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Gearbox fault detection using neural networkjs technology

机译:使用神经网络JS技术进行齿轮箱故障检测

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摘要

This paper describes the application of neural networks to gearbox fault diagnosis. In order to increase learning speed of BP network, a modified learningalgorithm was presented. Considering of the difficulty of choosing neural networks' architecture, genetic algorithm was employed. The discussion of the efefct of hidden layer nodes shows that with the increase of the number of nodes, the learning speed increase also yet result in poor generalization abiliyt. The test of fault tolernance ability tells that neural networks have 'bench type' tolerance ability. This ensures that when signals were contaminated by noise or feature extraction methods were not effective, the result can still be acceptable.
机译:本文介绍了神经网络在变速箱故障诊断中的应用。为了提高BP网络的学习速度,提出了一种改进的学习算法。考虑到选择神经网络架构的困难,采用了遗传算法。对隐层节点的有效性的讨论表明,随着节点数量的增加,学习速度的提高也导致泛化能力差。容错能力的测试表明,神经网络具有“基准类型”容错能力。这样可以确保当信号被噪声污染或特征提取方法无效时,结果仍然可以接受。

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