[Oral Presentation]Study on Temperature Measurement of Power Equipment Based on Retinex Theory and Machine Learning

Study on Temperature Measurement of Power Equipment Based on Retinex Theory and Machine Learning
ID:64 Submission ID:12 View Protection:ATTENDEE Updated Time:2020-10-30 17:24:12 Hits:245 Oral Presentation

Start Time:2020-11-02 09:00 (Asia/Shanghai)

Duration:15min

Session:[E] Electrotechnical Theory and New Electromagnetic Technology » [E2] Session 15 and Session 20

Video No Permission Presentation File

Tips: The file permissions under this presentation are only for participants. You have not logged in yet and cannot view it temporarily.

Abstract
    Electric power equipment temperature is closely related with its working condition. The current mainstream infrared thermal imagers are expensive, complicated to operate and weak in spatial positioning. Infrared and visible image fusion has a promising application prospect in power system fault location, anomaly monitoring and so on. Visible light radiation temperature measurement has many application cases in the high temperature field. This paper puts forward a method based on image processing and machine learning, and successfully applies visible light temperature measurement technology to the low temperature field such as the temperature detection of power equipment. We used copper plates as the research object, and established a library of visible images under different temperature and light conditions. Four kinds of machine learning algorithms were used to build the temperature prediction model by extracting the gray distribution features from images. We select two algorithms which have good performance in time complexity and prediction accuracy. The average absolute error of predicting temperature is only about 1.5℃. We also have performed Retinex processing on all images to eliminate the interference of different lighting intensity on the grayscale features. After training and calculation, it was found that the average absolute error is reduced to 1.309℃ with the same algorithms, which has a better prediction accuracy.
Keywords
Visible images,machine learning,RGB gray level histograms,Retinex theory
Speaker
Yang He
Huazhong University of Science and Technology

Wenmao Li
Huazhong University of Science and Technology

Submission Author
Yang He Huazhong University of Science and Technology
Qizheng Ye Huazhong University of Science and Technology
Wenjiao Du Jiangmen Power Supply Bureau
Wenmao Li Huazhong University of Science and Technology
Comment submit
Verification code Change another
All comments
Log in Sign up Registration Submit