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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

Multi-Agent Positional Consensus Under Various Information Paradigms

Das, Kaushik 07 1900 (has links) (PDF)
This thesis addresses the problem of positional consensus of multi-agent systems. A positional consensus is achieved when the agents converge to a point. Some applications of this class of problem is in mid-air refueling of the aircraft or UAVs, targeting a geographical location, etc. In this research work some positional consensus algorithms have been developed. They can be categorized in two part (i) Broadcast control based algorithm (ii) Distributed control based algorithm. In case of broadcast based algorithm control strategies for a group of agents is developed to achieve positional consensus. The problem is constrained by the requirement that every agent must be given the same control input through a broadcast communication mechanism. Although the control command is computed using state information in a global framework, the control input is implemented by the agents in a local coordinate frame. The mathematical formulation has been done in a linear programming framework that is computationally less intensive than earlier proposed methods. Moreover, a random perturbation input in the control command, that helps to achieve reasonable proximity among agents even for a large number of agents, which was not possible with the existing strategy in the literature, is introduced. This method is extended to achieve positional consensus at a pre-specified location. A comparison between the LP approach and the existing SOCP based approach is also presented. Some of the algorithm has been demonstrated successfully on a robotic platform made from LEGO Mindstorms NXT Robots. In the second case of broadcast based algorithm, a decentralized algorithm for a group of multiple autonomous agents to achieve positional consensus has been developed using the broadcast concept. Even here, the mathematical formulation has done using a linear programming framework. Each agent has some sensing radius and it is capable of sensing position and orientation with other agents within their sensing region. The method is computationally feasible and easy to implement. In case of distributed algorithms, a computationally efficient distributed rendezvous algorithm for a group of autonomous agents has been developed. The algorithm uses a rectilinear decision domain (RDD), as against the circular decision domain assumed in earlier work available in the literature. This helps in reducing its computational complexity considerably. An extensive mathematical analysis has been carried out to prove the convergence of the algorithm. The algorithm has also been demonstrated successfully on a robotic platform made from LEGO Mindstorms NXT Robots.
2

Coordination et planification de systèmes multi-agents dans un environnement manufacturier / Coordination and motion planning of multi-agent systems in manufacturing environment

Demesure, Guillaume 08 December 2016 (has links)
Cette thèse porte sur la navigation d'agents dans un environnement manufacturier. Le cadre général du travail relève de la navigation d'AGVs (véhicules autoguidés), transportant librement et intelligemment leur produit. L'objectif est de proposer des outils permettant la navigation autonome et coopérative d’une flotte d’AGVs dans des systèmes de production manufacturiers où les contraintes temporelles sont importantes. Après la présentation d'un état de l'art sur chaque domaine (systèmes manufacturiers et navigation d'agents), les impacts de la mutualisation entre ceux-ci sont présentés. Ensuite, deux problématiques, liées à la navigation d'agents mobiles dans des environnements manufacturiers, sont étudiées. La première problématique est centrée sur la planification de trajectoire décentralisée où une fonction d'ordonnancement est combinée au planificateur pour chaque agent. Cette fonction permet de choisir une ressource lors de la navigation afin d'achever l'opération du produit transporté le plus tôt possible. La première solution consiste en une architecture hétérarchique où les AGVs doivent planifier (ou mettre à jour) leur trajectoire, ordonnancer leur produit pour l'opération en cours et résoudre leurs propres conflits avec les agents à portée de communication. Pour la seconde approche, une architecture hybride à l'aide d'un superviseur, permettant d'assister les agents durant leur navigation, est proposée. L'algorithme de planification de trajectoire se fait en deux étapes. La première étape utilise des informations globales fournies par le superviseur pour anticiper les collisions. La seconde étape, plus locale, utilise les données par rapport aux AGVs à portée de communication afin d'assurer l'évitement de collisions. Afin de réduire les temps de calcul des trajectoires, une optimisation par essaims particulaires est introduite. La seconde problématique se focalise sur la commande coopérative permettant un rendez-vous d'agents non holonomes à une configuration spécifique. Ce rendez-vous doit être atteint en un temps donné par un cahier des charges, fourni par le haut-niveau de contrôle. Pour résoudre ce problème de rendez-vous, nous proposons une loi de commande à temps fixe (i.e. indépendant des conditions initiales) par commutation permettant de faire converger l’état des AGVs vers une resource. Des résultats numériques et expérimentaux sont fournis afin de montrer la faisabilité des solutions proposées. / This thesis is focused on agent navigation in a manufacturing environment. The proposed framework deals with the navigation of AGVs (Automated Guided Vehicles), which freely and smartly transport their product. The objective is to propose some tools allowing the autonomous and cooperative navigation of AGV fleets in manufacturing systems for which temporal constraints are important. After presenting the state of the art of each field (manufacturing systems and agent navigation), the impacts of the cross-fertilization between these two fields are presented. Then, two issues, related to the navigation of mobile agents in manufacturing systems, are studied. The first issue focuses on decentralized motion planning where a scheduling function is combined with the planner for each agent. This function allows choosing a resource during the navigation to complete the ongoing operation of the transported product at the soonest date. The first proposed approach consists in a heterarchical architecture where the AGVs have to plan (or update) their trajectory, schedule their product and solve their own conflict with communicating agents. For the second approach, hybrid architecture with a supervisor, which assists agents during the navigation, is proposed. The motion planning scheme is divided into two steps. The first step uses global information provided by the supervisor to anticipate the future collisions. The second step is local and uses information from communicating agents to ensure the collision avoidance. In order to reduce the computational times, a particle swarm optimization is introduced. The second issue is focused on the cooperative control, allowing a rendezvous of nonholomic agents at a specific configuration. This rendezvous must be achieved in a prescribed time, provided by the higher level of control. To solve this rendezvous, a fixed time (i.e. independent of initial conditions) switching control law is proposed, allowing the convergence of agent states towards a resource configuration. Some numerical and experimental results are provided to show the feasibility of the proposed methods.

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