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A neural network-based approach for variable admittance control in human-robot cooperation: online adjustment of the virtual inertia

机译:人体机器人合作中的基于神经网络的可变进入控制方法:虚拟惯性的在线调整

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摘要

This paper proposes an approach for variable admittance control in human-robot collaboration depending on the online training of neural network. The virtual inertia is an important factor for the system stability, and its tuning is investigated in improving the human-robot cooperation. The design of the variable virtual inertia controller is analyzed, and the choice of the neural network type and their inputs and output is justified. The error backpropagation analysis of the designed system is elaborated since the end-effector velocity error depends indirectly on the multilayer feedforward neural network output. The proposed controller performance is experimentally investigated, and its generalization ability is evaluated by conducting cooperative tasks with the help of multiple subjects using the KUKA LWR manipulator under different conditions and tasks than the ones used for the neural network training. Finally, a comparative study is presented between the proposed method and previous published ones.
机译:本文提出了一种根据神经网络的在线培训的人机协作中可变进入控制的方法。虚拟惯性是系统稳定性的重要因素,并调查其调整在提高人机合作方面。分析了可变虚拟惯量控制器的设计,并对神经网络类型及其输入和输出的选择是合理的。设计系统的误差反向分析是阐述的,因为末端执行器速度误差在多层前馈神经网络输出上间接依赖。所提出的控制器性能是通过实验研究的,并且通过在不同条件和任务下使用Kuka LWR操纵器的多个受试者的帮助来评估其泛化能力,而不是用于神经网络训练的任务。最后,在拟议的方法和以前公开的方法之间提出了比较研究。

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