ARTIFICIAL INTELLIGENCE APPLICATION IN STUDYING CHAOTIC BEHAVIOR ON DUFFING OSCILLATOR

In this thesis the chaotic behavior in a system that is modelled by Duffing equation is examined. Duffing equation can be used to illustrate a chaotic behavior in a real-world problems such as a weather prediction and economic problems. In an economic system, the Duffing equation can model a movemen...

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Main Author: Andhita Scantya, Miranti
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/46444
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:46444
spelling id-itb.:464442020-03-05T11:19:22ZARTIFICIAL INTELLIGENCE APPLICATION IN STUDYING CHAOTIC BEHAVIOR ON DUFFING OSCILLATOR Andhita Scantya, Miranti Indonesia Theses Chaotic, Pattern Recognition, Duffing Equation, ANN, stopping criteria INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/46444 In this thesis the chaotic behavior in a system that is modelled by Duffing equation is examined. Duffing equation can be used to illustrate a chaotic behavior in a real-world problems such as a weather prediction and economic problems. In an economic system, the Duffing equation can model a movement of stock price. A method is needed to recognize chaotic patterns using non-chaotic data. The study on Duffing equation started by finding numerical solution using Euler, 2nd order Runge-kutta (RK2), 4th order (RK4), and 6th order Runge Kutta method. The purpose of these methods is to determine the comparison of more accurate result. The data that is generated by these methods used to determine the data’s amount for simulating the chaotic condition in the system. In this research the artificial intelligence method that is implemented is Artificial Neural Network (ANN) with backpropagation method. The ability test of ANN in recognizing the chaotic pattern in Duffing equation is done by recognizing the data’s pattern that is never included in ANN training process. The result of this thesis shows the performance of the optimal ANN structure to recognize chaotic behavior of Duffing equation. The correlation of learning parameter and the ANN training duration is obtained, furthermore the correlation between the optimal amount of nodes in hidden layer and the expected MSE value of ANN training. The most optimal amount of nodes in hidden layer shown by the ability of the ANN to reach the stopping criteria and ability to reach minimum error. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description In this thesis the chaotic behavior in a system that is modelled by Duffing equation is examined. Duffing equation can be used to illustrate a chaotic behavior in a real-world problems such as a weather prediction and economic problems. In an economic system, the Duffing equation can model a movement of stock price. A method is needed to recognize chaotic patterns using non-chaotic data. The study on Duffing equation started by finding numerical solution using Euler, 2nd order Runge-kutta (RK2), 4th order (RK4), and 6th order Runge Kutta method. The purpose of these methods is to determine the comparison of more accurate result. The data that is generated by these methods used to determine the data’s amount for simulating the chaotic condition in the system. In this research the artificial intelligence method that is implemented is Artificial Neural Network (ANN) with backpropagation method. The ability test of ANN in recognizing the chaotic pattern in Duffing equation is done by recognizing the data’s pattern that is never included in ANN training process. The result of this thesis shows the performance of the optimal ANN structure to recognize chaotic behavior of Duffing equation. The correlation of learning parameter and the ANN training duration is obtained, furthermore the correlation between the optimal amount of nodes in hidden layer and the expected MSE value of ANN training. The most optimal amount of nodes in hidden layer shown by the ability of the ANN to reach the stopping criteria and ability to reach minimum error.
format Theses
author Andhita Scantya, Miranti
spellingShingle Andhita Scantya, Miranti
ARTIFICIAL INTELLIGENCE APPLICATION IN STUDYING CHAOTIC BEHAVIOR ON DUFFING OSCILLATOR
author_facet Andhita Scantya, Miranti
author_sort Andhita Scantya, Miranti
title ARTIFICIAL INTELLIGENCE APPLICATION IN STUDYING CHAOTIC BEHAVIOR ON DUFFING OSCILLATOR
title_short ARTIFICIAL INTELLIGENCE APPLICATION IN STUDYING CHAOTIC BEHAVIOR ON DUFFING OSCILLATOR
title_full ARTIFICIAL INTELLIGENCE APPLICATION IN STUDYING CHAOTIC BEHAVIOR ON DUFFING OSCILLATOR
title_fullStr ARTIFICIAL INTELLIGENCE APPLICATION IN STUDYING CHAOTIC BEHAVIOR ON DUFFING OSCILLATOR
title_full_unstemmed ARTIFICIAL INTELLIGENCE APPLICATION IN STUDYING CHAOTIC BEHAVIOR ON DUFFING OSCILLATOR
title_sort artificial intelligence application in studying chaotic behavior on duffing oscillator
url https://digilib.itb.ac.id/gdl/view/46444
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