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首页> 外文期刊>IEEE transactions on biomedical circuits and systems >Low-Cost Adaptive Exponential Integrate-and-Fire Neuron Using Stochastic Computing
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Low-Cost Adaptive Exponential Integrate-and-Fire Neuron Using Stochastic Computing

机译:使用随机计算的低成本自适应指数集成和灭火神经元

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摘要

Neurons are the primary building block of the nervous system. Exploring the mysteries of the brain in science or building a novel brain-inspired hardware substrate in engineering are inseparable from constructing an efficient biological neuron. Balancing the functional capability and the implementation cost of a neuron is a grand challenge in neuromorphic field. In this paper, we present a low-cost adaptive exponential integrate-and-fire neuron, called SC-AdEx, for large-scale neuromorphic systems using stochastic computing. In the proposed model, arithmetic operations are performed on stochastic bit-streams with small and low-power circuitry. To evaluate the proposed neuron, we perform biological behavior analysis, including various firing patterns. Furthermore, the model is synthesized and implemented physically on FPGA as a proof of concept. Experimental results show that our model can precisely reproduce wide range biological behaviors as the original model, with higher computational performance and lower hardware cost against state-of-the-art AdEx hardware neurons.
机译:神经元是神经系统的主要构建块。在工程中探索大脑中大脑的奥秘或在工程中建造新的脑筋启发硬件基板是不可分割的构建有效的生物神经元。平衡神经元的功能性能力和神经元的实施成本是神经形态领域的大挑战。在本文中,我们介绍了一种低成本的适应性指数整合 - 和火神经元,称为SC-Adex,用于使用随机计算的大型神经胸体系。在所提出的模型中,在具有小和低功率电路的随机位流上执行算术运算。为了评估所提出的神经元,我们进行生物行为分析,包括各种烧制模式。此外,该模型是在FPGA上物理地合成和实施的,作为概念证明。实验结果表明,我们的模型可以精确地再现宽范围的生物行为作为原始模型,具有较高的计算性能和较低的硬件成本对抗最先进的ADEX硬件神经元。

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