Cognition-based variable admittance control for active compliance in flexible manipulation of heavy objects with a power-assist robotic system.

Robotics and biomimetics Pub Date : 2018-01-01 Epub Date: 2018-11-12 DOI:10.1186/s40638-018-0090-x
S M Mizanoor Rahman, Ryojun Ikeura
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引用次数: 21

Abstract

In the first step, a 1-DOF power-assist robotic system (PARS) is developed for lifting lightweight objects. Dynamics for human-robot co-manipulation of objects is derived that considers human cognition (weight perception). Then, admittance control with position feedback and velocity controller is derived using weight perception-based dynamics. Human subjects lift an object with the PARS, and HRI (human-robot interaction) and system characteristics are analyzed. A comprehensive scheme is developed to evaluate the HRI and performance. HRI is expressed in terms of physical HRI (maneuverability, motion, safety, stability, naturalness) and cognitive HRI (workload, trust), and performance is expressed in terms of manipulation efficiency and precision. To follow the guidance of ISO/TS 15066, hazard analysis and risk assessment are conducted. A constrained optimization algorithm is proposed to determine the values of the control parameters that produce optimum HRI and performance with lowest risk. Results show that consideration of weight perception in dynamics and control helps achieve optimum HRI and performance for a set of hard constraints. In the second step, a weight perception-based novel variable admittance control scheme is proposed as an active compliance to the system, which enhances the physical HRI, trust, precision and efficiency by 53.05%, 46.78%, 3.84% and 4.98%, respectively, and reduces workload by 35.38% and thus helps achieve optimum HRI and performance for a set of soft constraints. The risk reduces due to the active compliance. Then, effectiveness of the optimization and control algorithms is validated using a multi-DOF PARS for manipulating heavy objects, and intuitive and natural HRI and performance for power-assisted heavy object manipulation are achieved through calibrating HRI and performance with that for manipulation of lightweight object.

Abstract Image

Abstract Image

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基于认知的可变导纳控制在动力辅助机器人系统中对重物的柔性操纵中的主动顺应。
在第一步,开发了一个1自由度动力辅助机器人系统(PARS),用于提升轻质物体。推导了考虑人的认知(体重感知)的人-机器人协同操作物体的动力学。然后,利用基于权重感知的动力学方法,导出了位置反馈和速度控制器的导纳控制。人类受试者用PARS举起物体,并分析了人机交互和系统特性。制定了一个全面的方案来评估人力资源指数和绩效。HRI用物理HRI(可操作性、运动性、安全性、稳定性、自然性)和认知HRI(工作量、信任)来表达,性能HRI用操作效率和精度来表达。按照ISO/TS 15066的指导,进行危害分析和风险评估。提出了一种约束优化算法,以确定在最小风险下产生最佳HRI和性能的控制参数值。结果表明,在动力学和控制中考虑体重感知有助于在一组硬约束下获得最佳的HRI和性能。第二步,提出了一种基于权重感知的可变导纳控制方案,作为系统的主动服从,该方案将物理HRI、信任、精度和效率分别提高了53.05%、46.78%、3.84%和4.98%,减少了35.38%的工作量,从而实现了一组软约束下的最优HRI和性能。由于积极的遵从性,风险降低了。在此基础上,利用多自由度物体操纵模型验证了优化控制算法的有效性,并通过与轻量物体操纵的HRI和性能进行标定,实现了动力辅助物体操纵直观、自然的HRI和性能。
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