Istrazivanja i projektovanja za privreduJournal of Applied Engineering Science

THE IMPACT OF ACTUATED CONTROL ON THE ENVIRONMENT AND THE TRAFFIC FLOW


DOI: 10.5937/jaes0-33043 
This is an open access article distributed under the CC BY 4.0
Creative Commons License

Volume 20 article 933 pages: 305-314

Alica Kalašová
Department of Road and Urban Transport University of Žilina, Žilina 01026, Slovakia

Ambróz Hájnik*
Department of Road and Urban Transport University of Žilina, Žilina 01026, Slovakia

Stanislav Kubaľák
Department of Road and Urban Transport University of Žilina, Žilina 01026, Slovakia

Ján Beňuš
Department of Road and Urban Transport University of Žilina, Žilina 01026, Slovakia

Veronika Harantová
Department of Road and Urban Transport University of Žilina, Žilina 01026, Slovakia

In our paper, we have analyzed and compared fixed and actuated control at a chosen intersection, where we pointed out the importance of actuated control and its benefits. We have used traffic data from sensors in the roadway. The intersection was modelled in Aimsun, where we performed simulations. The research focused mainly on the impact of actuated control on the basic characteristics of the traffic flow, delay time and emissions. The outputs of simulations showed positive results of actuated control in all compared values. The environmental pollution topic is up-to-date and road transport has a significant impact on it. Furthermore, we want to continue with our research to investigate the impact of speed changes on emission production and the smoothness of the traffic flow under fixed and actuated control.

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We would like to thank Siemens Mobility for provided traffic data and signal plans of solved signal-controlled intersection

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