Please use this identifier to cite or link to this item: https://dspace.ncfu.ru/handle/20.500.12258/18116
Title: Machine learning algorithm for anthropomorphic manipulator control system
Authors: Petrenko, V. I.
Петренко, В. И.
Tebueva, F. B.
Тебуева, Ф. Б.
Pavlov, A. S.
Павлов, А. С.
Svistunov, N. Y.
Свистунов, Н. Ю.
Keywords: Machine learning;Deep reinforcement learning;Anthropomorphic manipulator;Forward kinematics;Artificial neural network
Issue Date: 2020
Publisher: ATLANTIS PRESS
Citation: Petrenko, V. I.; Tebueva, F. B.; Pavlov A. S.; Svistunov, N. Y. Machine learning algorithm for anthropomorphic manipulator control system // PROCEEDINGS OF THE 8TH SCIENTIFIC CONFERENCE ON INFORMATION TECHNOLOGIES FOR INTELLIGENT DECISION MAKING SUPPORT (ITIDS 2020). - 2020. - Book Series: Advances in Intelligent Systems Research. - 2020. - Volume 174. - Page 353-358
Series/Report no.: PROCEEDINGS OF THE 8TH SCIENTIFIC CONFERENCE ON INFORMATION TECHNOLOGIES FOR INTELLIGENT DECISION MAKING SUPPORT (ITIDS 2020)
Abstract: Service robots are one of the relevant areas of modern robotics. Many service robots are equipped with a pair of anthropomorphic manipulators, so that they are able to perform complex operations. However, this approach leads to new challenges in development of the robot control systems. In this paper we propose an algorithm for training the control system of two anthropomorphic manipulators with 7 degrees of mobility having intersecting work areas. The algorithm is based on deep reinforcement learning approach applied to the artificial neural network (ANN). The paper also describes the practical implementation of the ANN-based manipulator control system that avoids collisions and achieves an average accuracy of reproducing target positions of manipulator end effector of 98.3%. The ANN training was carried out using Keras framework. The obtained results indicate the promise of applying the proposed method for the development of control systems for anthropomorphic manipulators based on deep reinforcement learning
URI: http://hdl.handle.net/20.500.12258/18116
Appears in Collections:Статьи, проиндексированные в SCOPUS, WOS

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