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Recurrent Neural Networks and Motor Programs

机译:经常性的神经网络和机动程序

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It is well known that biological control systems have a hierarchical design, consisting of brain, central pattern generators (CPGs) and actuators. The presence of the CPG means that descending control signals from the brain tend to be of a simple form. In this paper, this general design principle is implemented in a neural network framework. CPGs are implemented as fully recurrent nets, with Distal Learning used to estimate error derivatives for a controller. This ideas are tested on a simulated robotic arm.
机译:众所周知,生物控制系统具有由大脑,中心图案发生器(CPG)和致动器组成的层级设计。 CPG的存在意味着来自大脑的下降控制信号往往是简单的形式。在本文中,这种一般设计原则在神经网络框架中实施。 CPGS实现为完全复发网,具有远端学习,用于估计控制器的错误导数。在模拟机器人手臂上测试了这种想法。

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