基于忆阻器的Sigmoid函数变异性分析

N. Kaiyrbekov, O. Krestinskaya, A. P. James
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引用次数: 4

摘要

激活函数在神经网络中被广泛应用,它基于加权输入的线性组合来确定神经单元的激活值。激活函数的有效实现对提高神经网络的性能非常重要。sigmoid是应用最广泛的激活函数之一。因此,人们对提高s形电路的性能越来越感兴趣。本文的主要目标是通过用忆阻器件代替CMOS晶体管来改进现有的基于电流镜的s型模型。我们介绍了晶体管的性能、晶体管尺寸和温度的变化。给出了改进后的cmos忆阻s型电路的面积、功率和噪声。在s型电路中应用忆阻器可保证片上面积减小,功耗降低7%。采用TSMC 180nm CMOS设计工艺,在SPICE中对所提出的s形电路进行了仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variability Analysis of Memristor-based Sigmoid Function
Activation functions are widely used in neural networks to decide the activation value of the neural unit based on linear combinations of the weighted inputs. The effective implementation of activation function is highly important to enhance he performance of a neural network. One of the most widely used activation functions is sigmoid. Therefore, there is a growing interest to enhance the performance of sigmoid circuits. In this paper, the main objective is to modify existing current mirror based sigmoid model by replacing CMOS transistors with memristive devices. We present the performance, variation of transistor sizes and temperature. The area, power and noise in the modified CMOS-memristive sigmoid circuit are shown. The application of memristors in the sigmoid circuit ensures the reduction of on-chip area, and power dissipation by 7%. The proposed sigmoid circuit was simulated in SPICE using TSMC 180nm CMOS design process.
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