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Hybrid Automaton Based Vehicle Platoon Modelling and Cooperation Behaviour Profile Prediction

Lejla Banjanović-Mehmedović, Ivana Butigan, Fahrudin Mehmedović, Mehmed Kantardzic

Year
2018
Citations
5
Access
Open access

Abstract

Autonomous cooperative driving systems require the integration of research activities in the field of embedded systems, robotics, communication, control and artificial intelligence in order to create a secure and intelligent autonomous drivers behaviour patterns in the traffic. Beside autonomous vehicle management, an important research focus is on the cooperation behaviour management. In this paper, we propose hybrid automaton modelling to emulate flexible vehicle Platoon and vehicles cooperation interactions. We introduce novel coding function for Platoon cooperation behaviour profile generation in time, which depends of vehicles number in Platoon and behaviour types. As the behaviour prediction of transportation systems, one of the primarily used methods of artificial intelligence in Intelligent Transport Systems, we propose an approach towards NARX neural network prediction of Platoon cooperation behaviour profile. With incorporation of Platoon manoeuvres dynamic prediction, which is capable of analysing traffic behaviour, this approach would be useful for secure implementation of real autonomous vehicles cooperation.

Keywords

PlatoonAutomatonCellular automatonComputer scienceHybrid automatonSimulationArtificial intelligenceControl (management)

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