多层感知器网络的故障表征

C. Tan, R. K. Iyer
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引用次数: 2

摘要

本文报道了一组模拟实验的结果,这些实验用于量化作为三层感知器模型实现的分类网络中的故障影响。测量了分类网络误分类向量的百分比、网络稳定所需的时间以及输出值。结果表明,暂态故障和永久故障对网络性能都有显著影响。随着暂态持续时间的增加,暂态故障也会导致网络越来越不稳定。被错误分类的病媒平均比例约为25%;在重新学习后,这个比例降低到10%。与节点故障相比,链路故障的影响相对较小(重新学习后误分类率为1%,误分类率为19%)。一项关于硬件冗余影响的研究表明,随着硬件尺寸的增加,错误分类呈线性增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault characterization of a multilayered perceptron network
The results of a set of simulation experiments conducted to quantify the effects of faults in a classification network implemented as a three-layered perceptron model are reported. The percentage of vectors misclassified by the classification network, the time taken for the network to stabilize, and the output values are measured. The results show that both transient and permanent faults have a significant impact on the performance of the network. Transient faults are also found to cause the network to be increasingly unstable as the duration of a transient is increased. The average percentage of the vectors misclassified is about 25%; after relearning, this is reduced to 10%. The impact of link faults is relatively insignificant in comparison with node faults (1% versus 19% misclassified after relearning). A study of the impact of hardware redundancy shows a linear increase in misclassifications with increasing hardware size.<>
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