/PPGC, UFRGS, Caixa Postal 15064 91.501-970 Porto Alegre, RS, Brazil; e-mail: bazzan@inf.ufrgs.br
Franziska Klügl
Affiliation:
Örebro University, Fakultetsgatan 1, 70182 Örebro, Sweden; e-mail: franziska.klugl@oru.se

Abstract

In the last few years, the number of papers devoted to applications of agent-based technologies to traffic and transportation engineering has grown enormously. Thus, it seems to be the appropriate time to shed light over the achievements of the last decade, on the questions that have been successfully addressed, as well as on remaining challenging issues. In the present paper, we review the literature related to the areas of agent-based traffic modelling and simulation, and agent-based traffic control and management. Later we discuss and summarize the main achievements and the challenges.

Type
Articles
Copyright
Copyright © Cambridge University Press 2013 

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