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Impact of Load Variation on Joint Angle Estimation From Surface EMG Signals

机译:载荷变化对根据表面肌电信号估计关节角度的影响

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摘要

Many studies use surface electromyogram (sEMG) signals to estimate the joint angle, for control of upper-limb exoskeletons and prostheses. However, several practical factors still affect its clinical applicability. One of these factors is the load variation during daily use. This paper demonstrates that the load variation can have a substantial impact on performance of elbow angle estimation. This impact leads an increase in mean RMSE (Root-Mean-Square Error) from 7.86∘ to 20.44∘ in our experimental test. Therefore, we propose three methods to address this issue: 1) pooling the training data from all loads together to form the pooled training data for the training model; 2) adding the measured load value (force sensor) as an additional input; and 3) developing a two-step hybrid estimation approach based on load and sEMG. Experiments are conducted with five subjects to investigate the feasibility of the proposed three methods. The results show that the mean RMSE is reduced from 20.44∘ to 13.54∘ using method one, 10.47∘ using method two, and 8.48∘ using method three, respectively. Our study indicates that 1) the proposed methods can improve performance and stability on joint angle estimation and 2) sensor fusion (sEMG sensor and force sensor) is an efficient way to resolve the adverse effect of load variation.
机译:许多研究使用表面肌电图(sEMG)信号估计关节角度,以控制上肢外骨骼和假肢。但是,一些实际因素仍然影响其临床适用性。这些因素之一是日常使用中的负载变化。本文证明了负载变化可能会对肘角度估计的性能产生重大影响。在我们的实验测试中,这种影响导致平均RMSE(均方根误差)从7.86∘增加到20.44∘。因此,我们提出了三种方法来解决此问题:1)将所有负载的训练数据汇总在一起,以形成用于训练模型的汇总训练数据; 2)将测得的负载值(力传感器)添加为附加输入; 3)开发基于负载和sEMG的两步混合估计方法。对五个对象进行了实验,以研究所提出的三种方法的可行性。结果表明,使用方法一的平均RMSE分别从20.44∘降低到13.54∘,使用方法二的平均RMSE分别从10.47∘和使用方法三的8.48∘降低。我们的研究表明,1)提出的方法可以提高关节角度估计的性能和稳定性,2)传感器融合(sEMG传感器和力传感器)是解决载荷变化不利影响的有效方法。

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