Koo Bon H, Siu Ho Chit, Newman Dava J, Roche Ellen T, Petersen Lonnie G
Department of Mechanical Engineering, Massachusetts Institute of Technology, Cambridge, MA 02139, USA.
Lincoln Laboratory, Massachusetts Institute of Technology, Lexington, MA 02421, USA.
Sensors (Basel). 2025 Feb 20;25(5):1297. doi: 10.3390/s25051297.
This study explores two methods of predicting non-cyclic upper-body motions using classification algorithms. Exoskeletons currently face challenges with low fluency, hypothesized to be in part caused by the lag in active control innate in many leader-follower paradigms seen in today's systems, leading to energetic inefficiencies and discomfort. To address this, we employ k-nearest neighbor (KNN) and deep learning models to predict motion characteristics, such as magnitude and category, from surface electromyography (sEMG) signals. Data were collected from six muscles located around the elbow. The sEMG signals were processed to identify significant activation changes. Two classification approaches were utilized: a KNN algorithm that categorizes motion based on the slopes of processed sEMG signals at change points and a deep neural network employing continuous categorization. Both methods demonstrated the capability to predict future voluntary non-cyclic motions up to and beyond commonly acknowledged electromechanical delay times, with the deep learning model able to predict, with certainty at or beyond 90%, motion characteristics even prior to myoelectric activation of the muscles involved. Our findings indicate that these classification algorithms can be used to predict upper-body non-cyclic motions to potentially increase machine interfacing fluency. Further exploration into regression-based prediction models could enhance the precision of these predictions, and further work could explore their effects on fluency when utilized in a tandem or wearable robotic application.
本研究探索了两种使用分类算法预测非循环上身运动的方法。目前,外骨骼面临流畅性低的挑战,据推测,部分原因是当今系统中许多主从范式固有的主动控制延迟,导致能量效率低下和不适。为了解决这个问题,我们采用k近邻(KNN)和深度学习模型,从表面肌电图(sEMG)信号中预测运动特征,如幅度和类别。数据从肘部周围的六块肌肉采集。对sEMG信号进行处理,以识别显著的激活变化。采用了两种分类方法:一种基于变化点处处理后的sEMG信号斜率对运动进行分类的KNN算法,以及一种采用连续分类的深度神经网络。两种方法都证明了能够预测未来的自愿非循环运动,直至并超过通常认可的机电延迟时间,深度学习模型甚至能够在涉及的肌肉肌电激活之前,以90%或更高的确定性预测运动特征。我们的研究结果表明,这些分类算法可用于预测上身非循环运动,以潜在地提高机器接口的流畅性。对基于回归的预测模型的进一步探索可以提高这些预测的精度,进一步的工作可以探索它们在串联或可穿戴机器人应用中使用时对流畅性的影响。