Optimal, Multi-Modal Control with Applications in Robotics

The objective of this dissertation is to incorporate the concept of optimality to multi-modal control and apply the theoretical results to obtain successful navigation strategies for autonomous mobile robots. The main idea in multi-modal control is to breakup a complex control task into simpler task...

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Main Author: Mehta, Tejas R.
Published: Georgia Institute of Technology 2007
Subjects:
Online Access:http://hdl.handle.net/1853/14628
id ndltd-GATECH-oai-smartech.gatech.edu-1853-14628
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spelling ndltd-GATECH-oai-smartech.gatech.edu-1853-146282013-01-07T20:16:51ZOptimal, Multi-Modal Control with Applications in RoboticsMehta, Tejas R.Variational methodsLinguistic control of mobile robotsOptimal controlMulti-modal controlHybrid systemsAutomatic controlMobile robotsAdaptive control systemsAutonomous robotsThe objective of this dissertation is to incorporate the concept of optimality to multi-modal control and apply the theoretical results to obtain successful navigation strategies for autonomous mobile robots. The main idea in multi-modal control is to breakup a complex control task into simpler tasks. In particular, number of control modes are constructed, each with respect to a particular task, and these modes are combined according to some supervisory control logic in order to complete the overall control task. This way of modularizing the control task lends itself particularly well to the control of autonomous mobile robot, as evidenced by the success of behavior-based robotics. Many challenging and interesting research issues arise when employing multi-modal control. This thesis aims to address these issues within an optimal control framework. In particular, the contributions of this dissertation are as follows: We first addressed the problem of inferring global behaviors from a collection of local rules (i.e., feedback control laws). Next, we addressed the issue of adaptively varying the multi-modal control system to further improve performance. Inspired by adaptive multi-modal control, we presented a constructivist framework for the learning from example problem. This framework was applied to the DARPA sponsored Learning Applied to Ground Robots (LAGR) project. Next, we addressed the optimal control of multi-modal systems with infinite dimensional constraints. These constraints are formulated as multi-modal, multi-dimensional (M3D) systems, where the dimensions of the state and control spaces change between modes to account for the constraints, to ease the computational burdens associated with traditional methods. Finally, we used multi-modal control strategies to develop effective navigation strategies for autonomous mobile robots. The theoretical results presented in this thesis are verified by conducting simulated experiments using Matlab and actual experiments using the Magellan Pro robot platform and the LAGR robot. In closing, the main strength of multi-modal control lies in breaking up complex control task into simpler tasks. This divide-and-conquer approach helps modularize the control system. This has the same effect on complex control systems that object-oriented programming has for large-scale computer programs, namely it allows greater simplicity, flexibility, and adaptability.Georgia Institute of Technology2007-05-25T17:43:17Z2007-05-25T17:43:17Z2007-04-04Dissertationhttp://hdl.handle.net/1853/14628
collection NDLTD
sources NDLTD
topic Variational methods
Linguistic control of mobile robots
Optimal control
Multi-modal control
Hybrid systems
Automatic control
Mobile robots
Adaptive control systems
Autonomous robots
spellingShingle Variational methods
Linguistic control of mobile robots
Optimal control
Multi-modal control
Hybrid systems
Automatic control
Mobile robots
Adaptive control systems
Autonomous robots
Mehta, Tejas R.
Optimal, Multi-Modal Control with Applications in Robotics
description The objective of this dissertation is to incorporate the concept of optimality to multi-modal control and apply the theoretical results to obtain successful navigation strategies for autonomous mobile robots. The main idea in multi-modal control is to breakup a complex control task into simpler tasks. In particular, number of control modes are constructed, each with respect to a particular task, and these modes are combined according to some supervisory control logic in order to complete the overall control task. This way of modularizing the control task lends itself particularly well to the control of autonomous mobile robot, as evidenced by the success of behavior-based robotics. Many challenging and interesting research issues arise when employing multi-modal control. This thesis aims to address these issues within an optimal control framework. In particular, the contributions of this dissertation are as follows: We first addressed the problem of inferring global behaviors from a collection of local rules (i.e., feedback control laws). Next, we addressed the issue of adaptively varying the multi-modal control system to further improve performance. Inspired by adaptive multi-modal control, we presented a constructivist framework for the learning from example problem. This framework was applied to the DARPA sponsored Learning Applied to Ground Robots (LAGR) project. Next, we addressed the optimal control of multi-modal systems with infinite dimensional constraints. These constraints are formulated as multi-modal, multi-dimensional (M3D) systems, where the dimensions of the state and control spaces change between modes to account for the constraints, to ease the computational burdens associated with traditional methods. Finally, we used multi-modal control strategies to develop effective navigation strategies for autonomous mobile robots. The theoretical results presented in this thesis are verified by conducting simulated experiments using Matlab and actual experiments using the Magellan Pro robot platform and the LAGR robot. In closing, the main strength of multi-modal control lies in breaking up complex control task into simpler tasks. This divide-and-conquer approach helps modularize the control system. This has the same effect on complex control systems that object-oriented programming has for large-scale computer programs, namely it allows greater simplicity, flexibility, and adaptability.
author Mehta, Tejas R.
author_facet Mehta, Tejas R.
author_sort Mehta, Tejas R.
title Optimal, Multi-Modal Control with Applications in Robotics
title_short Optimal, Multi-Modal Control with Applications in Robotics
title_full Optimal, Multi-Modal Control with Applications in Robotics
title_fullStr Optimal, Multi-Modal Control with Applications in Robotics
title_full_unstemmed Optimal, Multi-Modal Control with Applications in Robotics
title_sort optimal, multi-modal control with applications in robotics
publisher Georgia Institute of Technology
publishDate 2007
url http://hdl.handle.net/1853/14628
work_keys_str_mv AT mehtatejasr optimalmultimodalcontrolwithapplicationsinrobotics
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