Exploratory Evaluation of the Force Myography (FMG) Signals Usage for Admittance Control of a Linear Actuator

Maram Sakr, C. Menon
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引用次数: 10

Abstract

Force Myography (FMG) is a technique involving the use of force sensors on the surface of the limb to detect the volumetric changes in the underlying musculotendinous complex. This paper investigates the feasibility of employing force-sensing resistors (FSRs) worn on the arm that measure the FMG signals for force prediction in dynamic conditions. The predicted force value can be mapped into velocity value to control a linear actuator to track hand movements. Two FMG bands were donned on the participant wrist and forearm muscle belly to measure the FMG signals during force exertion. An accurate force transducer was used for labeling the FM G signals by measuring the exerted force. Three regression algorithms including kernel ridge regression (KRR), support vector regression (SVR), and general regression neural network (G RNN), were used in this study for predicting hand force using the FMG signals. The data were collected for 200 seconds for training the regression model. Then, the trained model was used for online force prediction for 430 seconds. The testing accuracy was 0.92, 0.90 and 0.79, using KRR, SVR and GRNN, respectively. These results will be beneficial for monitoring hand force during human-robot interaction or controlling the robot movement.
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力肌图(FMG)信号用于线性驱动器导纳控制的探索性评价
力肌图(FMG)是一种利用肢体表面的力传感器来检测潜在肌肉腱复合体体积变化的技术。本文研究了在机械臂上佩戴力敏电阻(FSRs)来测量动态条件下的力敏信号进行力预测的可行性。预测的力值可以映射成速度值来控制线性执行器跟踪手的运动。在参与者手腕和前臂肌肉腹部佩戴两条FMG腕带,测量用力过程中的FMG信号。采用精确的力传感器,通过测量施加的力来标记调频G信号。本文采用核脊回归(KRR)、支持向量回归(SVR)和广义回归神经网络(G RNN)三种回归算法,对FMG信号进行了手力预测。收集数据200秒,训练回归模型。然后,将训练好的模型用于430秒的在线力预测。KRR、SVR和GRNN的检测准确率分别为0.92、0.90和0.79。这些结果将有助于监测人机交互过程中的人手或控制机器人的运动。
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