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http://dx.doi.org/10.7236/IJIBC.2019.11.2.11

Control of Seesaw balancing using decision boundary based on classification method  

Uurtsaikh, Luvsansambuu (Dept. of Electronics, Mongolian University of Science and Technology)
Tengis, Tserendondog (Dept. of Electronics, Mongolian University of Science and Technology)
Batmunkh, Amar (Dept. of Electronics, Mongolian University of Science and Technology)
Publication Information
International Journal of Internet, Broadcasting and Communication / v.11, no.2, 2019 , pp. 11-18 More about this Journal
Abstract
One of the key objectives of control systems is to maintain a system in a specific stable state. To achieve this goal, a variety of control techniques can be used and it is often uses a feedback control method. As known this kind of control methods requires mathematical model of the system. This article presents seesaw unstable system with two propellers which are controlled without use of a mathematical model instead. The goal was to control it using training data. For system control we use a logistic regression technique which is one of machine learning method. We tested our controller on the real model created in our laboratory and the experimental results show that instability of the seesaw system can be fixed at a given angle using the decision boundary estimated from the classification method. The results show that this control method for structural equilibrium can be used with relatively more accuracy of the decision boundary.
Keywords
logistic regression; brushless motor; gradient; cost function; machine learning;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
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1 https://en.wikipedia.org/wiki/Machine_learning
2 Andrew Ng. CS229: Machine Learning course. Computer Science Department, Stanford University. https://www.coursera.org/learn/machine-learning
3 R.S. Michalski, J.G. Carbonell, T.M. Mitchell. "Machine Learning: An Artificial Intelligence Approach". 1983
4 S. B. Kotsiantis. Supervised Machine Learning: A Review of Classification Techniques. Informatica 31. 249-268, 2007
5 Ayon Dey. Machine Learning Algorithms: A Review. International Journal of Computer Science and Information Technologies. Vol. 7(3), 2016, 1174-1179
6 Tengis Tserendondog, Batmunkh Amar. "Study of a balancing system based on stereo image processing", MUST, The compilation of science works of professors and teachers. 2015, No19/183, pages 268-274
7 Tengis Tserendondog, Batmunkh Amar. "PID and State Space Control of Unbalanced Swing ". Mongolian Information Technology-2016. The compilation of Science Conference. Page 125.
8 Tengis Tserendondog, Batmunkh Amar, Byambajav Ragchaa. "Stereo Vision Based Balancing System Results". International Journal of Internet, Broadcasting and Communication. Vol.8 No.1, 1-6. E-ISSN number, 2288-4939.   DOI
9 Amar Batmunkh, Tserendondog Tengis. "State feedback control of unbalanced seesaw". 11th International Forum on Strategic Technology (IFOST), 2016. DOI: https://ieeexplore.ieee.org/document/7884181/
10 Tengis Tserendondog, Batmunkh Amar. "Quadcopter stabilization using state feedback controller by pole placement method". International Journal of Internet, Broadcasting and Communication Vol.9 No.1, 1-6, E-ISSN number, 2288-4939, DOI: https://www.earticle.net/Article/A297898   DOI
11 Tengis Tserendondog, Batmunkh Amar. "Disturbance Rejection Control for Unbalanced Double-Propeller System on Single Axis". Khureltogoot-2017, Proceeding of International Conference of Technology and Innovation, pages 20-23. Ulaanbaatar.
12 Jannick Verlie. Control of an inverted pendulum with deep reinforcement learning. Master's dissertation. Department of Electronics and Information Systems. Ghent University.
13 Ciro Donalek. Supervised and Unsupervised Learning. Lecture Note. 2012.
14 Kangbeom Cheon, Jaehoon Kim, Moussa Hamadache, Dongik Lee. "On Replacing PID Controller with Deep Learning Controller for DC Motor System". Journal of Automation and Control Engineering Vol. 3, No. 6, December 2015 DOI: 10.12720/joace.3.6.452-456   DOI
15 C. W. Anderson. Learning to control an inverted pendulum using neural networks. IEEE Control System Magazine, 9(3): 31-37, 1989. DOI: 10.1109/37.24809   DOI
16 Martin Riedmiller. Neural Reinforcement Learning to Swing-up and Balance a Real Pole. Neuroinformatics Group University of Osnabrueck. 2000. DOI: 10.1109/ICSMC.2005.1571637
17 Tengis Tserendondog, Batmunkh Amar. "Control of Single Propeller Pendulum with Supervised Machine Learning Algorithm". International Journal of Advanced Smart Convergence Vol.7 No.3 15-22 (2018), pages 15-22. DOI : http://dx.doi.org/10.7236/IJASC.2018.7.3.15   DOI