Ngeo Jimson, Tamei Tomoya, Shibata Tomohiro, Orlando M F Felix, Behera Laxmidhar, Saxena Anupam, Dutta Ashish
Annu Int Conf IEEE Eng Med Biol Soc. 2013;2013:338-41. doi: 10.1109/EMBC.2013.6609506.
Patients suffering from loss of hand functions caused by stroke and other spinal cord injuries have driven a surge in the development of wearable assistive devices in recent years. In this paper, we present a system made up of a low-profile, optimally designed finger exoskeleton continuously controlled by a user's surface electromyographic (sEMG) signals. The mechanical design is based on an optimal four-bar linkage that can model the finger's irregular trajectory due to the finger's varying lengths and changing instantaneous center. The desired joint angle positions are given by the predictive output of an artificial neural network with an EMG-to-Muscle Activation model that parameterizes electromechanical delay (EMD). After confirming good prediction accuracy of multiple finger joint angles we evaluated an index finger exoskeleton by obtaining a subject's EMG signals from the left forearm and using the signal to actuate a finger on the right hand with the exoskeleton. Our results show that our sEMG-based control strategy worked well in controlling the exoskeleton, obtaining the intended positions of the device, and that the subject felt the appropriate motion support from the device.
近年来,因中风和其他脊髓损伤而导致手部功能丧失的患者推动了可穿戴辅助设备的快速发展。在本文中,我们展示了一种系统,该系统由一个外形轻薄、设计优化的手指外骨骼组成,其通过用户的表面肌电(sEMG)信号进行连续控制。机械设计基于一种优化的四杆连杆机构,由于手指长度变化和瞬时中心改变,该机构能够模拟手指的不规则轨迹。期望的关节角度位置由具有肌电到肌肉激活模型的人工神经网络的预测输出给出,该模型对机电延迟(EMD)进行参数化。在确认多个手指关节角度具有良好的预测精度后,我们通过从左前臂获取受试者的肌电信号,并使用该信号通过外骨骼驱动右手的一根手指,对食指外骨骼进行了评估。我们的结果表明,我们基于表面肌电的控制策略在控制外骨骼、使设备达到预期位置方面效果良好,并且受试者感受到了设备提供的适当运动支持。