Hadjiosif Alkis M, Smith Maurice A
School of Engineering and Applied Sciences, and.
School of Engineering and Applied Sciences, and Center for Brain Science, Harvard University, Cambridge, Massachusetts 02138
J Neurosci. 2015 Jun 17;35(24):9106-21. doi: 10.1523/JNEUROSCI.1883-14.2015.
To reduce the risk of slip, grip force (GF) control includes a safety margin above the force level ordinarily sufficient for the expected load force (LF) dynamics. The current view is that this safety margin is based on the expected LF dynamics, amounting to a static safety factor like that often used in engineering design. More efficient control could be achieved, however, if the motor system reduces the safety margin when LF variability is low and increases it when this variability is high. Here we show that this is indeed the case by demonstrating that the human motor system sizes the GF safety margin in proportion to an internal estimate of LF variability to maintain a fixed statistical confidence against slip. In contrast to current models of GF control that neglect the variability of LF dynamics, we demonstrate that GF is threefold more sensitive to the SD than the expected value of LF dynamics, in line with the maintenance of a 3-sigma confidence level. We then show that a computational model of GF control that includes a variability-driven safety margin predicts highly asymmetric GF adaptation between increases versus decreases in load. We find clear experimental evidence for this asymmetry and show that it explains previously reported differences in how rapidly GFs and manipulatory forces adapt. This model further predicts bizarre nonmonotonic shapes for GF learning curves, which are faithfully borne out in our experimental data. Our findings establish a new role for environmental variability in the control of action.
为降低滑倒风险,握力(GF)控制在通常足以应对预期负载力(LF)动态变化的力水平之上设置了安全裕度。当前观点认为,此安全裕度基于预期的LF动态变化,类似于工程设计中常用的静态安全系数。然而,如果运动系统在LF变异性较低时减小安全裕度,而在变异性较高时增大安全裕度,可能会实现更高效的控制。在此,我们通过证明人类运动系统根据LF变异性的内部估计来调整GF安全裕度的大小,以维持防止滑倒的固定统计置信度,证实了情况确实如此。与当前忽略LF动态变化变异性的GF控制模型不同,我们证明GF对LF动态变化标准差的敏感度是其预期值的三倍,这与维持3倍标准差置信水平一致。然后我们表明,包含变异性驱动安全裕度的GF控制计算模型预测了负载增加与减少之间GF适应的高度不对称性。我们发现了这种不对称性的明确实验证据,并表明它解释了先前报道的GF和操纵力适应速度差异。该模型进一步预测了GF学习曲线的奇异非单调形状,我们的实验数据确凿地证实了这一点。我们的研究结果确立了环境变异性在动作控制中的新作用。