基于忆阻器的随机人工神经网络推理分析计算

Nicolas Bogun, E. Quesada, E. Pérez, C. Wenger, A. Kloes, M. Schwarz
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引用次数: 0

摘要

近年来,人工智能对人类生活的影响显著增加。然而,随着问题的复杂性的增加,由于冯·诺伊曼的计算机体系结构,增加系统特征来进行如此大量的数据计算变得很麻烦。神经形态计算旨在通过模拟人脑的并行计算来解决这个问题。对于这种方法,记忆装置被用来模拟人类大脑的突触。然而,基于硬件网络的常见模拟需要耗时的蒙特卡罗模拟来考虑忆阻器件的随机切换。这项工作提出了一个替代概念,利用概率分布函数(PDF)的记忆电阻电流的卷积在傅里叶域等效乘法。因此,实现了人工神经网络对手写数字进行推理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analytical Calculation of Inference in Memristor-based Stochastic Artificial Neural Networks
The impact of artificial intelligence on human life has increased significantly in recent years. However, as the complexity of problems rose aswell, increasing system features for such amount of data computation became troublesome due to the von Neumann's computer architecture. Neuromorphic computing aims to solve this problem by mimicking the parallel computation of a human brain. For this approach, memristive devices are used to emulate the synapses of a human brain. Yet, common simulations of hardware based networks require time consuming Monte-Carlo simulations to take into account the stochastic switching of memristive devices. This work presents an alternative concept making use of the convolution of the probability distribution functions (PDF) of memristor currents by its equivalent multiplication in Fourier domain. An artificial neural network is accordingly implemented to perform the inference stage with handwritten digits.
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