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首页> 外文期刊>Frontiers in Neurorobotics >A Functional Subnetwork Approach to Designing Synthetic Nervous Systems That Control Legged Robot Locomotion
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A Functional Subnetwork Approach to Designing Synthetic Nervous Systems That Control Legged Robot Locomotion

机译:一种功能性子网方法,用于设计控制腿式机器人运动的合成神经系统

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摘要

A dynamical model of an animal’s nervous system, or synthetic nervous system (SNS), is a potentially transformational control method. Due to increasingly detailed data on the connectivity and dynamics of both mammalian and insect nervous systems, controlling a legged robot with an SNS is largely a problem of parameter tuning. Our approach to this problem is to design functional subnetworks that perform specific operations, and then assemble them into larger models of the nervous system. In this paper, we present networks that perform addition, subtraction, multiplication, division, differentiation, and integration of incoming signals. Parameters are set within each subnetwork to produce the desired output by utilizing the operating range of neural activity, R , the gain of the operation, k , and bounds based on biological values. The assembly of large networks from functional subnetworks underpins our recent results with MantisBot.
机译:动物神经系统或合成神经系统(SNS)的动力学模型是一种潜在的转化控制方法。由于有关哺乳动物和昆虫神经系统的连通性和动力学的详细数据越来越多,因此使用SNS控制有腿机器人在很大程度上是参数调整的问题。我们解决此问题的方法是设计执行特定操作的功能子网,然后将其组装到神经系统的更大模型中。在本文中,我们介绍了执行输入信号的加,减,乘,除,微分和积分的网络。通过利用神经活动的操作范围R,操作的增益k和基于生物学值的界限,在每个子网内设置参数以产生所需的输出。由功能子网组成的大型网络的组合巩固了我们与MantisBot合作的最新成果。

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