IEEE Trans Neural Netw Learn Syst. 2019 Dec;30(12):3558-3571. doi: 10.1109/TNNLS.2018.2872595. Epub 2018 Oct 19.
In this paper, a closed-loop control has been developed for the exoskeleton robot system based on brain-machine interface (BMI). Adaptive controllers in joint space, a redundancy resolution method at the velocity level, and commands that generated from BMI in task space have been integrated effectively to make the robot perform manipulation tasks controlled by human operator's electroencephalogram. By extracting the features from neural activity, the proposed intention decoding algorithm can generate the commands to control the exoskeleton robot. To achieve optimal motion, a redundancy resolution at the velocity level has been implemented through neural dynamics optimization. Considering human-robot interaction force as well as coupled dynamics during the exoskeleton operation, an adaptive controller with redundancy resolution has been designed to drive the exoskeleton tracking the planned trajectory in human brain and to offer a convenient method of dynamics compensation with minimal knowledge of the dynamics parameters of the exoskeleton robot. Extensive experiments which employed a few subjects have been carried out. In the experiments, subjects successfully fulfilled the given manipulation tasks with convergence of tracking errors, which verified that the proposed brain-controlled exoskeleton robot system is effective.
本文针对基于脑机接口(BMI)的外骨骼机器人系统,开发了一种闭环控制方法。在关节空间中使用自适应控制器,在速度级别上使用冗余分辨率方法,并在任务空间中使用 BMI 生成的命令,使机器人能够执行由人类操作员脑电图控制的操作任务。通过从神经活动中提取特征,所提出的意图解码算法可以生成控制外骨骼机器人的命令。为了实现最佳运动,通过神经动力学优化在速度级别上实现了冗余分辨率。考虑到外骨骼操作过程中的人机交互力以及耦合动力学,设计了具有冗余分辨率的自适应控制器,以驱动外骨骼跟踪人脑规划的轨迹,并提供一种方便的动力学补偿方法,只需最少的外骨骼机器人动力学参数知识。已经进行了大量的实验,实验中几位受试者成功完成了给定的操作任务,跟踪误差收敛,验证了所提出的脑控外骨骼机器人系统是有效的。