The Research of Fault Tolerance of Memristor-Based Artificial Neural Networks

S. Danilin, S. Shchanikov, A. Zuev, I. Bordanov, A. E. Sakulin
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引用次数: 2

Abstract

A general approach to the development of memristor-based artificial neural networks (ANNM) operated with specified fault tolerance (FT) is formulated and applied in the paper. It is shown that ensuring the required ANNM FT is related to ensuring the required accuracy of their operation at all the structural and functional hierarchy levels. The paper proposes a quantitative FT criterion that can be used to create ANNM reliability block diagrams, calculate and optimize reliability in accord with the actual Russian and international standards. The application of the proposed algorithm is considered on the example of the ANN performing an approximation of mathematical functions, the synapses of which are implemented with memristors. It is found that a potentially high ANNM FT cannot be achieved by itself only because of the massive parallelism of artificial neural networks. Instead it depends on many factors and requires the application of special physical and information technologies at all the ANNM life cycle stages.
基于忆阻器的人工神经网络容错研究
本文提出并应用了基于忆阻器的特定容错人工神经网络(ANNM)的一般开发方法。结果表明,确保所需的ANNM FT与确保其在所有结构和功能层次上的操作所需的准确性有关。本文提出了一种定量的傅立叶变换判据,该判据可根据俄罗斯及国际实际标准建立ANNM可靠性方框图,计算并优化可靠性。以神经网络对数学函数进行近似,其突触是用忆阻器实现的为例,讨论了该算法的应用。研究发现,由于人工神经网络的大量并行性,无法单独实现潜在的高ANNM FT。相反,它取决于许多因素,并要求在ANNM生命周期的所有阶段应用特殊的物理和信息技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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