555 research outputs found

    Hierarchical hybrid control: A case study

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    A case study of the difficulties encountered in the design of hierarchical, hybrid control systems is presented. As our example we use the Intelligent Vehicle Highway System (IVHS) architecture proposed for vehicle platooning, a system that involves both continuous state and discrete event controllers. We point out that even though conventional analysis tools suggest that the proposed design should fulfill certain performance requirements, simulation results show that it does not. We consider this as an indication that the conventional tools currently in use for the design and verification of control systems may be inadequate for the design of hierarchical controllers for hybrid systems. The analysis also indicates certain shortcomings of the current IVHS design. We propose solutions to fix these problems

    Automated highway systems : platoons of vehicles viewed as a multiagent system

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    Tableau d'honneur de la FacultĂ© des Ă©tudes supĂ©rieures et postdoctorales, 2005-2006La conduite collaborative est un domaine liĂ© aux systĂšmes de transport intelligents, qui utilise les communications pour guider de façon autonome des vĂ©hicules coopĂ©ratifs sur une autoroute automatisĂ©e. Depuis les derniĂšres annĂ©es, diffĂ©rentes architectures de vĂ©hicules automatisĂ©s ont Ă©tĂ© proposĂ©es, mais la plupart d’entre elles n’ont pas, ou presque pas, attaquĂ© le problĂšme de communication inter vĂ©hicules. À l’intĂ©rieur de ce mĂ©moire, nous nous attaquons au problĂšme de la conduite collaborative en utilisant un peloton de voitures conduites par des agents logiciels plus ou moins autonomes, interagissant dans un mĂȘme environnement multi-agents: une autoroute automatisĂ©e. Pour ce faire, nous proposons une architecture hiĂ©rarchique d’agents conducteurs de voitures, se basant sur trois couches (couche de guidance, couche de management et couche de contrĂŽle du trafic). Cette architecture peut ĂȘtre utilisĂ©e pour dĂ©velopper un peloton centralisĂ©, oĂč un agent conducteur de tĂȘte coordonne les autres avec des rĂšgles strictes, et un peloton dĂ©centralisĂ©, oĂč le peloton est vu comme une Ă©quipe d’agents conducteurs ayant le mĂȘme niveau d’autonomie et essayant de maintenir le peloton stable.Collaborative driving is a growing domain of Intelligent Transportation Systems (ITS) that makes use of communications to autonomously guide cooperative vehicles on an Automated Highway System (AHS). For the past decade, different architectures of automated vehicles have been proposed, but most of them did not or barely addressed the inter-vehicle communication problem. In this thesis, we address the collaborative driving problem by using a platoon of cars driven by more or less autonomous software agents interacting in a Multiagent System (MAS) environment: the automated highway. To achieve this, we propose a hierarchical driving agent architecture based on three layers (guidance layer, management layer and traffic control layer). This architecture can be used to develop centralized platoons, where the driving agent of the head vehicle coordinates other driving agents by applying strict rules, and decentralized platoons, where the platoon is considered as a team of driving agents with a similar degree of autonomy, trying to maintain a stable platoon

    Argumentation among self-driving vehicles

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    In this day and age where the number of vehicles that are being used on highways and roads has been increasing considerably, there is a need for a global driving technique, or a driving phenomenon, where the vehicles can communicate with each other and maintain efficient driving positions by automating the process without the help of a human driver. With the available technology, self-driving cars are already under the spotlight, but these vehicles only offer limited support to the driver and they require human input in the process of driving. Argumentation techniques can be used to develop an efficient algorithm to resolve the conflicts between Agents i.e vehicles to allow safer travel, reduced emissions and better traffic distribution over road networks. Considering the importance of cooperative driving. platoon transition that has been overlooked in the existing research, our implementation tests the use of an Argumentation technique, on top of the platoons, providing an edge over the existing work related to self-driving vehicles. Utilizing the Argumentation allowed an effective way in resolving the conflicts among platoon leaders allowing a smoother transition of platoon groups. The conducted experiment compared the traffic flow of vehicles between two scenarios namely cooperative driving and non-cooperative driving, deriving the results that showcase the advantages of cooperative driving and also the role of argumentation in conflict resolution among vehicle agents

    Improving Passing Lane Safety and Efficiency for Alaska’s Rural Non‐divided Highways

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    INE/AUTC 14.0

    Simulation Framework for Cooperative Adaptive Cruise Control with Empirical DSRC Module

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    Wireless communication plays a vital role in the promising performance of connected and automated vehicle (CAV) technology. This paper proposes a Vissim-based microscopic traffic simulation framework with an analytical dedicated short-range communication (DSRC) module for packet reception. Being derived from ns-2, a packet-level network simulator, the DSRC probability module takes into account the imperfect wireless communication that occurs in real-world deployment. Four managed lane deployment strategies are evaluated using the proposed framework. While the average packet reception rate is above 93\% among all tested scenarios, the results reveal that the reliability of the vehicle-to-vehicle (V2V) communication can be influenced by the deployment strategies. Additionally, the proposed framework exhibits desirable scalability for traffic simulation and it is able to evaluate transportation-network-level deployment strategies in the near future for CAV technologies.Comment: 6 pages, 6 figure, 44th Annual Conference of the IEEE Industrial Electronics Societ
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