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Function approximation by hardware spiking neural network

机译:硬件加标神经网络的功能逼近

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摘要

Spiking neural networks (SNN) represent a special class of artificial neural networks, where neu-ron models communicate by sequences of spikes. SNNs are often referred to as the third generation of neural networks that highly inspired from natural computing in the brain and recent advances in neuroscience. In this paper we implement biologically-inspired, hardware-realizable SNN architecture using integrate-and-fire units, which is capable of approximating a real-valued function. Based on the results of MATLAB simulations, hardware synthesis and FPGA implementation, it is demonstrated that the implemented hardware can approximate linear and nonlinear functions with low minimum relative error. This framework may represent a fundamental computational unit for the development of artificial SNN, opening new perspectives in pattern recognition tasks.
机译:尖峰神经网络(SNN)代表一类特殊的人工神经网络,其中神经元模型通过尖峰序列进行通信。 SNN通常被称为第三代神经网络,受到大脑自然计算和神经科学最新进展的启发。在本文中,我们使用集成和发射单元来实现具有生物启发性且可硬件实现的SNN架构,该架构能够逼近实值函数。根据MATLAB仿真,硬件综合和FPGA实现的结果,证明了所实现的硬件可以以最小的最小相对误差近似线性和非线性函数。该框架可能代表了人工SNN开发的基本计算单元,从而为模式识别任务打开了新的视野。

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