2024-03-29T00:35:46Z
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oai:u-ryukyu.repo.nii.ac.jp:02000770
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非厳密評価規準GAを用いたニューロコントローラによるクレーンの振動抑制
Load Swing Suppression of Crane System by Neuro-Controller Utilizing GA with Rough Evaluation
中園, 邦彦
金城, 寛
顔, 玉玲
山本, 哲彦
Nakazono, Kunihiko
Kinjo, Hiroshi
Yan, Yuling
Yamamoto, Tetsuhiko
Neural
Network
Learning
Rough
Evaluation
Genetic
AIgorithm
Crane
System
The present paper proposes a new design method in which a controller acquires the required performance automatically. Two important tasks of the control designer are the creation of a simulator of the plant dynamics and the determination of the evaluation of the controller. A three layered neural network of 4-inputs and 1-output controls the plant. The proposed method requires little knowledge of difficult control theories. Genetic algorithm (GA) evolves the neural networks to enable the control of nonlinear systems. The evaluation method originally proposed in this paper is very simple and easy to understand, so that it can be used even by non professionals working in the field of control. In order to demonstrate how to apply the proposed method, the present paper analyzes the load swing suppression of a crane system on a cart. Simulations reveal that the neurocontroller has higher performance than the linear quadratic regulator (LQR) with respect t settling time and robustness. The neuro-controller is able to suppress load swing even in environments that exceed design specifications.
論文
http://purl.org/coar/resource_type/c_6501
日本機械学会
1999-07-25
VoR
http://hdl.handle.net/20.500.12000/63
03875024
AN00187463
日本機械学会論文集. C編
Transactions of the Japan Society of Mechanical Engineers. C
635
65
186
179
jpn
open access
Copyright (c) 1999 日本機械学会