Thoroughman Kurt A, Wang Wei, Tomov Dimitre N
Department of Biomedical Engineering, Washington University, St. Louis, Missouri 63130, USA.
J Neurophysiol. 2007 Aug;98(2):870-7. doi: 10.1152/jn.01126.2006. Epub 2007 May 23.
Here we computationally investigate how encumbering the hand could alter predictions made by the minimum torque change (MTC) and minimum endpoint variance hypotheses (MEPV) of movement planning. After minutes of training, people have made arm trajectories in a robot-generated viscous force field that were similar to previous baseline trajectories without the force field. We simulate the human arm interacting with this viscous load. We found that the viscous forces clearly differentiated MTC and MEPV predictions from both minimum-jerk predictions and from human behavior. We conclude that learned behavior in the viscous environment could arise from minimizing kinematic costs but could not arise from a minimization of either torque change or endpoint variance.
在此,我们通过计算研究了手部受到阻碍如何改变运动规划中最小扭矩变化(MTC)和最小端点方差假设(MEPV)所做出的预测。经过几分钟的训练后,人们在机器人生成的粘性力场中做出的手臂轨迹,与之前没有力场时的基线轨迹相似。我们模拟了人类手臂与这种粘性负载的相互作用。我们发现,粘性力清楚地将MTC和MEPV的预测与最小急动预测以及人类行为区分开来。我们得出结论,在粘性环境中的学习行为可能源于运动学成本的最小化,但并非源于扭矩变化或端点方差的最小化。