Affiliation:
1. Guangdong Electric Power Information Technology Co., Ltd., Guangdong, Guangzhou, 520000, China
Abstract
Substation equipment is an important part of the power grid, which undertakes the function of power transmission and conversion and directly affects the operation status of the whole substation and power system. When the substation equipment is in an abnormal working state, the temperature
will change. Therefore, the temperature information of the substation equipment is used as the judgment basis to complete the judgment of the working state of the equipment, which can realize the fault diagnosis of the substation equipment and ensure that the power system works in a safe and
reliable environment. In this paper, according to the characteristics of the transformer equipment shape stability, the invariant moment is used to extract the infrared image feature of the transformer equipment. The support vector machine is used to complete the classification and recognition
of the image. Hu invariant moments and Zernike invariant moments are used to extracting features respectively, and the results of feature extraction are used as training samples to train support vector machines for recognition. Using the Lazy Snapping algorithm to complete the infrared image
segmentation processing of substation equipment, the target region is extracted from the background completely, and the segmentation image information is completed. In the experimental test, through the test of the recognition model constructed by invariant moments, it is proved that the recognition
accuracy of Zernike invariant moments combined with support vector machine in this paper is higher, and the Lazy Snapping algorithm has obvious advantages in segmentation quality compared with other methods. Therefore, the method of intelligent identification and diagnosis of the thermal fault
of substation equipment studied in this paper has important practical significance for the establishment of an online diagnosis system.
Publisher
American Scientific Publishers
Subject
Electrical and Electronic Engineering,Electronic, Optical and Magnetic Materials
Reference30 articles.
1. Condition monitoring of electrical equipment using thermal image processing;Dutta,2016
2. Rule generation based on novel kernel intuitionistic fuzzy rough setmodel;Lin;IEEE Access,2018
3. A novel intui-tionistic fuzzy set generator with application to clustering;Kaushal,2018
4. Imagethresholding by maximizing the similarity degreebased on intuitionistic fuzzy sets;Lan;Quantitative Logic and Soft Computing, Hangzhou, China,2016
5. Edge detection of satellite image using fuzzy logic;Dhivya;Cluster Computing,2019