基于改进半监督诊断算法的生成式Adss故障诊断模型研究

Yi Qian
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引用次数: 1

摘要

随着大数据时代的到来和深度学习等技术的飞速发展,人们可以利用复杂的神经网络模型,在强大的计算能力的支持下,对海量数据中的关键信息进行挖掘和提取。但是,这也增加了异构网络的复杂性,大大增加了网络维护和管理的难度。为了解决网络故障诊断问题,本文首先提出了一种改进的半监督逆网络故障诊断算法;该算法有效地保证了生成对网络模型的收敛性,充分利用了大量无故障标签数据,获得了较好的故障诊断精度。然后,进一步优化诊断模型,由卷积神经网络完成故障分类任务,简化网络的判别函数,生成对网络只负责生成故障样本。仿真结果还表明,基于网络生成和卷积神经网络的故障诊断算法取得了较好的故障诊断精度,节省了人工标记大量数据样本的开销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Fault Diagnosis Model of Generative Adss Based on Improved Semisupervised Diagnosis Algorithm
With the advent of the era of big data and the rapid development of deep learning and other technologies, people can use complex neural network models to mine and extract key information in massive data with the support of powerful computing power. However, it also increases the complexity of heterogeneous network and greatly increases the difficulty of network maintenance and management. In order to solve the problem of network fault diagnosis, this paper first proposes an improved semisupervised inverse network fault diagnosis algorithm; the proposed algorithm effectively guarantees the convergence of generated against network model, makes full use of a large amount of trouble-free tag data, and obtains a good accuracy of fault diagnosis. Then, the diagnosis model is further optimized and the fault classification task is completed by the convolutional neural network, the discriminant function of the network is simplified, and the generation pair network is only responsible for generating fault samples. The simulation results also show that the fault diagnosis algorithm based on network generation and convolutional neural network achieves good fault diagnosis accuracy and saves the overhead of manually labeling a large number of data samples.
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