间歇性故障的容错小世界细胞神经网络

Katsuyoshi Matsumoto, M. Uehara, H. Mori
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引用次数: 0

摘要

细胞神经网络(CNN)是一种神经网络模型,其中细胞仅与相邻细胞连接。在图像处理中,CNN可以用于降噪和边缘检测。小世界细胞神经网络(Small-World Cellular Neural Networks, SWCNN)是一种通过增加小世界链路(Small-World link)对cnn进行扩展的网络,它是一种全局捷径。虽然SWCNN比cnn有更好的性能,但SWCNN的缺点之一是容错性。之前,我们提出了多个SWCNN层来提高SWCNN的容错性。然而,由于这只处理终止失败,这是不够的。本文提出了一种时间戳投票方法来提高间歇故障的容错性。该方法优于三模冗余(TMR)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Tolerance Small-World Cellular Neural Networks for Inttermitted Faults
A Cellular Neural Network (CNN) is a neural network model in which cells are linked only to neighboring cells. In image processing, a CNN can be used for noise reduction and edge detection. Small-World Cellular Neural Networks (SWCNN) are CNNs extended by adding a small-world link, which is a global short-cut. Although SWCNNs have better performance than CNNs, one of the weaknesses of the SWCNN is fault tolerance. Previously, we proposed multiple SWCNN layers to improve the fault tolerance of the SWCNN. However, as this only addresses termination failures it is not sufficient. In this paper, we propose a Time Stamp Voting method to improve tolerance of intermittent faults. This method is superior to Triple Modular Redundancy (TMR).
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