МОДЕЛИРОВАНИЕ ДИНАМИКИ МАНИПУЛЯТОРА С ИСПОЛЬЗОВАНИЕМ АДАПТИВНОЙ НЕЙРО-НЕЧЕТКОЙ СИСТЕМЫ ВЫВОДА
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Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

DYNAMIC MODELLING OF MANIPULATOR USING ADAPTIVE NEURO FUZZY INFERENCE SYSTEM

idThu R. idYan N.

UDC 004.896, 004.942
DOI: 10.26102/2310-6018/2019.27.4

  • Abstract
  • List of references
  • About authors

The dynamic modelling of manipulator is essential for the design, simulation and control system of manipulator. Researchers have proposed different techniques for dynamic modelling of manipulators. The commonly used methods to formulate the dynamic equations of motion for manipulators are Newton-Euler and Lagrange-Euler methods. Because of these methods are numerical recursive methods, they are computationally expensive and not suitable to use directly in real time applications. In this paper, we proposed the adaptive neuro fuzzy inference system-based method to construct the input-output mapping for the dynamic equations of motion of a 5 degree-of-freedom manipulator. The dynamic model of the manipulator is computed using Newton-Euler dynamic formulation to create the training data sets for the adaptive neuro fuzzy inference system. The proposed method is tested in generating the required torques for a point-to point trajectory. Results show that the proposed method can perform within shorter operational time and its performance is comparable to Newton-Euler method. The proposed method can be used for the rigid-body manipulators whose dynamical characteristics are known

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Thu Rain

Email: thurein.48@gmail.com

ORCID |

Kursk State University

Kursk, Russian Federation

Yan Naing soe

Email: boyan.243@gmail.com

ORCID |

South-West State University

Kursk, Russian Federation

Keywords: dynamic modelling, newton-euler method, adaptive neuro fuzzy inference system, manipulator dynamics

For citation: Thu R. Yan N. DYNAMIC MODELLING OF MANIPULATOR USING ADAPTIVE NEURO FUZZY INFERENCE SYSTEM. Modeling, Optimization and Information Technology. 2019;7(4). Available from: https://moit.vivt.ru/wp-content/uploads/2019/11/ThuRainSoavtors_4_19_1.pdf DOI: 10.26102/2310-6018/2019.27.4 (In Russ).

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