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The superior fault tolerance of artificial neural network training with a faultoise injection-based genetic algorithm

机译:基于故障/噪声注入的遗传算法的人工神经网络训练的卓越容错能力

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摘要

Artificial neural networks (ANNs) are powerful computational tools that are designed to replicate the human brain and adopted to solve a variety of problems in many different fields. Fault tolerance (FT), an important property of ANNs, ensures their reliability when significant portions of a network are lost. In this paper, a faultoise injection-based (FIB) genetic algorithm (GA) is proposed to construct fault-tolerant ANNs. The FT performance of an FIB-GA was compared with that of a common genetic algorithm, the back-propagation algorithm, and the modification of weights algorithm. The FIB-GA showed a slower fitting speed when solving the exclusive OR (XOR) problem and the overlapping classification problem, but it significantly reduced the errors in cases of single or multiple faults in ANN weights or nodes. Further analysis revealed that the fit weights showed no correlation with the fitting errors in the ANNs constructed with the FIB-GA, suggesting a relatively even distribution of the various fitting parameters. In contrast, the output weights in the training of ANNs implemented with the use the other three algorithms demonstrated a positive correlation with the errors. Our findings therefore indicate that a combination of the faultoise injection-based method and a GA is capable of introducing FT to ANNs and imply that the distributed ANNs demonstrate superior FT performance.Electronic supplementary materialThe online version of this article (doi:10.1007/s13238-016-0302-5) contains supplementary material, which is available to authorized users.
机译:人工神经网络(ANN)是强大的计算工具,旨在复制人类的大脑,并用于解决许多不同领域的各种问题。容错(FT)是ANN的重要属性,可在丢失网络的重要部分时确保其可靠性。本文提出了一种基于故障/噪声注入的遗传算法(GA)来构造容错的人工神经网络。将FIB-GA的FT性能与常见的遗传算法,反向传播算法和权重修改算法进行了比较。 FIB-GA在解决异或(XOR)问题和重叠分类问题时显示出较慢的拟合速度,但在ANN权重或节点出现单个或多个故障的情况下,它可以显着减少错误。进一步的分析表明,拟合权重显示与FIB-GA构建的ANN中的拟合误差没有相关性,表明各种拟合参数的分布相对均匀。相反,在使用其他三种算法实现的人工神经网络训练中,输出权重与误差呈正相关。因此,我们的发现表明,基于故障/噪声注入的方法和GA的组合能够将FT引入ANN,这意味着分布式ANN表现出优异的FT性能。电子补充材料本文的在线版本(doi:10.1007 / s13238-016-0302-5)包含补充材料,授权用户可以使用。

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