1,366 research outputs found
Path Planning of Mobile Agents using AI Technique
In this paper, we study coordinated motion in a swarm robotic system, called a swarm-bot. A swarm-bot is a self-assembling and self-organizing. Artifact composed of a swarm of s-bots, mobile robots with the ability to connect to and is connect from each other. The swarm-bot concept is particularly suited for tasks that require all-terrain navigation abilities, such as space exploration or rescue in collapsed buildings. As a first step toward the development of more complex control strategies, we investigate the case in which a swarm-bot has to explore an arena while avoiding falling into holes.
In such a scenario, individual s-bots have sensory–motor limitations that prevent them navigating efficiently. These limitations can be overcome if the s-bots are made to cooperate. In particular, we exploit the s-bots’ ability to physically connect to each other. In order to synthesize the s-bots’ controller, we rely on artificial evolution, which we show to be a powerful tool for the production of simple and effective solutions to the hole avoidance task
Coordination of Multirobot Teams and Groups in Constrained Environments: Models, Abstractions, and Control Policies
Robots can augment and even replace humans in dangerous environments, such as search and rescue and reconnaissance missions, yet robots used in these situations are largely tele-operated. In most cases, the robots\u27 performance depends on the operator\u27s ability to control and coordinate the robots, resulting in increased response time and poor situational awareness, and hindering multirobot cooperation.
Many factors impede extended autonomy in these situations, including the unique nature of individual tasks, the number of robots needed, the complexity of coordinating heterogeneous robot teams, and the need to operate safely. These factors can be partly addressed by having many inexpensive robots and by control policies that provide guarantees on convergence and safety.
In this thesis, we address the problem of synthesizing control policies for navigating teams of robots in constrained environments while providing guarantees on convergence and safety. The approach is as follows. We first model the configuration space of the group (a space in which the robots cannot violate the constraints) as a set of polytopes. For a group with a common goal configuration, we reduce complexity by constructing a configuration space for an abstracted group state. We then construct a discrete representation of the configuration space, on which we search for a path to the goal. Based on this path, we synthesize feedback controllers, decentralized affine controllers for kinematic systems and nonlinear feedback controllers for dynamical systems, on the polytopes, sequentially composing controllers to drive the system to the goal. We demonstrate the use of this method in urban environments and on groups of dynamical systems such as quadrotors.
We reduce the complexity of multirobot coordination by using an informed graph search to simultaneously build the configuration space and find a path in its discrete representation to the goal. Furthermore, by using an abstraction on groups of robots we dissociate complexity from the number of robots in the group. Although the controllers are designed for navigation in known environments, they are indeed more versatile, as we demonstrate in a concluding simulation of six robots in a partially unknown environment with evolving communication links, object manipulation, and stigmergic interactions
Self-navigation in crowds: An invariant set-based approach
Self-navigation in non-coordinating crowded environments is formidably
challenging within multi-agent systems consisting of non-holonomic robots
operating through local sensing. Our primary objective is the development of a
novel, rapid, sensor-driven, self-navigation controller that directly computes
control commands to enable safe maneuvering while coexisting with other agents.
We propose an input-constrained feedback controller meticulously crafted for
non-holonomic mobile robots and the characterization of associated invariant
sets. The invariant sets are the key to maintaining stability and safety amidst
the non-cooperating agents. We then propose a planning strategy that
strategically guides the generation of invariant sets toward the agent's
intended target. This enables the agents to directly compute theoretically safe
control inputs without explicitly requiring pre-planned paths/trajectories to
reliably navigate through crowded multi-agent environments. The practicality of
our technique is demonstrated through hardware experiments, and the ability to
parallelize computations to shorten computational durations for synthesizing
safe control commands. The proposed approach finds potential applications in
crowded multi-agent scenarios that require rapid control computations based on
perceived safety bounds during run-time
Rover and Telerobotics Technology Program
The Jet Propulsion Laboratory's (JPL's) Rover and Telerobotics Technology Program, sponsored by the National Aeronautics and Space Administration (NASA), responds to opportunities presented by NASA space missions and systems, and seeds commerical applications of the emerging robotics technology. The scope of the JPL Rover and Telerobotics Technology Program comprises three major segments of activity: NASA robotic systems for planetary exploration, robotic technology and terrestrial spin-offs, and technology for non-NASA sponsors. Significant technical achievements have been reached in each of these areas, including complete telerobotic system prototypes that have built and tested in realistic scenarios relevant to prospective users. In addition, the program has conducted complementary basic research and created innovative technology and terrestrial applications, as well as enabled a variety of commercial spin-offs
Cybernetic automata: An approach for the realization of economical cognition for multi-robot systems
The multi-agent robotics paradigm has attracted much attention due to the
variety of pertinent applications that are well-served by the use of a multiplicity of
agents (including space robotics, search and rescue, and mobile sensor networks). The
use of this paradigm for most applications, however, demands economical, lightweight
agent designs for reasons of longer operational life, lower economic cost, faster and
easily-verified designs, etc.
An important contributing factor to an agent’s cost is its control architecture.
Due to the emergence of novel implementation technologies carrying the promise of
economical implementation, we consider the development of a technology-independent
specification for computational machinery. To that end, the use of cybernetics toolsets
(control and dynamical systems theory) is appropriate, enabling a principled specifi-
cation of robotic control architectures in mathematical terms that could be mapped
directly to diverse implementation substrates.
This dissertation, hence, addresses the problem of developing a technologyindependent
specification for lightweight control architectures to enable robotic agents
to serve in a multi-agent scheme. We present the principled design of static and dynamical
regulators that elicit useful behaviors, and integrate these within an overall
architecture for both single and multi-agent control. Since the use of control theory
can be limited in unstructured environments, a major focus of the work is on the engineering of emergent behavior.
The proposed scheme is highly decentralized, requiring only local sensing and
no inter-agent communication. Beyond several simulation-based studies, we provide
experimental results for a two-agent system, based on a custom implementation employing
field-programmable gate arrays
A novel coordination framework for multi-robot systems
Having made great progress tackling the basic problems concerning single-robot systems, many researchers shifted their focus towards the study of multi-robot systems (MRS). MRS were shortly found to be a perfect t for tasks considered to be hard, complex or even impossible for a single robot to perform, e.g. spatially separate tasks. One core research problem of MRS is robots' coordinated motion planning and control. Arti cial potential elds (APFs) and virtual spring-damper bonds are among the most commonly used models to attack the trajectory planning problem of MRS coordination. However, although mathematically sound, these approaches fail to guarantee inter-robot collision-free path generation. This is particularly the case when robots' dynamics, nonholonomic constraints and complex geometry are taken into account. In this thesis, a novel bio-inspired collision avoidance framework via virtual shells is proposed and augmented into the high-level trajectory planner. Safe trajectories can hence be generated for the low-level controllers to track. Motion control is handled by the design of hierarchical controllers which utilize virtual inputs. Several distinct coordinated task scenarios for 2D and 3D environments are presented as a proof of concept. Simulations are conducted with groups of three, four, ve and ten nonholonomic mobile robots as well as groups of three and ve quadrotor UAVs. The performance of the overall improved coordination structure is veri ed with very promising result
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