Author:
Zhu Yuanchao,Yang Canjun,Wei Qianxiao,Wu Xin,Yang Wei
Abstract
Purpose
This paper aims to propose an intuitive shared control strategy to control a humanoid manipulator that can fully combine the advantages of humans and machines to produce a stronger intelligent form.
Design/methodology/approach
The working space of an operator’s arm and that of a manipulator are matched, and a genetic algorithm that limits the position of the manipulator’s elbow joint is used to find the optimal solution. Then, the mapping of the operator’s action to that of manipulators is realized. The controls of the human and robot are integrated. First, the current action of the operator is input. Second, the target object is predicted according to the maximum entropy hypothesis. Third, the joint angle of the manipulator is interpolated based on time. Finally, the confidence and weight of the current moment are calculated.
Findings
The modified weight adjustment method is the optimal way to adjust the weight during the task. In terms of time and accuracy, the experimental results of single target obstacle avoidance grabbing and multi-target predictive grabbing show that the shared control mode can provide full play to the advantages of humans and robots to accomplish the target task faster and more accurately than the control merely by a human or robot on its own.
Originality/value
A flexible and highly anthropomorphic human–robot action mapping method is proposed, which provides operator decisions in the shared control process. The shared control between human and the robot is realized, and it enhances the rapidity and intelligence, paving a new way for a novel human–robot collaboration.
Subject
Industrial and Manufacturing Engineering,Computer Science Applications,Control and Systems Engineering
Reference35 articles.
1. ABB (2015), “Technical data IRB 14000 YuMi, IRB 14000 YUMI DATA”, available at: https://new.abb.com/products/robotics/industrial-robots/irb-14000-yumi/irb-14000-yumi-data
2. A learning-based shared control architecture for interactive task execution,2017
3. Motion retargeting for humanoid robots based on simultaneous morphing parameter identification and motion optimization;IEEE Transactions on Robotics,2017
4. Motion retargeting for humanoid robots based on identification to preserve and reproduce human motion features,2015
5. Learning robot objectives from physical human interaction;Proceedings of Machine Learning Research,2017
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