Research Article

TWO DOF ROBOT CONTROL WITH FUZZY BASED NEURAL NETWORKS

Volume: 18 Number: 4 October 31, 2017
Zafer Ortatepe , Osman Parlaktuna
EN

TWO DOF ROBOT CONTROL WITH FUZZY BASED NEURAL NETWORKS

Abstract

In this study, trajectory control of robotic arm which has two degrees of freedom (DOF) is conducted by using the control methods of Proportional-Derivative (PD), Adaptive Neuro Fuzzy System (Anfis), hybrid PD-Anfis and its performance analysis is carried out. In the design of the robot, forward kinematics, inverse kinematics and dynamic equations are used. Firstly, the PD controller is executed, and then the PD controller and Anfis controller are compared applying to a different controller approach with the Anfis of Matlab/Simulink software. The positive and negative sides of the Anfis controller are compared and hybrid PD-Anfis controller method is conducted as a different approach to eliminate the negative sides. While the system constants Kp and Kv are kept constant by the classical PD control method, the output of PD controller is trained with Anfis in the new method and the output value is adjusted according to the error and the change rate of the error. By this way, outputs which have less error rate and which are able to follow the reference better are obtained.

Keywords

Robot Dynamics,PD Control,Anfis,Neuro-Fuzzy Control

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APA
Ortatepe, Z., & Parlaktuna, O. (2017). TWO DOF ROBOT CONTROL WITH FUZZY BASED NEURAL NETWORKS. Anadolu University Journal of Science and Technology A - Applied Sciences and Engineering, 18(4), 819-830. https://doi.org/10.18038/aubtda.340002
AMA
1.Ortatepe Z, Parlaktuna O. TWO DOF ROBOT CONTROL WITH FUZZY BASED NEURAL NETWORKS. AUJST-A. 2017;18(4):819-830. doi:10.18038/aubtda.340002
Chicago
Ortatepe, Zafer, and Osman Parlaktuna. 2017. “TWO DOF ROBOT CONTROL WITH FUZZY BASED NEURAL NETWORKS”. Anadolu University Journal of Science and Technology A - Applied Sciences and Engineering 18 (4): 819-30. https://doi.org/10.18038/aubtda.340002.
EndNote
Ortatepe Z, Parlaktuna O (October 1, 2017) TWO DOF ROBOT CONTROL WITH FUZZY BASED NEURAL NETWORKS. Anadolu University Journal of Science and Technology A - Applied Sciences and Engineering 18 4 819–830.
IEEE
[1]Z. Ortatepe and O. Parlaktuna, “TWO DOF ROBOT CONTROL WITH FUZZY BASED NEURAL NETWORKS”, AUJST-A, vol. 18, no. 4, pp. 819–830, Oct. 2017, doi: 10.18038/aubtda.340002.
ISNAD
Ortatepe, Zafer - Parlaktuna, Osman. “TWO DOF ROBOT CONTROL WITH FUZZY BASED NEURAL NETWORKS”. Anadolu University Journal of Science and Technology A - Applied Sciences and Engineering 18/4 (October 1, 2017): 819-830. https://doi.org/10.18038/aubtda.340002.
JAMA
1.Ortatepe Z, Parlaktuna O. TWO DOF ROBOT CONTROL WITH FUZZY BASED NEURAL NETWORKS. AUJST-A. 2017;18:819–830.
MLA
Ortatepe, Zafer, and Osman Parlaktuna. “TWO DOF ROBOT CONTROL WITH FUZZY BASED NEURAL NETWORKS”. Anadolu University Journal of Science and Technology A - Applied Sciences and Engineering, vol. 18, no. 4, Oct. 2017, pp. 819-30, doi:10.18038/aubtda.340002.
Vancouver
1.Zafer Ortatepe, Osman Parlaktuna. TWO DOF ROBOT CONTROL WITH FUZZY BASED NEURAL NETWORKS. AUJST-A. 2017 Oct. 1;18(4):819-30. doi:10.18038/aubtda.340002