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Dynamical Motor Control Learned with Deep Deterministic Policy Gradient

机译:通过深度确定性策略梯度学习动态电动机控制

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摘要

Conventional models of motor control exploit the spatial representation of the controlled system to generate control commands. Typically, the control command is gained with the feedback state of a specific instant in time, which behaves like an optimal regulator or spatial filter to the feedback state. Yet, recent neuroscience studies found that the motor network may constitute an autonomous dynamical system and the temporal patterns of the control command can be contained in the dynamics of the motor network, that is, the dynamical system hypothesis (DSH). Inspired by these findings, here we propose a computational model that incorporates this neural mechanism, in which the control command could be unfolded from a dynamical controller whose initial state is specified with the task parameters. The model is trained in a trial-and-error manner in the framework of deep deterministic policy gradient (DDPG). The experimental results show that the dynamical controller successfully learns the control policy for arm reaching movements, while the analysis of the internal activities of the dynamical controller provides the computational evidence to the DSH of the neural coding in motor cortices.
机译:电动机控制的常规模型利用受控系统的空间表示来生成控制命令。通常,控制命令是通过特定时间点的反馈状态获得的,其行为类似于反馈状态的最佳调节器或空间滤波器。然而,最近的神经科学研究发现,电动机网络可以构成一个自治的动力学系统,并且控制命令的时间模式可以包含在电动机网络的动力学中,即动力学系统假设(DSH)。受这些发现的启发,我们在此提出了一个包含这种神经机制的计算模型,其中控制命令可以从动态控制器展开,而动态控制器的初始状态由任务参数指定。该模型在深度确定性策略梯度(DDPG)框架内以试错法进行训练。实验结果表明,动力学控制器成功地学习了手臂伸直运动的控制策略,而对动力学控制器内部活动的分析则为运动皮层神经编码的DSH提供了计算依据。

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