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首页> 外文期刊>PLoS Computational Biology >Evidence for Composite Cost Functions in Arm Movement Planning: An Inverse Optimal Control Approach
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Evidence for Composite Cost Functions in Arm Movement Planning: An Inverse Optimal Control Approach

机译:手臂运动计划中复合成本函数的证据:逆最优控制方法

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摘要

An important issue in motor control is understanding the basic principles underlying the accomplishment of natural movements. According to optimal control theory, the problem can be stated in these terms: what cost function do we optimize to coordinate the many more degrees of freedom than necessary to fulfill a specific motor goal? This question has not received a final answer yet, since what is optimized partly depends on the requirements of the task. Many cost functions were proposed in the past, and most of them were found to be in agreement with experimental data. Therefore, the actual principles on which the brain relies to achieve a certain motor behavior are still unclear. Existing results might suggest that movements are not the results of the minimization of single but rather of composite cost functions. In order to better clarify this last point, we consider an innovative experimental paradigm characterized by arm reaching with target redundancy. Within this framework, we make use of an inverse optimal control technique to automatically infer the (combination of) optimality criteria that best fit the experimental data. Results show that the subjects exhibited a consistent behavior during each experimental condition, even though the target point was not prescribed in advance. Inverse and direct optimal control together reveal that the average arm trajectories were best replicated when optimizing the combination of two cost functions, nominally a mix between the absolute work of torques and the integrated squared joint acceleration. Our results thus support the cost combination hypothesis and demonstrate that the recorded movements were closely linked to the combination of two complementary functions related to mechanical energy expenditure and joint-level smoothness.
机译:运动控制中的一个重要问题是理解完成自然运动的基本原理。根据最优控制理论,问题可以用以下术语来表述:我们优化了哪些成本函数来协调比实现特定电机目标所需的更多自由度?这个问题尚未得到最终答案,因为优化的内容部分取决于任务的要求。过去提出了许多成本函数,并且发现大多数函数与实验数据一致。因此,大脑实现某种运动行为所依赖的实际原理仍然不清楚。现有结果可能表明,变动不是最小化单个成本的结果,而是复合成本函数的结果。为了更好地阐明最后一点,我们考虑一种创新的实验范式,其特征是手臂伸手可达到目标冗余。在此框架内,我们利用逆最优控制技术自动推断最适合实验数据的最优准则(的组合)。结果表明,即使未事先指定目标点,受试者在每种实验条件下仍表现出一致的行为。逆向和直接最优控制共同表明,当优化两个成本函数(名义上是扭矩的绝对功和集成的平方关节加速度之间的混合)的组合时,平均手臂轨迹可得到最佳复制。因此,我们的结果支持了成本组合假设,并证明了记录的运动与与机械能消耗和接头平整度有关的两个互补功能的组合紧密相关。

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