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首页> 外文期刊>IEEE transactions on biomedical circuits and systems >A Novel Nonlinear Function Evaluation Approach for Efficient FPGA Mapping of Neuron and Synaptic Plasticity Models
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A Novel Nonlinear Function Evaluation Approach for Efficient FPGA Mapping of Neuron and Synaptic Plasticity Models

机译:一种新型非线性函数评价方法,用于神经元和突触塑性模型的高效FPGA映射

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摘要

Efficient hardware realization of spiking neural networks is of great significance in a wide variety of applications, such as high-speed modeling and simulation of large-scale neural systems. Exploiting the key features of FPGAs, this paper presents a novel nonlinear function evaluation approach, based on an effective uniform piecewise linear segmentation method, to efficiently approximate the nonlinear terms of neuron and synaptic plasticity models targeting low-cost digital implementation. The proposed approach takes advantage of a high-speed and extremely simple segment address encoder unit regardless of the number of segments, and therefore is capable of accurately approximating a given nonlinear function with a large number of straight lines. In addition, this approach can be efficiently mapped into FPGAs with minimal hardware cost. To investigate the application of the proposed nonlinear function evaluation approach in low-cost neuromorphic circuit design, it is applied to four case studies: the Izhikevich and FitzHugh-Nagumo neuron models as 2-dimensional case studies, the Hindmarsh-Rose neuron model as a relatively complex 3-dimensional model containing two nonlinear terms, and a calcium-based synaptic plasticity model capable of producing various STDP curves. Simulation and FPGA synthesis results demonstrate that the hardware proposed for each case study is capable of producing various responses remarkably similar to the original model and significantly outperforms the previously published counterparts in terms of resource utilization and maximum clock frequency.
机译:尖刺神经网络的高效硬件实现在各种应用中具有重要意义,例如大型神经系统的高速建模和仿真。本文采用了FPGA的关键特征,提出了一种新颖的非线性函数评估方法,基于有效的均匀分段线性分割方法,有效地近似于靶向低成本数字实施的神经元和突触塑性模型的非线性术语。所提出的方法利用高速和极其简单的段地址编码器单元,无论段的数量如何,都能够精确地近似具有大量直线的给定的非线性函数。此外,这种方法可以以最小的硬件成本有效地映射到FPGA中。为了研究拟议的非线性函数评估方法在低成本的神经晶路设计中的应用,它适用于四个案例研究:Izhikevich和Fitzhugh-Nagumo神经元模型作为二维案例研究,Hindmarsh玫瑰神经元模型为一个含有两个非线性术语的相对复杂的三维模型,以及能够产生各种STDP曲线的基于钙的突触塑性模型。模拟和FPGA合成结果表明,为每个案例研究提出的硬件能够产生与原始模型相似的各种响应,并在资源利用率和最大时钟频率方面显着优于先前发表的对应物。

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