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Adaptive critic neural network-based object grasping control using a three-finger gripper

机译:基于自适应评论的神经网络对象抓取控制使用三指夹具

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Robotic grippers that are capable of manipulating objects such as plant trays, fruits. vegetables and so on are required in MARS' greenhouse operation. Grasping and manipulation of objects have been a challenging task for robots. It is important that the manipulator performs these tasks accurately and faster without damaging the object. The complex grasping task can be defined as object contact control and manipulation subtasks. In this paper, object contact task is defined for the fingers in terms of following a trajectory accurately. On the other hand, the grasping task is defined in terms of maintaining a predefined applied force by the fingers so that the object is properly secured. A sophisticated controller is required for the grasping task since the process of grasping an object without apriori knowledge of the object's size, texture, and softness is rather difficult task. The proposed scheme consists of a feedforward action generating neural network (NN) that compensates for the nonlinear gripper and contact dynamics. The learning of this NN is performed on-line based on a critic signal so that a three-finger gripper track a predefined desired trajectory, which is specified in terms of a desired position and velocity for object contact control while it applies a desired force on the object for grasping. Novel NN weight tuning updates are derived for the action generating NN and a Lyapunov-based stability analysis is presented. Simulation results are shown for a three-finger gripper grasping an object.
机译:能够操纵植物托盘等物体的机器人夹具。火星温室运行需要蔬菜等。对物体的抓握和操纵对机器人来说是一个具有挑战性的任务。重要的是,操纵器准确地执行这些任务,而不会损坏对象。复杂的抓握任务可以定义为对象联系人控制和操作子任务。在本文中,对象联系人任务是准确地为轨迹的指示定义。另一方面,抓握任务是根据手指维持预定义的施加力而定义的,使得物体正确固定。抓握任务需要复杂的控制器,因为抓住物体的过程而没有对象尺寸,纹理和柔软度的Apriori知识是相当困难的任务。所提出的方案包括生成神经网络(NN)的前馈动作,该方法可以补偿非线性夹具和接触动态。基于批评信号在线执行该NN的学习,使得三指夹持器追踪预定义的期望轨迹,其在其施加所需力的同时以所需的位置和对象接触控制的速度来指定的抓住的对象。为产生NN的动作导出了新的NN权重调整更新,并提出了基于Lyapunov的稳定性分析。仿真结果显示为抓住物体的三指夹具。

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