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A cerebellar model for predictive motor control tested in a brain-based device

机译:在基于大脑的设备中测试的用于预测性运动控制的小脑模型

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摘要

The cerebellum is known to be critical for accurate adaptive control and motor learning. We propose here a mechanism by which the cerebellum may replace reflex control with predictive control. This mechanism is embedded in a learning rule (the delayed eligibility trace rule) in which synapses onto a Purkinje cell or onto a cell in the deep cerebellar nuclei become eligible for plasticity only after a fixed delay from the onset of suprathreshold presynaptic activity. To investigate the proposal that the cerebellum is a general-purpose predictive controller guided by a delayed eligibility trace rule, a computer model based on the anatomy and dynamics of the cerebellum was constructed. It contained components simulating cerebellar cortex and deep cerebellar nuclei, and it received input from a middle temporal visual area and the inferior olive. The model was incorporated in a real-world brain-based device (BBD) built on a Segway robotic platform that learned to traverse curved paths. The BBD learned which visual motion cues predicted impending collisions and used this experience to avoid path boundaries. During learning, the BBD adapted its velocity and turning rate to successfully traverse various curved paths. By examining neuronal activity and synaptic changes during this behavior, we found that the cerebellar circuit selectively responded to motion cues in specific receptive fields of simulated middle temporal visual areas. The system described here prompts several hypotheses about the relationship between perception and motor control and may be useful in the development of general-purpose motor learning systems for machines.
机译:小脑对于精确的自适应控制和运动学习至关重要。我们在这里提出一种机制,通过该机制小脑可以用预测控制代替反射控制。该机制嵌入在学习规则(延迟的资格跟踪规则)中,在该规则中,突触上突触前活动开始一定的延迟后,突触到Purkinje细胞或小脑深核中的细胞上才具有可塑性。为了研究小脑是由延迟资格跟踪规则指导的通用预测控制器的提议,构建了基于小脑解剖和动力学的计算机模型。它包含模拟小脑皮层和小脑深核的组件,并且从颞中部视觉区域和下橄榄获得输入。该模型已整合到基于Segway机器人平台的现实世界基于脑的设备(BBD)中,该平台学会了穿越弯曲的路径。 BBD了解了哪些视觉运动线索预测了即将发生的碰撞,并以此经验来避免路径边界。在学习过程中,BBD调整了其速度和转弯率以成功穿越各种弯曲路径。通过检查这种行为期间的神经元活动和突触变化,我们发现小脑回路选择性地响应运动模拟的中颞视觉特定感受野的线索地区。此处描述的系统会提示有关知觉与运动控制之间的关系,可能对通用运动学习系统的开发机器。

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