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A robust position/force learning controller of manipulators via nonlinear H/spl infin/ control and neural networks

机译:通过非线性H / spl infin /控制和神经网络的鲁棒的位置/力学习器控制器

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摘要

A new robust learning controller for simultaneous position and force control of uncertain constrained manipulators is presented. Using models of the manipulator dynamics and environmental constraint, a task-space reduced-order position dynamics and an algebraic description for the interacting force between the manipulator and its environment are constructed. Based on this treatment, the robust nonlinear H/spl infin/ control approach and direct adaptive neural network (NN) technique are then integrated together. The role of NN devices is to adaptively learn those manipulators' structured/unstructured uncertain dynamics as well as the uncertainties with environmental modelling. Then, the effects on tracking performance attributable to the approximation errors of NN devices are attenuated to a prescribed level by the embedded nonlinear H/spl infin/ control. Whenever the adopted NN devices have the potential to effectively approximate those nonlinear mappings which are to be learned, then this new control scheme can be ultimately less conservative than its counterpart H/spl infin/ only position/force tracking control scheme. This is shown analytically in the form of theorem. Finally, a simulation study for a constrained two-link planar manipulator is given. Simulation results indicate that the proposed adaptive H/spl infin/ NN position/force tracking controller performs better in both force and position tracking tasks than its counterpart H/spl infin/ only position/force tracking control scheme.
机译:提出了一种新型的鲁棒学习控制器,用于不确定约束机械手的同时位置和力控制。使用机械手动力学和环境约束模型,构造了任务空间降序位置动力学和机械手与其环境之间相互作用力的代数描述。基于此处理,然后将鲁棒的非线性H / spl infin /控制方法和直接自适应神经网络(NN)技术集成在一起。 NN设备的作用是通过环境建模自适应地学习那些机械手的结构化/非结构化不确定性动力学以及不确定性。然后,通过嵌入的非线性H / spl infin /控制将可归因于NN设备逼近误差的对跟踪性能的影响衰减到规定的水平。只要采用的NN设备有可能有效地逼近要学习的非线性映射,那么这种新的控制方案最终就会比其对应的H / spl infin /仅位置/力跟踪控制方案保守。以定理的形式分析性地显示了这一点。最后,给出了约束二连杆平面操纵器的仿真研究。仿真结果表明,所提出的自适应H / spl infin / NN位置/力跟踪控制器比其对应的H / spl infin /仅位置/力跟踪控制方案表现更好。

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