New motion planning and real-time localization methods using proximity for autonomous mobile robots

Approved for public release; distribution is unlimited === One of the most difficult theoretical problems in robotics--motion planning for rigid body robots-- must be solved before a robot can perform real- world tasks such as mine searching and processing. This dissertation proposes a new motion pl...

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Bibliographic Details
Main Author: Wahdan, Mahmoud A.
Other Authors: Kanayama, Yutaka
Language:en_US
Published: Monterey, California. Naval Postgraduate School 2012
Online Access:http://hdl.handle.net/10945/8737
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spelling ndltd-nps.edu-oai-calhoun.nps.edu-10945-87372015-05-21T16:02:10Z New motion planning and real-time localization methods using proximity for autonomous mobile robots Wahdan, Mahmoud A. Kanayama, Yutaka Computer Science Approved for public release; distribution is unlimited One of the most difficult theoretical problems in robotics--motion planning for rigid body robots-- must be solved before a robot can perform real- world tasks such as mine searching and processing. This dissertation proposes a new motion planning algorithm for an autonomous robot, as well as the method and results of implementing this algorithm on a real vehicle. This dissertation addresses the problem of safely navigating an autonomous vehicle through free space of a two dimensional, world model with polygonal obstacles from a start configuration (position orientation) to a goal configuration using smooth motion under the structure of a layered motion planning approach. The approach proposes several new concepts, including v-edges and directed v-edges, and divides the motion planning problem of a rigid body vehicle into two subproblems: (1) finding a global path using Voronoi diagrams and for a given start and goal configurations planning an optimal global path; the planned path is a sequence of directed v-edges, (2) planning a local motion from the start configuration, using the aforementioned global path. The problem of how to design a safe and smooth path, is effectively solved by the steering function method and proximity. Another problem addressed here is how to make a smooth transition when the vehicle gets closer to an intersection of two distinct boundaries. This dissertation also presents a robust algorithm for the vehicle to continually eliminate its positional uncertainty while executing missions. This functionality is called self-localization which is an essential component of model-based navigation for indoor applications. This algorithm is based on the two-dimensional transformation group. Through this method, the robot can minimize its positional uncertainty, make safe and reliable motions, and perform useful tasks in a partially known world 2012-08-09T19:22:32Z 2012-08-09T19:22:32Z 1996-09 Thesis http://hdl.handle.net/10945/8737 en_US Monterey, California. Naval Postgraduate School
collection NDLTD
language en_US
sources NDLTD
description Approved for public release; distribution is unlimited === One of the most difficult theoretical problems in robotics--motion planning for rigid body robots-- must be solved before a robot can perform real- world tasks such as mine searching and processing. This dissertation proposes a new motion planning algorithm for an autonomous robot, as well as the method and results of implementing this algorithm on a real vehicle. This dissertation addresses the problem of safely navigating an autonomous vehicle through free space of a two dimensional, world model with polygonal obstacles from a start configuration (position orientation) to a goal configuration using smooth motion under the structure of a layered motion planning approach. The approach proposes several new concepts, including v-edges and directed v-edges, and divides the motion planning problem of a rigid body vehicle into two subproblems: (1) finding a global path using Voronoi diagrams and for a given start and goal configurations planning an optimal global path; the planned path is a sequence of directed v-edges, (2) planning a local motion from the start configuration, using the aforementioned global path. The problem of how to design a safe and smooth path, is effectively solved by the steering function method and proximity. Another problem addressed here is how to make a smooth transition when the vehicle gets closer to an intersection of two distinct boundaries. This dissertation also presents a robust algorithm for the vehicle to continually eliminate its positional uncertainty while executing missions. This functionality is called self-localization which is an essential component of model-based navigation for indoor applications. This algorithm is based on the two-dimensional transformation group. Through this method, the robot can minimize its positional uncertainty, make safe and reliable motions, and perform useful tasks in a partially known world
author2 Kanayama, Yutaka
author_facet Kanayama, Yutaka
Wahdan, Mahmoud A.
author Wahdan, Mahmoud A.
spellingShingle Wahdan, Mahmoud A.
New motion planning and real-time localization methods using proximity for autonomous mobile robots
author_sort Wahdan, Mahmoud A.
title New motion planning and real-time localization methods using proximity for autonomous mobile robots
title_short New motion planning and real-time localization methods using proximity for autonomous mobile robots
title_full New motion planning and real-time localization methods using proximity for autonomous mobile robots
title_fullStr New motion planning and real-time localization methods using proximity for autonomous mobile robots
title_full_unstemmed New motion planning and real-time localization methods using proximity for autonomous mobile robots
title_sort new motion planning and real-time localization methods using proximity for autonomous mobile robots
publisher Monterey, California. Naval Postgraduate School
publishDate 2012
url http://hdl.handle.net/10945/8737
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