Evaluation and Mitigation of Weight-Related Single Event Upsets in a Convolutional Neural Network
Yulong Cai,
Ming Cai,
Yanlai Wu
et al.
Abstract:Single Event Upsets (SEUs) are most likely to cause bit flips within the trained parameters of a convolutional neural network (CNN). Therefore, it is crucial to analyze and implement hardening techniques to enhance their reliability under radiation. In this paper, random fault injections into the weights of LeNet-5 were carried out in order to evaluate and propose strategies to improve the reliability of a CNN. According to the results of an SEU fault injection, the accuracy of the CNN can be classified into t… Show more
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