基于传感器的机械臂控制的通用学习算法

W. Miller
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引用次数: 334

摘要

描述了一种实用的学习控制系统,它适用于复杂机器人系统在重复和非重复操作过程中涉及多反馈传感器和多命令变量的控制。在控制器中,使用通用学习算法来学习在系统状态空间的特定区域上再现传感器输出与系统命令变量之间的关系。然后使用学习到的信息来预测所需的命令信号,以在传感器输出中产生所需的变化。学习控制器不需要先验地了解传感器输出和命令变量之间的关系,便于针对特定应用修改控制系统。介绍了用通用电气P-5机械手进行的两次学习实验的结果。第一个是学习使用视频图像反馈,在不知道机器人运动学或相机特性的情况下,相对于桌子上的固定物体准确地定位机器人的手。第二项涉及学习使用视频图像反馈来拦截和跟踪在传送带上移动的物体。在这两个实验中,发现控制系统的性能受到传感器反馈数据的分辨率的限制,而不是控制结构的限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensor-based control of robotic manipulators using a general learning algorithm
A practical learning control system is described which is applicable to the control of complex robotic systems involving multiple feedback sensors and multiple command variables during both repetitive and nonrepetitive operations. In the controller, a general learning algorithm is used to learn to reproduce the relationship between the sensor outputs and the system command variables over particular regions of the system state space. The learned information is then used to predict the command signals required to produce desired changes in the sensor outputs. The learning controller requires no a priori knowledge of the relationships between the sensor outputs and the command variables, facilitating control system modification for specific applications. The results of two learning experiments using a General Electric P-5 manipulator are presented. The first involved learning to use the video image feedback to position the robot hand accurately relative to stationary objects on a table, assuming no knowledge of the robot kinematics or camera characteristics. The second involved learning to use video image feedback to intercept and track objects moving on a conveyor. In both experiments, control system performance was found to be limited by the resolution of the sensor feedback data, rather than by control structure limitations.
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