A fuzzy logic based neural network controller for the flexible pole-cart balancing problem

This paper investigates the feasibility of developing a controller based on a fuzzy reasoning that is implemented by an artificial neural network (NN) to control complex and highly nonlinear systems. The flexible pole-cart balancing problem (FPCBP) is used as a test bed for this application as it wa...

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Main Author: Gunay, Noel S.
Format: text
Language:English
Published: Animo Repository 1998
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Online Access:https://animorepository.dlsu.edu.ph/etd_masteral/1983
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Institution: De La Salle University
Language: English
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spelling oai:animorepository.dlsu.edu.ph:etd_masteral-88212021-01-26T03:15:37Z A fuzzy logic based neural network controller for the flexible pole-cart balancing problem Gunay, Noel S. This paper investigates the feasibility of developing a controller based on a fuzzy reasoning that is implemented by an artificial neural network (NN) to control complex and highly nonlinear systems. The flexible pole-cart balancing problem (FPCBP) is used as a test bed for this application as it was shown by a study to exhibit more nonlinearity as compared to the conventional inverted pendulum problem. The neural networks are used as a tool in determining the appropriate number of rules, in determining the fuzzy inference rules, i.e., learning and generating the membership functions (antecedents) and the functions that represent the consequents, and finally, in implementing the fuzzy logic based controller. The use of this method in building the controller eliminates extensive knowledge from the human expert. An off-line fuzzy logic based NN software controller for the flexible pole-cart balancing system (FPCBS) is developed using a set of training data taken from the results of a real time computer simulation of the FPCBS derived dynamics. Results show that the controller developed is able to predict the desired control outputs with high accuracy. 1998-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_masteral/1983 Master's Theses English Animo Repository Logic machines Fuzzy systems Neural networks (Computer science) Computer network Electric controllers Sequence controllers Programmable Computer and Systems Architecture Controls and Control Theory Digital Communications and Networking Hardware Systems Systems and Communications
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 Logic machines
Fuzzy systems
Neural networks (Computer science)
Computer network
Electric controllers
Sequence controllers
Programmable
Computer and Systems Architecture
Controls and Control Theory
Digital Communications and Networking
Hardware Systems
Systems and Communications
spellingShingle Logic machines
Fuzzy systems
Neural networks (Computer science)
Computer network
Electric controllers
Sequence controllers
Programmable
Computer and Systems Architecture
Controls and Control Theory
Digital Communications and Networking
Hardware Systems
Systems and Communications
Gunay, Noel S.
A fuzzy logic based neural network controller for the flexible pole-cart balancing problem
description This paper investigates the feasibility of developing a controller based on a fuzzy reasoning that is implemented by an artificial neural network (NN) to control complex and highly nonlinear systems. The flexible pole-cart balancing problem (FPCBP) is used as a test bed for this application as it was shown by a study to exhibit more nonlinearity as compared to the conventional inverted pendulum problem. The neural networks are used as a tool in determining the appropriate number of rules, in determining the fuzzy inference rules, i.e., learning and generating the membership functions (antecedents) and the functions that represent the consequents, and finally, in implementing the fuzzy logic based controller. The use of this method in building the controller eliminates extensive knowledge from the human expert. An off-line fuzzy logic based NN software controller for the flexible pole-cart balancing system (FPCBS) is developed using a set of training data taken from the results of a real time computer simulation of the FPCBS derived dynamics. Results show that the controller developed is able to predict the desired control outputs with high accuracy.
format text
author Gunay, Noel S.
author_facet Gunay, Noel S.
author_sort Gunay, Noel S.
title A fuzzy logic based neural network controller for the flexible pole-cart balancing problem
title_short A fuzzy logic based neural network controller for the flexible pole-cart balancing problem
title_full A fuzzy logic based neural network controller for the flexible pole-cart balancing problem
title_fullStr A fuzzy logic based neural network controller for the flexible pole-cart balancing problem
title_full_unstemmed A fuzzy logic based neural network controller for the flexible pole-cart balancing problem
title_sort fuzzy logic based neural network controller for the flexible pole-cart balancing problem
publisher Animo Repository
publishDate 1998
url https://animorepository.dlsu.edu.ph/etd_masteral/1983
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