阈值神经网络的高效硬件实现

B. Zamanlooy, M. Mirhassani
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引用次数: 7

摘要

面积和信噪比是影响神经网络硬件实现的两个主要因素。尽管尝试减小s型和双曲正切激活函数的面积,但都无法达到阈值激活函数的效率。本文提出了一种新的用于阈值网络的低噪结构。所提出的体系结构在不同层中使用不同位数的权重存储。利用随机模型进行数学推导,找出每层的最优比特数。网络训练使用最近引入的称为极限学习机(ELM)的学习算法完成。以4-7-4网络为例,研究了其在不同权重精度下的硬件实现。考虑到面积×噪音干扰作为性能指标,提出的设计更有效。采用0.18 μm CMOS工艺的VLSI实现了该架构,在16、20和24位的总位数上分别提高了44.16%、58.04%和67.30%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient hardware implementation of threshold neural networks
Area and Noise to Signal Ratio (NSR) are two main factors in hardware implementation of neural networks. Despite attempts to reduce the area of sigmoid and hyperbolic tangent activation functions, they cannot achieve the efficiency of threshold activation function. A new NSR efficient architecture for threshold networks is proposed in this paper. The proposed architecture uses different number of bits for weight storage in different layers. The optimum number of bits for each layer is found based on the mathematical derivation using stochastic model. Network training is done using the recently introduced learning algorithm called Extreme Learning Machine (ELM). A 4-7-4 network is considered as a case study and its hardware implementation for different weight accuracies is investigated. The proposed design is more efficient considering area × NSR as a performance metric. VLSI implementation of the proposed architecture using a 0.18 μm CMOS process is presented which shows 44.16%, 58.04 % and 67.30% improvement for total number of bits equal to 16, 20 and 24.
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