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首页> 外文期刊>Applied Sciences >Gaussian Process-Integrated State Space Model for Continuous Joint Angle Prediction from EMG and Interactive Force in a Human-Exoskeleton System
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Gaussian Process-Integrated State Space Model for Continuous Joint Angle Prediction from EMG and Interactive Force in a Human-Exoskeleton System

机译:高斯过程集成状态空间模型,用于人骨骼系统中肌电图和交互作用力的连续关节角预测

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As one of the most direct indicators of the transparency between a human and an exoskeleton, interactive force has rarely been fused with electromyography (EMG) in the control of human-exoskeleton systems, the performances of which are largely determined by the accuracy of the continuous joint angle prediction. To achieve intuitive and naturalistic human intent learning, a state space model (SSM) for continuous angle prediction of knee joint is developed. When the influence of the interactive force is often ignored in the existing models of human-exoskeleton systems, interactive force is applied as the measurement model output of the proposed SSM, and the EMG signal is used as the state model input signal to indicate muscle activation. The forward dynamics of joint motion and the human-machine interaction mechanism, i.e., the biomechanical interpretations of the interactive force generation mechanism, are derived as the bases for the state model and measurement model based on Hill’s muscle model and semiphenomenological (SP) muscular model, respectively. Gaussian process (GP)-based nonlinear autoregressive with the exogenous inputs (NARX) model and back-propagation neural network (BPNN) are applied to provide better adaptivity for the SSM in practical applications. Corresponding experimental results demonstrate the validity and superiority of the method.
机译:作为人类与外骨骼之间透明度的最直接指标之一,在人体外骨骼系统的控制中,交互作用力很少与肌电图(EMG)融合,其性能在很大程度上取决于连续波的准确性。关节角度预测。为了实现直观自然的人类意图学习,开发了一种用于连续预测膝关节角度的状态空间模型(SSM)。当在现有的人体骨骼系统模型中经常忽略交互作用力的影响时,将交互作用力用作拟议的SSM的测量模型输出,而将EMG信号用作状态模型输入信号以指示肌肉激活。基于希尔的肌肉模型和半现象学(SP)肌肉模型,得出了关节运动的正向动力学和人机交互机制,即交互力生成机制的生物力学解释,作为状态模型和测量模型的基础, 分别。基于高斯过程(GP)的非线性自回归与外生输入(NARX)模型和反向传播神经网络(BPNN)用于为SSM在实际应用中提供更好的适应性。相应的实验结果证明了该方法的有效性和优越性。

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