Recognition of partial discharge of cable accessories based on convolutional neural network with small data set
ISSN: 0332-1649
Article publication date: 23 April 2020
Issue publication date: 20 May 2020
Abstract
Purpose
Considering the problem that the high recognition rate of deep learning requires the support of mass data, this study aims to propose an insulating fault identification method based on small data set convolutional neural network (CNN).
Design/methodology/approach
Because of the chaotic characteristics of partial discharge (PD) signals, the equivalent transformation of the PD signal of unit power frequency period is carried out by phase space reconstruction to derive the chaotic features. At the same time, geometric, fractal, entropy and time domain features are extracted to increase the volume of feature data. Finally, the combined features are constructed and imported into CNN to complete PD recognition.
Findings
The results of the case study show that the proposed method can realize the PD recognition of small data set and make up for the shortcomings of the methods based on CNN. Also, the 1-CNN built in this paper has better recognition performance for four typical insulation faults of cable accessories. The recognition performance is improved by 4.37% and 1.25%, respectively, compared with similar methods based on support vector machine and BPNN.
Originality/value
In this paper, a method of insulation fault recognition based on CNN with small data set is proposed, which can solve the difficulty to realize insulation fault recognition of cable accessories and deep data mining because of insufficient measure data.
Keywords
Citation
Zhang, A., He, J., Lin, Y., Li, Q., Yang, W. and Qu, G. (2020), "Recognition of partial discharge of cable accessories based on convolutional neural network with small data set", COMPEL - The international journal for computation and mathematics in electrical and electronic engineering, Vol. 39 No. 2, pp. 431-446. https://doi.org/10.1108/COMPEL-08-2019-0317
Publisher
:Emerald Publishing Limited
Copyright © 2020, Emerald Publishing Limited