Department of Kinesiology, The Pennsylvania State University, Rec Hall-268N, University Park, PA 16802, USA.
Exp Brain Res. 2010 Nov;207(1-2):119-32. doi: 10.1007/s00221-010-2440-y. Epub 2010 Oct 15.
Two approaches to motor redundancy, optimization and the principle of abundance, seem incompatible. The former predicts a single, optimal solution for each task, while the latter assumes that families of equivalent solutions are used. We explored the two approaches using a four-finger pressing task with the requirement to produce certain combination of total normal force and a linear combination of normal forces that approximated the total moment of force in static conditions. In the first set of trials, many force-moment combinations were used. Principal component (PC) analysis showed that over 90% of finger force variance was accounted for by the first two PCs. The analytical inverse optimization (ANIO) approach was applied to these data resulting in quadratic cost functions with linear terms. Optimal solutions formed a hyperplane ("optimal plane") in the four-dimensional finger force space. In the second set of trials, only four force-moment combinations were used with multiple repetitions. Finger force variance within each force-moment combination in the second set was analyzed within the uncontrolled manifold (UCM) hypothesis. Most finger force variance was confined to a hyperplane (the UCM) compatible with the required force-moment values. We conclude that there is no absolute optimal behavior, and the ANIO yields the best fit to a family of optimal solutions that differ across trials. The difference in the force-producing capabilities of the fingers and in their moment arms may lead to deviations of the "optimal plane" from the subspace orthogonal to the UCM. We suggest that the ANIO and UCM approaches may be complementary in the analysis of motor variability in redundant systems.
两种针对运动冗余的方法,优化和富余原则,似乎是相互矛盾的。前者预测每个任务都有一个单一的最佳解决方案,而后者则假设使用等效的解决方案家族。我们使用需要在静态条件下产生特定的总正力组合和正力线性组合的四指按压任务来探索这两种方法。在第一组试验中,使用了许多力-力矩组合。主成分(PC)分析表明,超过 90%的手指力方差可以由前两个 PC 来解释。分析逆优化(ANIO)方法应用于这些数据,得出了具有线性项的二次成本函数。最优解在四指力空间中形成一个超平面(“最优平面”)。在第二组试验中,仅使用了四个力-力矩组合,并有多次重复。第二组中每个力-力矩组合内的手指力方差在无控制流形(UCM)假设内进行了分析。大多数手指力方差被限制在一个与所需力-力矩值兼容的超平面(UCM)内。我们得出的结论是,没有绝对的最优行为,ANIO 产生了与跨试验不同的最佳解决方案家族的最佳拟合。手指的产生力能力和它们的力矩臂的差异可能导致“最优平面”从与 UCM 正交的子空间偏离。我们建议,ANIO 和 UCM 方法在冗余系统的运动变异性分析中可能是互补的。