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Online modeling and adaptive control of robotic manipulators using Gaussian radial basis function networks

机译:高斯径向基函数网络在线建模与机器人操纵器的自适应控制

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摘要

Radial basis function network (RBFN) is used in this paper for predefined trajectory control of both one-link and two-link robotic manipulators. The updating equations for the RBFN parameters were derived using the gradient descent principle. The other advantage of using this principle is that it shows the clustering effect in distributing the radial centres. To increase the complexity, the dynamics of robotic manipulator is assumed to be unknown, and hence, simultaneous control and identification steps were performed using the RBFNs. The performance of the RBFN is compared with the multilayer feed-forward neural network (MLFFNN) in terms of mean square error, tolerance to disturbance and parameter variations in the system. The efficacy of RBFN as a controller and identification tool is verified by performing the simulation study, and the results obtained reveal the superior performance of RBFN over MLFFNN in both identification and control aspects for one-link and two-link robotic manipulators.
机译:本文使用了径向基函数网络(RBFN),用于预定义的一个链路和双连杆机器人操纵器的预定轨迹控制。使用梯度下降原理导出RBFN参数的更新方程。使用该原则的另一个优点是它显示了分布径向中心的聚类效果。为了提高复杂性,假设机器人操纵器的动态是未知的,因此使用RBFN来执行同时控制和识别步骤。将RBFN的性能与多层前馈神经网络(MLFFNN)进行比较,以均方误差,对系统中的干扰和参数变化的耐受性。 RBFN作为控制器和识别工具的功效通过执行模拟研究来验证,并且获得的结果揭示了一个连杆和双连杆机器人操纵器识别和控制方面的RBFN在MLFFNN上的优异性能。

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