Shakeriaski Farshad, Mohammadian Masoud
Faculty of Science and Technology, University of Canberra, Canberra 2617, Australia.
Sensors (Basel). 2025 Jun 3;25(11):3528. doi: 10.3390/s25113528.
Upper limb assistive exoskeletons help stroke patients by assisting arm movement in impaired individuals. However, effective control of these systems to help stroke survivors is a complex task. In this paper, a novel approach is proposed to enhance the control of upper limb assistive exoskeletons by using torque estimation and prediction in a proportional-integral-derivative (PID) controller loop to more optimally integrate the torque of the exoskeleton robot, which aims to eliminate system uncertainties. First, a model for torque estimation from Electromyography (EMG) signals and a predictive torque model for the upper limb exoskeleton robot for the elbow are trained. The trained data consisted of two-dimensional high-density surface EMG (HD-sEMG) signals to record myoelectric activity from five upper limb muscles (biceps brachii, triceps brachii, anconeus, brachioradialis, and pronator teres) during voluntary isometric contractions for twelve healthy subjects performing four different isometric tasks (supination/pronation and elbow flexion/extension) for one minute each, which were trained on long short-term memory (LSTM), bidirectional LSTM (BLSTM), and gated recurrent units (GRU) deep neural network models. These models estimate and predict torque requirements. Finally, the estimated and predicted torque from the trained network is used online as input to a PID control loop and robot dynamic, which aims to control the robot optimally. The results showed that using the proposed method creates a strong and innovative approach to greater independence and rehabilitation improvement.
上肢辅助外骨骼通过协助受损个体的手臂运动来帮助中风患者。然而,有效控制这些系统以帮助中风幸存者是一项复杂的任务。本文提出了一种新方法,通过在比例积分微分(PID)控制器回路中使用扭矩估计和预测来增强上肢辅助外骨骼的控制,以便更优化地整合外骨骼机器人的扭矩,旨在消除系统不确定性。首先,训练了一个用于从肌电图(EMG)信号估计扭矩的模型以及一个用于上肢外骨骼机器人肘部的预测扭矩模型。训练数据由二维高密度表面肌电图(HD-sEMG)信号组成,用于记录12名健康受试者在进行四种不同的等长任务(旋前/旋后和肘部屈伸)各一分钟的自愿等长收缩期间,来自五块上肢肌肉(肱二头肌、肱三头肌、肘肌、肱桡肌和旋前圆肌)的肌电活动,这些数据在长短期记忆(LSTM)、双向LSTM(BLSTM)和门控循环单元(GRU)深度神经网络模型上进行训练。这些模型估计和预测扭矩需求。最后,将训练网络估计和预测的扭矩作为输入在线用于PID控制回路和机器人动力学,旨在最优地控制机器人。结果表明,使用所提出的方法创造了一种强大且创新的方法,可实现更大程度的独立性并改善康复效果。