Adaptive Mode Transition Control Architecture with an Application to Unmanned Aerial Vehicles

In this thesis, an architecture for the adaptive mode transition control of unmanned aerial vehicles (UAV) is presented. The proposed architecture consists of three levels: the highest level is occupied by mission planning routines where information about way points the vehicle must follow is proces...

Full description

Bibliographic Details
Main Author: Gutierrez Zea, Luis Benigno
Format: Others
Language:en_US
Published: Georgia Institute of Technology 2005
Subjects:
Online Access:http://hdl.handle.net/1853/4995
id ndltd-GATECH-oai-smartech.gatech.edu-1853-4995
record_format oai_dc
spelling ndltd-GATECH-oai-smartech.gatech.edu-1853-49952013-01-07T20:11:02ZAdaptive Mode Transition Control Architecture with an Application to Unmanned Aerial VehiclesGutierrez Zea, Luis BenignoMode transition controlMulti model adaptive controlUnmanned aerial vehiclesFuzzy neural networksIn this thesis, an architecture for the adaptive mode transition control of unmanned aerial vehicles (UAV) is presented. The proposed architecture consists of three levels: the highest level is occupied by mission planning routines where information about way points the vehicle must follow is processed. The middle level uses a trajectory generation component to coordinate the task execution and provides set points for low-level stabilizing controllers. The adaptive mode transitioning control algorithm resides at the lowest level of the hierarchy consisting of a mode transitioning controller and the accompanying adaptation mechanism. The mode transition controller is composed of a mode transition manager, a set of local controllers, a set of active control models, a set point filter, a state filter, an automatic trimming mechanism and a dynamic compensation filter. Local controllers operate in local modes and active control models operate in transitions between two local modes. The mode transition manager determines the actual mode of operation of the vehicle based on a set of mode membership functions and activates a local controller or an active control model accordingly. The adaptation mechanism uses an indirect adaptive control methodology to adapt the active control models. For this purpose, a set of plant models based on fuzzy neural networks is trained based on input/output information from the vehicle and used to compute sensitivity matrices providing the linearized models required by the adaptation algorithms. The effectiveness of the approach is verified through software-in-the-loop simulations, hardware-in-the-loop simulations and flight testing.Georgia Institute of Technology2005-03-02T22:14:24Z2005-03-02T22:14:24Z2004-05-21Dissertation12119635 bytesapplication/pdfhttp://hdl.handle.net/1853/4995en_US
collection NDLTD
language en_US
format Others
sources NDLTD
topic Mode transition control
Multi model adaptive control
Unmanned aerial vehicles
Fuzzy neural networks
spellingShingle Mode transition control
Multi model adaptive control
Unmanned aerial vehicles
Fuzzy neural networks
Gutierrez Zea, Luis Benigno
Adaptive Mode Transition Control Architecture with an Application to Unmanned Aerial Vehicles
description In this thesis, an architecture for the adaptive mode transition control of unmanned aerial vehicles (UAV) is presented. The proposed architecture consists of three levels: the highest level is occupied by mission planning routines where information about way points the vehicle must follow is processed. The middle level uses a trajectory generation component to coordinate the task execution and provides set points for low-level stabilizing controllers. The adaptive mode transitioning control algorithm resides at the lowest level of the hierarchy consisting of a mode transitioning controller and the accompanying adaptation mechanism. The mode transition controller is composed of a mode transition manager, a set of local controllers, a set of active control models, a set point filter, a state filter, an automatic trimming mechanism and a dynamic compensation filter. Local controllers operate in local modes and active control models operate in transitions between two local modes. The mode transition manager determines the actual mode of operation of the vehicle based on a set of mode membership functions and activates a local controller or an active control model accordingly. The adaptation mechanism uses an indirect adaptive control methodology to adapt the active control models. For this purpose, a set of plant models based on fuzzy neural networks is trained based on input/output information from the vehicle and used to compute sensitivity matrices providing the linearized models required by the adaptation algorithms. The effectiveness of the approach is verified through software-in-the-loop simulations, hardware-in-the-loop simulations and flight testing.
author Gutierrez Zea, Luis Benigno
author_facet Gutierrez Zea, Luis Benigno
author_sort Gutierrez Zea, Luis Benigno
title Adaptive Mode Transition Control Architecture with an Application to Unmanned Aerial Vehicles
title_short Adaptive Mode Transition Control Architecture with an Application to Unmanned Aerial Vehicles
title_full Adaptive Mode Transition Control Architecture with an Application to Unmanned Aerial Vehicles
title_fullStr Adaptive Mode Transition Control Architecture with an Application to Unmanned Aerial Vehicles
title_full_unstemmed Adaptive Mode Transition Control Architecture with an Application to Unmanned Aerial Vehicles
title_sort adaptive mode transition control architecture with an application to unmanned aerial vehicles
publisher Georgia Institute of Technology
publishDate 2005
url http://hdl.handle.net/1853/4995
work_keys_str_mv AT gutierrezzealuisbenigno adaptivemodetransitioncontrolarchitecturewithanapplicationtounmannedaerialvehicles
_version_ 1716473896979398656