Deformation modeling of remote handling EAMA robot by recurrent neural networks
ISSN: 0143-991X
Article publication date: 7 May 2019
Issue publication date: 7 May 2019
Abstract
Purpose
Remote handling (RH) manipulators have been widely studied for maintenance tasks in fusion reactors. Those tasks always require heavy load, high accuracy and large work space for manipulators. Traditionally, the maintenance of fusion devices always depends on manual RH. With the development of calculating ability, the intelligent automatic maintenance makes it possible for a fusion device instead of the previous manual operation. As the flexibility of arm and the deformation of manipulator will cause problems, which are mainly inaccuracy and lower efficiency. This paper aims to study an effective way to promote the arm behavior to solve these problems.
Design/methodology/approach
By making use of the experimental advanced superconducting tokamak articulated maintenance arm as a platform, a series of experiments is designed to measure errors of kinematics and to collect the database of the flexible arm. Through studying the data and the arm structure, recurrent neural network (RNN) method was adopted to estimate the deformation of flexible arm and eventually compensate deformation in robot control to achieve higher accuracy.
Findings
By means of delicate RNN modeling, errors of kinematics have been reduced to a smaller order than the RH mode. This intelligent maintenance method will also reduce complexity of operations in maintenance.
Originality/value
This paper presents the use of an artificial intelligent algorithm to solve a nonlinear deformation problem of the flexible arm. The results demonstrate that it is efficient in dealing with this problem in fusion application. The RNN’s successful application has also shown that intelligent algorithms can be widely applied in fusion maintenance.
Keywords
Citation
Zhang, T., Song, Y., Wu, H., Handroos, H., Cheng, Y. and Zhang, X. (2019), "Deformation modeling of remote handling EAMA robot by recurrent neural networks", Industrial Robot, Vol. 46 No. 2, pp. 300-310. https://doi.org/10.1108/IR-08-2018-0171
Publisher
:Emerald Publishing Limited
Copyright © 2019, Emerald Publishing Limited