仿生体细胞神经元设计及其在机器人神经系统中的应用

Zhongcheng Wu, Enliang Song, Fei Shen, Dezhang Xu, Bing Fang
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引用次数: 2

摘要

神经系统是人体主要的控制、调节和交流系统。神经系统的基本功能之一是感觉,人通过它来监测外部和内部环境。通向皮层的感觉通路通常由三个感觉神经元组成,称为一级、二级和三级神经元。提出了一种标准的生物启发神经元,可作为机器人感知系统的基节点。设计并实现了由多个相同神经元节点组成的传感器网络的建模、测试和使用的硬件和软件。每个节点都考虑了易用性和功耗方面的考虑。描述了一些要求,如“即插即用”能力、系统集成和动态重新配置,这是通过我们网络换能器神经元节点中的“换能器电子数据表”(TEDS)实现的。TEDS包含完整描述一个或多个传感器的类型、操作和属性的字段,并定义了其数据格式。本文还指定了一个数字接口,用于连接神经元访问TEDS数据表,以读取传感器数据和设置执行器。每个神经元可连接8路以上12位分辨率的模拟信号,2路数字通道用于SPI和I/sup 2/C接口传感器,20路以上I/O用于开关信号,还可提供2路模拟输出用于控制。一组经过设计的神经元可以通过不同的结构连接在一起,形成机器人的神经系统,不仅具有感知功能,而且具有控制功能。最后讨论了该方法在机器人感知系统中的应用实例和今后的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The biological inspired somatic neuron design and its application in robot nervous system
The nervous system is the major controlling, regulatory, and communicating system in human body. One of the basic functions of the nervous system is the sensory, by which one monitors the external and internal environments. Sensory pathways to the cortex usually consist of three sensory neurons termed 1st order, 2nd order, and 3rd order neurons. In this paper, a standard biological inspired neuron was presented, which can be acted as the basis node of robot perceptual systems. The hardware and software has been designed and implemented for modeling, testing and employing sensor networks composing of many identical neuron nodes. Each node considers ease-of-use and power considerations. Some requirements, such as 'plug-and-play' capability, system integration and dynamic reconfiguration, were described, which is achieved through an 'transducer electronic data sheet' (TEDS) in our networked transducer neuron node. The TEDS contains fields that fully describe the type, operation, and attributes of one or more transducers and its data formats are defined. The paper also specifies a digital interface for connecting neuron to access the TEDS data sheets for reading sensor data and setting actuators. Each neuron can connect more than 8 channel analog signals by 12 bit resolution, two digital channel for SPI and I/sup 2/C interface sensor, and more than 20 channel I/O for switch signal, it can also offer two channel analog output for controlling purpose. A set of designed neurons can be connected together by different structure to form robot nervous system, not only for sensing, but for controlling too. Example application on robot perception system and future in progress work are discussed in the end.
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