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An Inverse Optimal Control Approach to Explain Human Arm Reaching Control Based on Multiple Internal Models

机译:基于多个内部模型的人手臂伸直控制的最优逆控制方法

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摘要

Human motor control is highly efficient in generating accurate and appropriate motor behavior for a multitude of tasks. This paper examines how kinematic and dynamic properties of the musculoskeletal system are controlled to achieve such efficiency. Even though recent studies have shown that the human motor control relies on multiple models, how the central nervous system (CNS) controls this combination is not fully addressed. In this study, we utilize an Inverse Optimal Control (IOC) framework in order to find the combination of those internal models and how this combination changes for different reaching tasks. We conducted an experiment where participants executed a comprehensive set of free-space reaching motions. The results show that there is a trade-off between kinematics and dynamics based controllers depending on the reaching task. In addition, this trade-off depends on the initial and final arm configurations, which in turn affect the musculoskeletal load to be controlled. Given this insight, we further provide a discomfort metric to demonstrate its influence on the contribution of different inverse internal models. This formulation together with our analysis not only support the multiple internal models (MIMs) hypothesis but also suggest a hierarchical framework for the control of human reaching motions by the CNS.
机译:人体电机控制在为多种任务生成准确和适当的电机行为方面非常高效。本文研究了如何控制肌肉骨骼系统的运动学和动力学特性以实现这种效率。尽管最近的研究表明,人的运动控制依赖于多种模型,但中枢神经系统(CNS)如何控制这种组合仍未得到充分解决。在本研究中,我们利用逆最优控制(IOC)框架来查找那些内部模型的组合以及该组合如何针对不同的任务进行更改。我们进行了一项实验,参与者可以执行一整套自由空间的到达动作。结果表明,根据到达任务,在运动学和动力学控制器之间要进行权衡。另外,这种权衡取决于手臂的初始和最终配置,这反过来又影响了要控制的肌肉骨骼负荷。有了这种见识,我们进一步提供了一种不适感度量,以证明其对不同逆内部模型贡献的影响。这种表述以及我们的分析不仅支持多种内部模型(MIM)假设,而且还提出了一种由CNS控制人类伸手动作的分层框架。

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