运动学
雅可比矩阵与行列式
控制理论(社会学)
控制工程
计算机科学
控制器(灌溉)
理论(学习稳定性)
机器人
人工神经网络
控制系统
鲁棒控制
机器人学
任务(项目管理)
人工智能
控制(管理)
工程类
机器学习
数学
经典力学
生物
电气工程
物理
应用数学
系统工程
农学
作者
Shangke Lyu,Chien Chern Cheah
出处
期刊:Automatica
[Elsevier BV]
日期:2020-07-08
卷期号:120: 109120-109120
被引量:43
标识
DOI:10.1016/j.automatica.2020.109120
摘要
Unlike most control systems, kinematic uncertainty is present in robot control systems in addition to dynamic uncertainty. The use of different types of external sensors in various configurations also results in different sensory transformation or Jacobian matrices and thus leads to different kinematic models. Currently, there is no systematic theoretical framework in developing data-driven neural network (NN) learning and control methods for task-space tracking control of robots with unknown kinematics and dynamics. The existing NN controllers are limited to either dynamic control or kinematic control without considering the interaction between the inner control loop and the outer control loop. In this paper, a NN based data driven offline learning algorithm and an online learning controller are proposed, which are combined in a complementary way. The proposed task-space control algorithms can be implemented on robotic systems with closed control architecture by considering the interaction with the inner control loop. Theoretical analyses are presented to show the stability of the systems and experimental results are presented to illustrate the performance of the proposed learning algorithms.
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