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Coupling effect analysis between the central nervous system and the CPG network with proprioception

机译:中枢神经系统与CPG网络与本体感受的耦合效应分析

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Human rhythmic movement is generated by central pattern generators (CPGs), and their application to robot control has attracted interest of many scientists. But the coupling relationship between the central nervous system and the CPG network with external inputs is still not unveiled. According to biological experiment results, the CPG network is controlled by the neural system; in other words, the interaction between the central nervous system and the CPG network can control human movement effectively. This paper offers a complex human locomotion model, which illustrates the coupling relationship between the central nervous system and the CPG network with proprioception. Based on Matsuoka's CPG model (K. Matsuoka, Biol. Cybern. 52(6), 367-376 (1985)), the stability and robustness of the CPG network are analyzed with external inputs. In order to simulate the coupling relationship, the Radial Basis Function (RBF) neural network is used to simulate the cerebral cortex, and the Credit-Assignment Cerebellar Model Articulation Controller algorithm is employed to realize the locomotion mode conversion. A seven-link biped robot is chosen to simulate the walking gait. The main discoveries include: (1) the output of a new CPG network, which is stable and robust, can be treated as proprioception. Proprioception provides the central nervous system with the information about all joint angles; (2) analysis on a new locomotion model reveals that the cerebral cortex can modulate CPG parameters, leading to adjustment in walking gait.
机译:人的节奏运动是由中央模式发生器(CPG)产生的,它们在机器人控制中的应用引起了许多科学家的兴趣。但是中枢神经系统和CPG网络与外部输入之间的耦合关系仍未揭示。根据生物学实验结果,CPG网络是由神经系统控制的。换句话说,中枢神经系统和CPG网络之间的相互作用可以有效地控制人的活动。本文提供了一个复杂的人体运动模型,该模型说明了中枢神经系统与CPG网络与本体感受之间的耦合关系。基于松冈的CPG模型(K. Matsuoka,Biol。Cyber​​n。52(6),367-376(1985)),利用外部输入来分析CPG网络的稳定性和鲁棒性。为了模拟耦合关系,使用径向基函数神经网络(RBF)对大脑皮层进行模拟,并采用Credit-Assignment小脑模型关节控制器控制算法来实现运动模式转换。选择了一个七链接两足动物机器人来模拟步行步态。主要发现包括:(1)稳定稳定的新CPG网络的输出可被视为本体感受。本体感受为中枢神经系统提供有关所有关节角度的信息。 (2)对新运动模型的分析表明,大脑皮层可以调节CPG参数,从而导致步行步态的调节。

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