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A novel model of motor learning capable of developing an optimal movement control law online from scratch

机译:一种新型的运动学习模型,能够从头开始在线开发最佳运动控制律

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摘要

A computational model of a learning system (LS) is described that acquires knowledge and skill necessary for optimal control of a multisegmental limb dynamics (controlled object or CO), starting from "knowing" only the dimensionality of the object's state space. It is based on an optimal control problem setup different from that of reinforcement learning. The LS solves the optimal control problem online while practicing the manipulation of CO. The system's functional architecture comprises several adaptive components, each of which incorporates a number of mapping functions approximated based on artificial neural nets. Besides the internal model of the CO's dynamics and adaptive controller that computes the control law, the LS includes a new type of internal model, the minimal cost (IMmc) of moving the controlled object between a pair of states. That internal model appears critical for the LS's capacity to develop an optimal movement trajectory. The IMmc interacts with the adaptive controller in a cooperative manner. The controller provides an initial approximation of an optimal control action, which is further optimized in real time based on the IMmc. The IMmc in turn provides information for updating the controller. The LS's performance was tested on the task of center-out reaching to eight randomly selected targets with a 2DOF limb model. The LS reached an optimal level of performance in a few tens of trials. It also quickly adapted to movement perturbations produced by two different types of external force field. The results suggest that the proposed design of a self-optimized control system can serve as a basis for the modeling of motor learning that includes the formation and adaptive modification of the plan of a goal-directed movement. [References: 17]
机译:描述了一种学习系统(LS)的计算模型,该模型从“仅知道”对象状态空间的维数开始,获得了多段肢体动力学(受控对象或CO)的最佳控制所必需的知识和技能。它基于与强化学习不同的最优控制问题设置。 LS在练习CO的过程中在线解决了最佳控制问题。系统的功能架构包括几个自适应组件,每个组件都包含许多基于人工神经网络近似的映射函数。除了CO的动力学内部模型和计算控制律的自适应控制器之外,LS还包括一种新型内部模型,即在一对状态之间移动受控对象的最小成本(IMmc)。该内部模型对于LS形成最佳运动轨迹的能力显得至关重要。 IMmc以协作方式与自适应控制器交互。控制器提供最佳控制动作的初始近似值,该近似值将基于IMmc实时进行进一步优化。 IMmc依次提供用于更新控制器的信息。 LS的性能已通过2DOF肢体模型在中心向外到达八个随机选择目标的任务上进行了测试。在数十项试验中,LS达到了最佳性能水平。它也迅速适应了由两种不同类型的外力场产生的运动扰动。结果表明,提出的自优化控制系统设计可作为运动学习建模的基础,其中包括目标定向运动计划的形成和自适应修改。 [参考:17]

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