Zhang Longbin, Zhang Xiaochen, Zhu Xueyu, Wang Ruoli, Gutierrez-Farewik Elena M
KTH MoveAbility Lab, Department of Engineering Mechanics, KTH Royal Institute of Technology, Stockholm, Sweden.
Department of Mathematics, University of Iowa, Iowa City, IA, United States.
Front Neurosci. 2023 Aug 30;17:1254088. doi: 10.3389/fnins.2023.1254088. eCollection 2023.
Research interest in exoskeleton assistance strategies that incorporate the user's torque capacity is growing rapidly. However, the predicted torque capacity from users often includes uncertainty from various sources, which can have a significant impact on the safety of the exoskeleton-user interface.
To address this challenge, this paper proposes an adaptive control framework for a knee exoskeleton that uses muscle electromyography (EMG) signals and joint kinematics. The framework predicted the user's knee flexion/extension torque with confidence bounds to quantify the uncertainty based on a neuromusculoskeletal (NMS) solver-informed Bayesian Neural Network (NMS-BNN). The predicted torque, with a specified confidence level, controlled the assistive torque provided by the exoskeleton through a TCP/IP stream. The performance of the NMS-BNN model was also compared to that of the Gaussian process (NMS-GP) model.
Our findings showed that both the NMS-BNN and NMS-GP models accurately predicted knee joint torque with low error, surpassing traditional NMS models. High uncertainties were observed at the beginning of each movement, and at terminal stance and terminal swing in self-selected speed walking in both NMS-BNN and NMS-GP models. The knee exoskeleton provided the desired assistive torque with a low error, although lower torque was observed during terminal stance of fast walking compared to self-selected walking speed.
The framework developed in this study was able to predict knee flexion/extension torque with quantifiable uncertainty and to provide adaptive assistive torque to the user. This holds significant potential for the development of exoskeletons that provide assistance as needed, with a focus on the safety of the exoskeleton-user interface.
对结合用户扭矩能力的外骨骼辅助策略的研究兴趣正在迅速增长。然而,用户预测的扭矩能力往往包含来自各种来源的不确定性,这可能会对外骨骼 - 用户界面的安全性产生重大影响。
为应对这一挑战,本文提出了一种用于膝关节外骨骼的自适应控制框架,该框架使用肌肉肌电图(EMG)信号和关节运动学。该框架基于神经肌肉骨骼(NMS)求解器告知的贝叶斯神经网络(NMS - BNN)预测用户的膝关节屈伸扭矩,并给出置信区间以量化不确定性。预测扭矩在指定置信水平下通过TCP/IP流控制外骨骼提供的辅助扭矩。还将NMS - BNN模型的性能与高斯过程(NMS - GP)模型进行了比较。
我们的研究结果表明,NMS - BNN和NMS - GP模型均能以低误差准确预测膝关节扭矩,优于传统的NMS模型。在NMS - BNN和NMS - GP模型中,在每个运动开始时以及自选速度行走的终末站立和终末摆动阶段都观察到了高不确定性。膝关节外骨骼以低误差提供了所需的辅助扭矩,尽管与自选步行速度相比,快速行走的终末站立阶段观察到的扭矩较低。
本研究中开发的框架能够预测具有可量化不确定性的膝关节屈伸扭矩,并为用户提供自适应辅助扭矩。这对于按需提供辅助的外骨骼的开发具有重要潜力,重点在于外骨骼 - 用户界面的安全性。