基于拉曼光谱散射特征的油纸绝缘分类研究

Ruyue Zhang, Weigen Chen, Ruimin Song, Zhixian Yin
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引用次数: 0

摘要

拉曼光谱检测技术在包括电绝缘材料在内的材料成分检测领域得到了迅速发展。本文选取3种矿物绝缘油与绝缘纸组成3个实验对照组。按照规定的老化时间对老化油进行取样,采集拉曼光谱,每组分别建立数据集。在此基础上,提出了一种基于小波散射网络和核支持向量机实现不同老化阶段识别的诊断模型。结果表明,分类精度均在90%以上,验证了该模型对拉曼光谱变换后的散射特征进行了有效分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Study on Oil-paper Insulation Classification with Scattering Features of Raman spectrum
Raman spectroscopy detecting technique rapidly develops in the field of material composition detection, including electrical insulation materials. In this paper, three kinds of mineral insulating oil are selected to form three experimental control groups with insulating paper. Take samples of aging oil according to specified aging time to collect Raman spectrums, establishing a data set for each group, respectively. In addition, a new diagnostic model is introduced, which consists of wavelet scattering network and kernel SVM fulfilling recognition of different aging stages. It shows that all classification accuracy results are above 90%, where validates that scattering features transformed from Raman spectrums are effectively classified by proposed model.
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