最小结构ART神经网络及燃气轮机故障诊断应用

Qingyang Xu
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引用次数: 2

摘要

自适应共振理论(ART)模型是一种基于无监督学习的模拟人类认知过程的特殊神经网络。但是,ART1只能用于二进制输入,而ART2则可以用于结构复杂、计算复杂的二进制矢量和模拟矢量。为了提高网络的实时性,提出了一种结合自底向上和自顶向下两种模型优点的最小结构ART。采用向量相似性测试代替警觉性测试。因此,该算法具有像ART1一样简单的结构和像ART2一样好的性能,既可以用于二值分类,也可以用于模拟向量分类,并且具有很高的效率。最后,通过燃气轮机故障诊断实验验证了该网络的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Minimal Structural ART Neural Network and Fault Diagnosis Application of Gas Turbine
Adaptive Resonance Theory (ART) model is a special neural network based on unsupervised learning which simulates the cognitive process of human. However, ART1 can be only used for binary input, and ART2 can be used for binary and analog vectors which have complex structures and complicated calculations. In order to improve the real-time performance of the network, a minimal structural ART is proposed which combines the merits of the two models by subsuming the bottom-up and top-down weight. The vector similarity test is used instead of vigilance test. Therefore, this algorithm has a simple structure like ART1 and good performance as ART2 which can be used for both binary and analog vector classification, and it has a high efficiency. Finally, a gas turbine fault diagnosis experiment exhibits the validity of the new network.
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