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Online identification and nonlinear control of the electrically stimulated quadriceps muscle

机译:电刺激股四头肌的在线识别和非线性控制

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A new approach for estimating nonlinear models of the electrically stimulated quadriceps muscle group under nonisometric conditions is investigated. The model can be used for designing controlled neuro-prostheses. In order to identify the muscle dynamics (stimulation pulsewidth—active knee moment relation) from discrete-time angle measurements only, a hybrid model structure is postulated for the shank-quadriceps dynamics. The model consists of a relatively well known time-invariant passive component and an uncertain time-variant active component. Rigid body dynamics, described by the Equation of Motion (EoM), and passive joint properties form the time-invariant part. The actuator, i.e. the electrically stimulated muscle group, represents the uncertain time-varying section. A recursive algorithm is outlined for identifying online the stimulated quadriceps muscle group. The algorithm requires EoM and passive joint characteristics to be known a priori. The muscle dynamics represent the product of a continuous-time nonlinear activation dynamics and a nonlinear static contraction function described by a Normalised Radial Basis Function (NRBF) network which has knee-joint angle and angular velocity as input arguments. An Extended Kalman Filter (EKF) approach is chosen to estimate muscle dynamics parameters and to obtain full state estimates of the shank-quadriceps dynamics simultaneously. The latter is important for implementing state feedback controllers. A nonlinear state feedback controller using the backstepping method is explicitly designed whereas the model was identified a priori using the developed identification procedure.
机译:研究了一种在非等距条件下估计电刺激股四头肌肌肉模型非线性模型的新方法。该模型可用于设计受控的神经假体。为了仅从离散时间角度测量中识别出肌肉动力学(刺激脉冲宽度与主动膝力矩的关系),提出了针对小腿股四头肌动力学的混合模型结构。该模型由一个相对众所周知的时不变无源分量和一个不确定时变有源分量组成。由运动方程(EoM)描述的刚体动力学和被动关节特性构成了时不变部分。致动器,即电刺激的肌肉群,代表了不确定的时变部分。概述了一种递归算法,用于在线识别受刺激的股四头肌群。该算法需要先验地知道EoM和被动关节特征。肌肉动力学表示连续时间非线性激活动力学和非线性静态收缩函数的乘积,该函数由归一化径向基函数(NRBF)网络描述,该神经网络具有膝关节角和角速度作为输入参数。选择扩展卡尔曼滤波器(EKF)方法来估计肌肉动力学参数并同时获得小腿股四头肌动力学的完整状态估计。后者对于实现状态反馈控制器很重要。明确设计了使用反步法的非线性状态反馈控制器,而使用开发的识别程序先验地识别了模型。

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