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Integration of paired spiking cerebellar models for voluntary movement adaptation in a closed-loop neuro-robotic experiment. A simulation study

机译:在闭环神经机器人实验中整合成对尖峰小脑模型以进行自愿运动适应。模拟研究

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Motor control is a very important feature in the human brain to achieve optimal performance in motor tasks. The biological basis of this feature can be better understood by emulating the cerebellar mechanisms of learning. The cerebellum plays a key role in implementing fine motor control, since it extracts the information about movements from sensory-motor signals, stores it by means of internal models and uses them to adapt to the environment. The hypothesis is that different internal models could work both independently and dependently. So far, there have been a few studies that aimed to prove their dependency; however, this hypothesis has not been widely used in robot control. The purpose of this work is to build paired spiking cerebellar models and to incorporate them into a biologically plausible composite robotic control architecture for movement adaptation. This is achieved by combining feedback error learning and cerebellar internal models theories. Thus the control architecture is composed of cerebellar feed-forward and recurrent loops for torque-based control of a robot. The spiking cerebellar models are able to correct and improve the performance of the two-degrees of freedom robot module Fable by providing both adaptive torque corrections and sensory corrections to the reference generated by the trajectory planner. Simulations are carried out in the Neurorobotics platform of the Human Brain Project. Results show that the contribution provided by cerebellar learning leads to an optimization of the performance with errors being reduced by 30% compared with the case where the cerebellar contribution is not applied.
机译:运动控制是人脑中非常重要的功能,可以在运动任务中实现最佳性能。通过模仿小脑的学习机制,可以更好地理解此功能的生物学基础。小脑在执行精细运动控制中起着关键作用,因为它从感觉运动信号中提取有关运动的信息,并通过内部模型进行存储并将其用于适应环境。假设是不同的内部模型可以独立和依赖地工作。到目前为止,已经有一些研究旨在证明它们的依赖性。但是,该假设尚未在机器人控制中广泛使用。这项工作的目的是建立成对的尖峰小脑模型,并将其合并到生物学上合理的复合机器人控制体系结构中,以进行运动适应。这是通过结合反馈错误学习和小脑内部模型理论来实现的。因此,控制架构由小脑前馈回路和递归回路组成,用于基于扭矩的机器人控制。尖峰小脑模型能够通过为轨迹规划器生成的参考提供自适应扭矩校正和感官校正,来校正和改善两自由度机器人模块寓言的性能。模拟是在人脑计划的Neurorobotics平台上进行的。结果表明,与不应用小脑贡献的情况相比,小脑学习提供的贡献导致性能的优化,错误减少了30%。

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