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Different-Level Simultaneous Minimization Scheme for Fault Tolerance of Redundant Manipulator Aided with Discrete-Time Recurrent Neural Network

机译:离散递归神经网络辅助冗余度机械臂的不同水平同时最小化方案

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By incorporating the physical constraints in joint space, a different-level simultaneous minimization scheme, which takes both the robot kinematics and robot dynamics into account, is presented and investigated for fault-tolerant motion planning of redundant manipulator in this paper. The scheme is reformulated as a quadratic program (QP) with equality and bound constraints, which is then solved by a discrete-time recurrent neural network. Simulative verifications based on a six-link planar redundant robot manipulator substantiate the efficacy and accuracy of the presented acceleration fault-tolerant scheme, the resultant QP and the corresponding discrete-time recurrent neural network.
机译:通过结合关节空间中的物理约束,提出了一种同时考虑机器人运动学和机器人动力学的不同水平同时最小化方案,并研究了冗余度机械手的容错运动规划。该方案被重新构造为具有相等性和约束约束的二次程序(QP),然后通过离散时间递归神经网络对其进行求解。基于六连杆平面冗余机器人操纵器的仿真验证,证实了所提出的加速度容错方案,所得的QP和相应的离散时间递归神经网络的有效性和准确性。

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