Si elegans: Hardware architecture and communications protocol

Pedro Machado, Kofi Appiah, T. McGinnity, J. Wade
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引用次数: 6

Abstract

The hardware layer of the Si elegans EU FP7 project is a massively parallel architecture designed to accurately emulate the C. elegans nematode in biological real-time. The C. elegans nematode is one of the simplest and well characterized Biological Nervous Systems (BNS) yet many questions related to basic functions such as movement and learning remain unanswered. The hardware layer includes a Hardware Neural Network (HNN) composed of 302 FPGAs (one per neuron), a Hardware Muscle Network (HMN) composed of 27 FPGAs (one per 5 muscles) and one Interface Manager FPGA, which is physically connected through 2 Local Area Networks (LANs) and through an innovative 3D optical connectome. Neuron structures (gap junctions and synapses) and muscles are modelled in the design environment of the software layer and their simulation data (spikes, variable values and parameters) generate data packets sent across the Local Area Networks (LAN). Furthermore, a software layer gives the user a set of design tools giving the required flexibility and high level hardware abstraction to design custom neuronal models. In this paper the authors present an overview of the hardware layer, connections infrastructure and communication protocol.
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硬件架构和通信协议
秀丽隐杆线虫EU FP7项目的硬件层是一个大规模并行架构,旨在精确模拟秀丽隐杆线虫的生物实时。秀丽隐杆线虫是最简单的生物神经系统之一,但许多与运动和学习等基本功能相关的问题仍未得到解答。硬件层包括一个由302个FPGA(每个神经元一个)组成的硬件神经网络(HNN),一个由27个FPGA(每5个肌肉一个)组成的硬件肌肉网络(HMN)和一个接口管理器FPGA,它通过2个局域网(lan)和一个创新的3D光学连接体物理连接。神经元结构(间隙连接和突触)和肌肉在软件层的设计环境中建模,它们的模拟数据(尖峰、变量值和参数)生成数据包,通过局域网(LAN)发送。此外,软件层为用户提供了一组设计工具,为设计自定义神经元模型提供了所需的灵活性和高级硬件抽象。在本文中,作者概述了硬件层、连接基础结构和通信协议。
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