Parameter Estimation of Lorenz Attractor: A Combined Deep Neural Network and K-Means Clustering Approach

This research is mainly aimed at introducing a deep learning approach to solve chaotic system parameter estimates like the Lorenz system. The reason for the study is that because of its dynamic instability, the parameter of the chaotic system cannot be easily estimated. Moreover, due to the complexi...

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Main Authors: Nurnajmin Qasrina Ann, ., Pebrianti, Dwi, Mohamad Fadhil, Abas, Bayuaji, Luhur
Format: Conference or Workshop Item
Language:English
Published: Springer, Singapore 2022
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/36942/
http://umpir.ump.edu.my/id/eprint/36942/1/Parameter%20Estimation%20of%20Lorenz%20Attractor1.pdf
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author Nurnajmin Qasrina Ann, .
Pebrianti, Dwi
Mohamad Fadhil, Abas
Bayuaji, Luhur
author_facet Nurnajmin Qasrina Ann, .
Pebrianti, Dwi
Mohamad Fadhil, Abas
Bayuaji, Luhur
author_sort Nurnajmin Qasrina Ann, .
building UMP Institutional Repository
collection Online Access
description This research is mainly aimed at introducing a deep learning approach to solve chaotic system parameter estimates like the Lorenz system. The reason for the study is that because of its dynamic instability, the parameter of the chaotic system cannot be easily estimated. Moreover, due to the complexity of chaotic systems based on existing approaches, some parameters may be difficult to determine in advance. Therefore, it is crucial to assess the parameter of chaotic systems. To solve the issue of parameter estimation for a chaotic system, deep learning is utilized. After that, it has been suggested to improve the efficiencies in the Deep Neural Network (DNN) model by combining the DNN with an unsupervised machine learning algorithm, the K-Means clustering algorithm. This study constructs the flow of DNN based method with the K-Means algorithm. DNN techniques is suitable in solving nonlinear and complex problem. The most popular method to solve parameter estimation problem is using optimization algorithm that easily trap to local minima and poor in exploitation to find the good solutions. Due to the flow, 80% of training and 20% test sets for each class are divided between the Lorenz datasets. Accuracy by using 80:20 ratio of training and test data gives result 98% of accurate training data, and 73% of test data are predicted with the proposed algorithm while 91 and 40% of the DNN models are predicted in training and test data.
first_indexed 2025-11-15T03:23:57Z
format Conference or Workshop Item
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institution Universiti Malaysia Pahang
institution_category Local University
language English
last_indexed 2025-11-15T03:23:57Z
publishDate 2022
publisher Springer, Singapore
recordtype eprints
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spelling ump-369422023-02-07T01:01:46Z http://umpir.ump.edu.my/id/eprint/36942/ Parameter Estimation of Lorenz Attractor: A Combined Deep Neural Network and K-Means Clustering Approach Nurnajmin Qasrina Ann, . Pebrianti, Dwi Mohamad Fadhil, Abas Bayuaji, Luhur TK Electrical engineering. Electronics Nuclear engineering This research is mainly aimed at introducing a deep learning approach to solve chaotic system parameter estimates like the Lorenz system. The reason for the study is that because of its dynamic instability, the parameter of the chaotic system cannot be easily estimated. Moreover, due to the complexity of chaotic systems based on existing approaches, some parameters may be difficult to determine in advance. Therefore, it is crucial to assess the parameter of chaotic systems. To solve the issue of parameter estimation for a chaotic system, deep learning is utilized. After that, it has been suggested to improve the efficiencies in the Deep Neural Network (DNN) model by combining the DNN with an unsupervised machine learning algorithm, the K-Means clustering algorithm. This study constructs the flow of DNN based method with the K-Means algorithm. DNN techniques is suitable in solving nonlinear and complex problem. The most popular method to solve parameter estimation problem is using optimization algorithm that easily trap to local minima and poor in exploitation to find the good solutions. Due to the flow, 80% of training and 20% test sets for each class are divided between the Lorenz datasets. Accuracy by using 80:20 ratio of training and test data gives result 98% of accurate training data, and 73% of test data are predicted with the proposed algorithm while 91 and 40% of the DNN models are predicted in training and test data. Springer, Singapore 2022 Conference or Workshop Item PeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/36942/1/Parameter%20Estimation%20of%20Lorenz%20Attractor1.pdf Nurnajmin Qasrina Ann, . and Pebrianti, Dwi and Mohamad Fadhil, Abas and Bayuaji, Luhur (2022) Parameter Estimation of Lorenz Attractor: A Combined Deep Neural Network and K-Means Clustering Approach. In: Recent Trends in Mechatronics Towards Industry 4.0: Selected Articles from iM3F 2020, Malaysia , 6 August 2020 , Universiti Malaysia Pahang (Virtual). pp. 321-331., 730. ISBN 978-981-33-4597-3 (Published) https://doi.org/10.1007/978-981-33-4597-3_30
spellingShingle TK Electrical engineering. Electronics Nuclear engineering
Nurnajmin Qasrina Ann, .
Pebrianti, Dwi
Mohamad Fadhil, Abas
Bayuaji, Luhur
Parameter Estimation of Lorenz Attractor: A Combined Deep Neural Network and K-Means Clustering Approach
title Parameter Estimation of Lorenz Attractor: A Combined Deep Neural Network and K-Means Clustering Approach
title_full Parameter Estimation of Lorenz Attractor: A Combined Deep Neural Network and K-Means Clustering Approach
title_fullStr Parameter Estimation of Lorenz Attractor: A Combined Deep Neural Network and K-Means Clustering Approach
title_full_unstemmed Parameter Estimation of Lorenz Attractor: A Combined Deep Neural Network and K-Means Clustering Approach
title_short Parameter Estimation of Lorenz Attractor: A Combined Deep Neural Network and K-Means Clustering Approach
title_sort parameter estimation of lorenz attractor: a combined deep neural network and k-means clustering approach
topic TK Electrical engineering. Electronics Nuclear engineering
url http://umpir.ump.edu.my/id/eprint/36942/
http://umpir.ump.edu.my/id/eprint/36942/
http://umpir.ump.edu.my/id/eprint/36942/1/Parameter%20Estimation%20of%20Lorenz%20Attractor1.pdf