In this paper, we propose a supervised learning approach based on an Artificial Neural Network (ANN) model for real-time classification of subtasks in a physical human-robot interaction (pHRI) task involving contact with a stiff environment. In this regard, we consider three subtasks for a given pHRI task: Idle, Driving, and Contact. Based on this classification, the parameters of an admittance controller that regulates the interaction between human and robot are adjusted adaptively in real time to make the robot more transparent to the operator (i.e. less resistant) during the Driving phase and more stable during the Contact phase. The Idle phase is primarily used to detect the initiation of task. Experimental results have shown that the ANN model can learn to detect the subtasks under different admittance controller conditions with an accuracy of 98% for 12 participants. Finally, we show that the admittance adaptation based on the proposed subtask classifier leads to 20% lower human effort (i.e. higher transparency) in the Driving phase and 25% lower oscillation amplitude (i.e. higher stability) during drilling in the Contact phase compared to an admittance controller with fixed parameters.
翻译:在本文中,我们提出一种基于人工神经网络(ANN)模型的监督学习方法,该模型用于对与僵硬环境接触的人体-机器人互动(pHRI)任务中的子任务进行实时分类,涉及与僵硬环境进行接触。在这方面,我们考虑对给定的 pHRI 任务采用三个子任务: 交接、 驾驶和接触。基于这一分类,对调节人与机器人之间相互作用的接收控制器参数进行了实时调整,以使机器人在驾驶阶段对操作者更加透明(即抗力较弱),在接触阶段中更加稳定。 交接阶段主要用来检测任务启动情况。 实验结果显示, ANN模型可以学习在不同的接收控制条件下探测子任务,12名参与者的准确率为98%。 最后,我们表明,根据拟议的子任务分类的接收适应导致在钻机阶段对操作者更透明化(即更高的透明度),在钻机阶段对低25%的振动稳定度进行对比。