Litcius/Paper detail

Aging Assessment of Oil–Paper Insulation Based on Visional Recognition of the Dimensional Expanded Raman Spectra

Ruimin Song, Weigen Chen, Dingkun Yang, Haiyang Shi, Ruyue Zhang, Zewei Wang

2021IEEE Transactions on Instrumentation and Measurement49 citationsDOI

Abstract

Detecting insulation performance through testing the Raman spectroscopy of transformer oil is noninvasive and shows great promise in on-site diagnosis. The information, stored in spectra, that may reflect aging states of insulation aims to be effectively unfolded and provides decision support as well. In this article, a transformation method based on intrinsic product arithmetic is used to transform the 1-D Raman spectral data into 2-D image data. With the help of CNN based on the dimensionality expanding method, diagnosis of oil-paper insulation with different aging states based on the Raman spectroscopy was realized. The network-based oil-paper insulation aging diagnosis model has an accuracy of 95% in ten aging categories of 60 test samples and 100% in four aging categories. The result shows the trained CNN was able to identify the differences of transformer oil samples at each aging stage through visualized Raman spectral image. This method provides a more accurate determination method for diagnosing oil-immersed transformers' aging conditions; it also develops an available method for a more detailed evaluation of insulation aging levels.

Topics & Concepts

Raman spectroscopyAccelerated agingTransformerTransformer oilCurse of dimensionalityMaterials scienceNondestructive testingArtificial intelligenceComputer scienceAcousticsReliability engineeringPattern recognition (psychology)Electrical engineeringComposite materialEngineeringOpticsVoltagePhysicsQuantum mechanicsSpectroscopy and Chemometric AnalysesCurrency Recognition and DetectionPower Transformer Diagnostics and Insulation