Improved manipulator configurations for grasping and task completion based on manipulability

When a robotic system executes a task, there are a number of responsibilities that belong to either the operator and/or the robot. A more autonomous system has more responsibilities in the completion of a task and must possess the decision making skills necessary to adequately deal with these respo...

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Main Author: Williams, Joshua Murry
Format: Others
Language:English
Published: 2011
Subjects:
Online Access:http://hdl.handle.net/2152/ETD-UT-2010-12-2174
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spelling ndltd-UTEXAS-oai-repositories.lib.utexas.edu-2152-ETD-UT-2010-12-21742015-09-20T16:57:31ZImproved manipulator configurations for grasping and task completion based on manipulabilityWilliams, Joshua MurryRoboticsManipulator configurationsTask planeRobotic autonomyKinematic modelingMotion planningRobotic manipulationRobotic dexterityRobotic graspingWhen a robotic system executes a task, there are a number of responsibilities that belong to either the operator and/or the robot. A more autonomous system has more responsibilities in the completion of a task and must possess the decision making skills necessary to adequately deal with these responsibilities. The system must also handle environmental constraints that limit the region of operability and complicate the execution of tasks. There are decisions about the robot’s internal configuration and how the manipulator should move through space, avoid obstacles, and grasp objects. These motions usually have limits and performance requirements associated with them. Successful completion of tasks in a given environment is aided by knowledge of the robot’s capabilities in its workspace. This not only indicates if a task is possible but can suggest how a task should be completed. In this work, we develop a grasping strategy for selecting and attaining grasp configurations for flexible tasks in environments containing obstacles. This is done by sampling for valid grasping configurations at locations throughout the workspace to generate a task plane. Locations in the task plane that contain more valid configurations are stipulated to have higher dexterity and thus provide greater manipulability of targets. For valid configurations found in the plane, we develop a strategy for selecting which configurations to choose when grasping and/or placing an object at a given location in the workspace. These workspace task planes can also be utilized as a design tool to configure the system around the manipulator’s capabilities. We determine the quality of manipulator positioning in the workspace based on manipulability and locate the best location of targets for manipulation. The knowledge of valid manipulator configurations throughout the workspace can be used to extend the application of task planes to motion planning between grasping configurations. This guides the end-effector through more dexterous workspace regions and to configurations that move the arm away from obstacles. The task plane technique employed here accurately captures a manipulator’s capabilities. Initial tests for exploiting these capabilities for system design and operation were successful, thus demonstrating this method as a viable starting point for incrementally increasing system autonomy.text2011-02-16T17:17:12Z2011-02-16T17:17:29Z2011-02-16T17:17:12Z2011-02-16T17:17:29Z2010-122011-02-16December 20102011-02-16T17:17:29Zthesisapplication/pdfhttp://hdl.handle.net/2152/ETD-UT-2010-12-2174eng
collection NDLTD
language English
format Others
sources NDLTD
topic Robotics
Manipulator configurations
Task plane
Robotic autonomy
Kinematic modeling
Motion planning
Robotic manipulation
Robotic dexterity
Robotic grasping
spellingShingle Robotics
Manipulator configurations
Task plane
Robotic autonomy
Kinematic modeling
Motion planning
Robotic manipulation
Robotic dexterity
Robotic grasping
Williams, Joshua Murry
Improved manipulator configurations for grasping and task completion based on manipulability
description When a robotic system executes a task, there are a number of responsibilities that belong to either the operator and/or the robot. A more autonomous system has more responsibilities in the completion of a task and must possess the decision making skills necessary to adequately deal with these responsibilities. The system must also handle environmental constraints that limit the region of operability and complicate the execution of tasks. There are decisions about the robot’s internal configuration and how the manipulator should move through space, avoid obstacles, and grasp objects. These motions usually have limits and performance requirements associated with them. Successful completion of tasks in a given environment is aided by knowledge of the robot’s capabilities in its workspace. This not only indicates if a task is possible but can suggest how a task should be completed. In this work, we develop a grasping strategy for selecting and attaining grasp configurations for flexible tasks in environments containing obstacles. This is done by sampling for valid grasping configurations at locations throughout the workspace to generate a task plane. Locations in the task plane that contain more valid configurations are stipulated to have higher dexterity and thus provide greater manipulability of targets. For valid configurations found in the plane, we develop a strategy for selecting which configurations to choose when grasping and/or placing an object at a given location in the workspace. These workspace task planes can also be utilized as a design tool to configure the system around the manipulator’s capabilities. We determine the quality of manipulator positioning in the workspace based on manipulability and locate the best location of targets for manipulation. The knowledge of valid manipulator configurations throughout the workspace can be used to extend the application of task planes to motion planning between grasping configurations. This guides the end-effector through more dexterous workspace regions and to configurations that move the arm away from obstacles. The task plane technique employed here accurately captures a manipulator’s capabilities. Initial tests for exploiting these capabilities for system design and operation were successful, thus demonstrating this method as a viable starting point for incrementally increasing system autonomy. === text
author Williams, Joshua Murry
author_facet Williams, Joshua Murry
author_sort Williams, Joshua Murry
title Improved manipulator configurations for grasping and task completion based on manipulability
title_short Improved manipulator configurations for grasping and task completion based on manipulability
title_full Improved manipulator configurations for grasping and task completion based on manipulability
title_fullStr Improved manipulator configurations for grasping and task completion based on manipulability
title_full_unstemmed Improved manipulator configurations for grasping and task completion based on manipulability
title_sort improved manipulator configurations for grasping and task completion based on manipulability
publishDate 2011
url http://hdl.handle.net/2152/ETD-UT-2010-12-2174
work_keys_str_mv AT williamsjoshuamurry improvedmanipulatorconfigurationsforgraspingandtaskcompletionbasedonmanipulability
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