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A Squeezed Artificial Neural Network for the Symbolic Network Reliability Functions of Binary-State Networks

机译:二元网络符号网络可靠性函数的压缩人工神经网络

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摘要

Network reliability is an important index to the provision of useful information for decision support in the modern world. There is always a need to calculate symbolic network reliability functions (SNRFs) due to dynamic and rapid changes in network parameters. In this brief, the proposed squeezed artificial neural network (SqANN) approach uses the Monte Carlo simulation to estimate the corresponding reliability of a given designed matrix from the Box-Behnken design, and then the Taguchi method is implemented to find the appropriate number of neurons and activation functions of the hidden layer and the output layer in ANN to evaluate SNRFs. According to the experimental results of the benchmark networks, the comparison appears to support the superiority of the proposed SqANN method over the traditional ANN-based approach with at least 16.6% improvement in the median absolute deviation in the cost of extra 2 s on average for all experiments.
机译:网络可靠性是为现代世界中的决策支持提供有用信息的重要指标。由于网络参数的动态和快速变化,始终需要计算符号网络可靠性函数(SNRF)。在本文中,所提出的压缩人工神经网络(SqANN)方法使用蒙特卡罗模拟从Box-Behnken设计中估算给定设计矩阵的相应可靠性,然后实施Taguchi方法以找到合适数量的神经元以及ANN中隐藏层和输出层的激活函数以评估SNRF。根据基准网络的实验结果,该比较似乎证明了所建议的SqANN方法优于传统的基于ANN的方法,并且平均中位数绝对偏差至少提高了16.6%,平均额外成本为2 s。所有实验。

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