Robust Fault-Tolerant Design Based on Checksum and On-Line Testing for Memristor Neural Network

Michihiro Shintani, Mamoru Ishizaka, M. Inoue
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Abstract

The matrix-vector product is the most essential operation in the weight calculation of deep learning, and greatly impacts the calculation speed and power consumption of neural network circuits. A memristor is one of the most promising components used to efficiently develop matrix-vector products. However, it has been pointed out that memristors have a severely low write endurance limitation and large variation during operation owing to their manufacturing immaturity. While an algorithm-based fault tolerance method has thus far been proposed to enhance the reliability by applying checksum function and online testing, the effectiveness of such the function remains limited because it can apply only the forward propagation and multiple hard faults cannot be repaired. This paper proposes an extension of the conventional method to achieve a more robust fault-tolerant method for memristor-based neural network circuits. Numerical experiments using the Hopfield network and three-layered neural network demonstrate that the proposed method achieves 5.25% and 1.88% higher classification accuracies compared with a conventional fault-tolerant method, respectively.
基于校验和在线测试的记忆电阻神经网络鲁棒容错设计
矩阵向量积是深度学习权重计算中最重要的运算,极大地影响了神经网络电路的计算速度和功耗。忆阻器是用于高效开发矩阵-矢量积的最有前途的元件之一。然而,由于其制造的不成熟,忆阻器在使用过程中存在着写寿命限制低、变化大的问题。虽然目前已经提出了一种基于算法的容错方法,通过使用校验和函数和在线测试来提高可靠性,但由于该方法只能应用前向传播,并且不能修复多个硬故障,因此其有效性受到限制。本文提出了一种传统方法的扩展,以实现基于忆阻器的神经网络电路更鲁棒的容错方法。采用Hopfield网络和三层神经网络进行的数值实验表明,与传统容错方法相比,该方法的分类准确率分别提高了5.25%和1.88%。
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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