基于模型驱动神经网络的冗余机械臂抗噪声运动控制器

Xin Chen, Xin Su
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引用次数: 0

摘要

针对运动参数不确定的冗余机器人运动控制问题,提出了一种基于模型的抗噪声神经网络冗余机器人运动控制控制器。该问题的主要挑战是参数不确定性、冗余解析和系统物理约束的共存。为此,本文提出了一种新的模型驱动神经网络控制器。引入了一类节点来处理系统运动参数的不确定性。在此基础上,对神经网络超参数初值的选取进行了深入分析,该处理对加速跟踪误差的收敛具有积极作用。该控制器具有结构简单、计算量小、实现简单等优点。通过对Kinova Jaco2机械手的仿真,验证了所提算法的有效性。
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Anti-noise kinematic controller for redundant manipulators based on model driven neural network
In this paper, a model-based anti-noise neural network controller for redundant robot motion control is proposed for motion control of redundant robots with uncertain kinematic parameters. The main challenge of this problem is the coexistence of parameter uncertainty, redundancy resolution, and system physical constraints. Therefore, a new model - driven neural network controller is proposed in this paper. A class of nodes are introduced to deal with the kinematic parameter uncertainty of the system. On this basis, the selection of the initial value of the hyperparameter of the neural network is deeply analyzed, and this processing has a positive effect on accelerating the convergence of the tracking error. The proposed controller has the advantages of simple structure, small computation and simple implementation. The simulation of Kinova Jaco2 manipulator verifies the effectiveness of the proposed algorithm.
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