Development of an intelligent (neural network) navigation system for an automated guided vehicle

With automation now spreading throughout factories automated guided vehicles have found their way into the shop floor and have become important ingredients in modern manufacturing systems. They are essentially mobile carriers which can automatically route or position itself. The navigation system de...

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Main Author: Ong, Edward T.
Format: text
Language:English
Published: Animo Repository 1993
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Online Access:https://animorepository.dlsu.edu.ph/etd_masteral/1695
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Institution: De La Salle University
Language: English
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spelling oai:animorepository.dlsu.edu.ph:etd_masteral-85332021-03-18T15:18:39Z Development of an intelligent (neural network) navigation system for an automated guided vehicle Ong, Edward T. With automation now spreading throughout factories automated guided vehicles have found their way into the shop floor and have become important ingredients in modern manufacturing systems. They are essentially mobile carriers which can automatically route or position itself. The navigation system developed can maneuver a mobile vehicle intelligently (based upon previous training) towards the final destination. This system will not depend upon external cables, rails or painted lines as was used by the existing automated-guided vehicles. The navigation system will have machine intelligence as implemented by the two Neural Networks. The first Neural Network is implemented in hardware (analog blocks) to provide the basic instinct behavior of the system. A set of work sheets are developed to provide off-circuit training through the use of PC. After the training sessions, the proper weights can be placed in the hardware implementation of the Neural Network. The hardware implemented Neural Network effects a form of charge particle method of navigation. The system is repelled by obstacles and attracted to the destination. Obstacle sensing is effected through ultrasonic circuits. The advantage of the hardware implementation is fast response, and this is appropriate for the basic instinct of the system. The basic instinct always has the highest priority. This implements the safety considerations of the vehicle. The first part of the thesis document discusses how the hardware can control the vehicle alone. As can be seen this provides the navigation system a limited capability. Due to the disadvantages of using the hardware neural network alone, a better approach was considered. The behavior of the first Neural Network has undergone some minor changes, and another Neural Network was developed. Eventually there are two Neural Networks taking their corresponding turn in navigating the vehicle. The second Neural Network is implemented as a computer program to provide flexibility. The control priority for the second network is lower than the first. This second network is trained to model learned behavior. This learned behavior can come from two sources. One source can come from an initial training on the environment path condition, another can come from feedback provided by the first network. Eventually there is a sort f hierarchical control. The highest level models learned behavior (Neural Network 2) which has the lowest priority. The lowest level models instinct behavior (Neural Network 1 H.ware) which has the highest priority. The development of such a system requires research on two major fields, Neural Network Technology and Robotics engineering. The research targets to integrate the two technology forming the foundation technology. 1993-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_masteral/1695 Master's Theses English Animo Repository Neural network Automated guided vehicle systems Robots Industrial Electronics in navigation Engineering
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
topic Neural network
Automated guided vehicle systems
Robots
Industrial
Electronics in navigation
Engineering
spellingShingle Neural network
Automated guided vehicle systems
Robots
Industrial
Electronics in navigation
Engineering
Ong, Edward T.
Development of an intelligent (neural network) navigation system for an automated guided vehicle
description With automation now spreading throughout factories automated guided vehicles have found their way into the shop floor and have become important ingredients in modern manufacturing systems. They are essentially mobile carriers which can automatically route or position itself. The navigation system developed can maneuver a mobile vehicle intelligently (based upon previous training) towards the final destination. This system will not depend upon external cables, rails or painted lines as was used by the existing automated-guided vehicles. The navigation system will have machine intelligence as implemented by the two Neural Networks. The first Neural Network is implemented in hardware (analog blocks) to provide the basic instinct behavior of the system. A set of work sheets are developed to provide off-circuit training through the use of PC. After the training sessions, the proper weights can be placed in the hardware implementation of the Neural Network. The hardware implemented Neural Network effects a form of charge particle method of navigation. The system is repelled by obstacles and attracted to the destination. Obstacle sensing is effected through ultrasonic circuits. The advantage of the hardware implementation is fast response, and this is appropriate for the basic instinct of the system. The basic instinct always has the highest priority. This implements the safety considerations of the vehicle. The first part of the thesis document discusses how the hardware can control the vehicle alone. As can be seen this provides the navigation system a limited capability. Due to the disadvantages of using the hardware neural network alone, a better approach was considered. The behavior of the first Neural Network has undergone some minor changes, and another Neural Network was developed. Eventually there are two Neural Networks taking their corresponding turn in navigating the vehicle. The second Neural Network is implemented as a computer program to provide flexibility. The control priority for the second network is lower than the first. This second network is trained to model learned behavior. This learned behavior can come from two sources. One source can come from an initial training on the environment path condition, another can come from feedback provided by the first network. Eventually there is a sort f hierarchical control. The highest level models learned behavior (Neural Network 2) which has the lowest priority. The lowest level models instinct behavior (Neural Network 1 H.ware) which has the highest priority. The development of such a system requires research on two major fields, Neural Network Technology and Robotics engineering. The research targets to integrate the two technology forming the foundation technology.
format text
author Ong, Edward T.
author_facet Ong, Edward T.
author_sort Ong, Edward T.
title Development of an intelligent (neural network) navigation system for an automated guided vehicle
title_short Development of an intelligent (neural network) navigation system for an automated guided vehicle
title_full Development of an intelligent (neural network) navigation system for an automated guided vehicle
title_fullStr Development of an intelligent (neural network) navigation system for an automated guided vehicle
title_full_unstemmed Development of an intelligent (neural network) navigation system for an automated guided vehicle
title_sort development of an intelligent (neural network) navigation system for an automated guided vehicle
publisher Animo Repository
publishDate 1993
url https://animorepository.dlsu.edu.ph/etd_masteral/1695
_version_ 1772835459397844992