首页> 外文期刊>Journal of Neurophysiology >Impedance control and internal model formation when reaching in a randomly varying dynamical environment.
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Impedance control and internal model formation when reaching in a randomly varying dynamical environment.

机译:在随机变化的动态环境中到达时的阻抗控制和内部模型的形成。

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We investigated the effects of trial-to-trial, random variation in environmental forces on the motor adaptation of human subjects during reaching. Novel sequences of dynamic environments were applied to subjects' hands by a robot. Subjects reached first in a "mean field" having a constant gain relating force and velocity, then in a "noise field," having a gain that varied randomly between reaches according to a normal distribution with a mean identical to that of the mean field. The unpredictable nature of the noise field did not degrade adaptation as quantified by final kinematic error and rate of adaptation. To achieve this performance, the nervous system used a dual strategy. It increased the impedance of the arm as evidenced by a significant reduction in aftereffect size following removal of the noise field. Simultaneously, it formed an internal model of the mean of the random environment, as evidenced by a minimization of trajectory error on trials for which the noise field gain was close to the mean field gain. We conclude that the human motor system is capable of predicting and compensating for the dynamics of an environment that varies substantially and randomly from trial to trial, while simultaneously increasing the arm's impedance to minimize the consequence of errors in the prediction.
机译:我们调查了环境力中试验间的随机变化对人体运动过程中适应性的影响。机器人将动态环境的新颖序列应用于对象的手。受试者首先在具有与力和速度有关的恒定增益的“平均场”中到达,然后在“噪声场”中到达,该“噪声场”具有在增益之间根据正态分布以均值与均值场均值相同的正态分布随机变化的增益。噪声场的不可预测性质不会降低适应性,如最终运动误差和适应率所量化的。为了达到这一性能,神经系统采用了双重策略。去除噪声场后,后效应尺寸的显着减小证明了臂的阻抗增加。同时,它形成了随机环境平均值的内部模型,这在噪声场增益接近于平均场增益的试验中被轨迹误差最小化所证明。我们得出的结论是,人体运动系统能够预测和补偿环境的动态变化,这种变化在每次试验之间都会发生很大的随机变化,同时会增加手臂的阻抗,以最大程度地减少预测错误的结果。

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