On the Implementation of Central Pattern Generators for Periodic Rhythmic Locomotion

C. Torres-Huitzil
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引用次数: 5

Abstract

This paper presents the feasibility study of the efficient digital hardware implementation of a neural model to generate locomotion patterns of periodic rhythmic movements inspired by biological neural networks found in animal nervous system called Central Pattern Generators (CPGs). The proposed implementation contains a dedicated digital module that mimics the functionality and organization of the fundamental Amari- Hopfield CPG. This module is attached to an embedded processor running the uclinux operating system. The present paper deals only with the implementation of the basic CPG component and how to embed it under a System on a Chip (SoC) approach in order to be controlled by external commands in a high level transparent way for application development. The system is implemented on a Field Programmable Gate Array (FPGA) device providing a compact, flexible and expandable solution for generating periodic rhythmic patterns in robot control applications. According to experimental results, the architecture can be used as a basis for a biomimetic intelligent embedded control platform for articulated autonomous robots.
周期节律运动中心模式发生器的实现
本文介绍了一种神经模型的高效数字硬件实现的可行性研究,该模型受动物神经系统中称为中枢模式发生器(CPGs)的生物神经网络的启发,产生周期性有节奏运动的运动模式。提议的实现包含一个专用的数字模块,模仿基本的Amari- Hopfield CPG的功能和组织。该模块连接到运行uclinux操作系统的嵌入式处理器上。本文仅讨论基本CPG组件的实现以及如何将其嵌入到片上系统(SoC)方法下,以便以高水平透明的方式由外部命令控制,用于应用程序开发。该系统在现场可编程门阵列(FPGA)器件上实现,为机器人控制应用中的周期性节奏模式生成提供了紧凑、灵活和可扩展的解决方案。实验结果表明,该体系结构可作为关节式自主机器人仿生智能嵌入式控制平台的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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