1. Gaussian Process Regression for Quantitative DP Analysis of Oil-paper Insulation by NIRS Detection
- Author
-
Chen Wang, Han Li, Guan-Jun Zhang, Wen-Bo Zhang, and Yuan Li
- Subjects
Training set ,Computer science ,Electrical insulation paper ,law.invention ,symbols.namesake ,law ,Kriging ,Ground-penetrating radar ,symbols ,Statistical analysis ,Transformer ,Gaussian process ,Algorithm ,Reliability (statistics) - Abstract
Oil-paper insulation is the key insulation structure of the transformers, whose aging condition is closely related to the operations of the equipment. The degree of polymerization (DP) is the direct parameter characterizing the aging condition of oil-paper insulation. Recently, the near infrared spectroscopy (NIRS) measurement powered by quantitative analysis is used to evaluate DP of the insulating papers mainly. While the applications of NIRS for DP evaluation is constrained because the present spectral quantitative analysis method is not accurate and stable enough, especially for onsite tests. In this paper, we propose a Gaussian process regression (GPR) method to predict DP of the oil- paper insulation in laboratory as well as in field. Firstly, the basic principles of GPR algorithm are illustrated. A GPR model for DP prediction is established based on the spectra of differently aged insulating paper samples which are prepared in laboratory. The GPR model show a high prediction accuracy both for training set and testing set. The established GPR model is finally applied on the DP prediction of insulating papers originating from a de-tanked transformer. The accurate predicted DP and the reliable aging assessment results indicate that the established model can be implemented on site.
- Published
- 2021