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首页> 外文期刊>Journal of neural engineering >Internal models in sensorimotor integration: perspectives from adaptive control theory
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Internal models in sensorimotor integration: perspectives from adaptive control theory

机译:感觉运动整合的内部模型:来自自适应控制理论的观点

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摘要

Internal models and adaptive controls are empirical and mathematical paradigms that have evolved separately to describe learning control processes in brain systems and engineering systems, respectively. This paper presents a comprehensive appraisal of the correlation between these paradigms with a view to forging a unified theoretical framework that may benefit both disciplines. It is suggested that the classic equilibrium-point theory of impedance control of arm movement is analogous to continuous gain-scheduling or high-gain adaptive control within or across movement trials, respectively, and that the recently proposed inverse internal model is akin to adaptive sliding control originally for robotic manipulator applications. Modular internal models' architecture for multiple motor tasks is a form of multi-model adaptive control. Stochastic methods, such as generalized predictive control, reinforcement learning, Bayesian learning and Hebbian feedback covariance learning, are reviewed and their possible relevance to motor control is discussed. Possible applicability of a Luenberger observer and an extended Kalman filter to state estimation problems—such as sensorimotor prediction or the resolution of vestibular sensory ambiguity猧s also discussed. The important role played by vestibular system identification in postural control suggests an indirect adaptive control scheme whereby system states or parameters are explicitly estimated prior to the implementation of control. This interdisciplinary framework should facilitate the experimental elucidation of the mechanisms of internal models in sensorimotor systems and the reverse engineering of such neural mechanisms into novel brain-inspired adaptive control paradigms in future.
机译:内部模型和自适应控制是经验和数学范式,它们分别发展起来分别描述了大脑系统和工程系统中的学习控制过程。本文对这些范式之间的相关性进行了全面的评估,以期建立一个可能对两个学科都有利的统一理论框架。有人提出,手臂运动的阻抗控制的经典平衡点理论分别类似于运动试验中或运动试验中的连续增益调度或高增益自适应控制,并且最近提出的逆内部模型类似于自适应滑动。最初用于机器人操纵器应用程序的控制。模块化内部模型用于多个电机任务的体系结构是一种多模型自适应控制的形式。回顾了随机方法,例如广义预测控制,强化学习,贝叶斯学习和Hebbian反馈协方差学习,并讨论了它们与运动控制的可能相关性。还讨论了Luenberger观测器和扩展的Kalman滤波器对状态估计问题的可能适用性,例如感觉运动预测或前庭感觉歧义的解决。前庭系统识别在姿势控制中所起的重要作用表明了一种间接自适应控制方案,通过该方案,可以在实施控制之前明确估计系统状态或参数。这种跨学科的框架应该有助于实验性阐明感觉运动系统内部模型的机制,并在将来将这种神经机制逆向工程为新型的脑启发式自适应控制范例。

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