Digital Learning Control of Servo Systems Using Neural Networks : Control System Design for Rapid Learning and Its Application
スポンサーリンク
概要
- 論文の詳細を見る
Exact inverse systems are not always obtained by using neural networks in many applications because of the output oscillation of the inverse systems. There are several sets of input signals to the neural networks, which give approximate inverse systems. In this paper, comparisons of the learning process are first made among them by a computer simulation with a parallelogram-type robot manipulator of two degrees of freedom. It is shown that the choice of the input signals has considerable influence on its learning speed. Secondly, two learning control algorithms are proposed for applying the results of a one-layer linear neural network to the control of a direct-drive (DD) robot. The algorithms are based on preliminary learning by a one-layer linear neural network, and can be used for shortening the time of on-line learning. The effectiveness of these algorithms is demonstrated by the experiment on the control of a DD robot.
- 一般社団法人日本機械学会の論文
- 1994-12-15
著者
-
Liu Ming-hui
Department Of Mechanical Engineering And Materials Science Yokohama National University
-
Todo Isao
Department of Mechanical Engineering and Materials Science, Yokohama National University
-
Todo Isao
Department Of Mechanical Engineering And Materials Science Yokohama National University
関連論文
- Digital Learning Control of Servo Systems Using Neural Networks : Control System Design for Rapid Learning and Its Application
- Neural Network-Based Learning Impedance Control for a Robot
- Stereo Vision-Based Robot Servoing Control for Object Grasping
- Movement of an 0bject by the Manipulating Force of a Jointed Elastic Robot Hand with Two Fingers and Four Degrees of Freedom
- Assembly Method of Blocks for Structures
- Cooperative Control of Two Direct-Drive Robots Using Neural Networks : Grasping and Movement of an Object