Title :
Condition-based maintenance of transformers based on L1 regularization
Author :
Zhao Yu ; Jing WengFeng ; Peng ZhiMing ; Li NaiCheng
Author_Institution :
XJTU-Merit Res. Center of Data Min., Xi´an Jiaotong Univ., Xi´an, China
Abstract :
Power transformer is one of the major power supply equipments in the electric power system, whose reliability is directly related to the safe running of power system. So, condition-based maintenance of transformers is very important. Recently, some data mining techniques such as C4.5 decision tree, artificial neural network and SVM have been employed to assist condition- based maintenance tasks for transformers. But the models obtained have no good enough prediction accuracy and satisfactory sparsity. We establish L1 regularization classification model and propose an improved gradient boosting algorithm based on a cost-sensitive loss function to solve the problem. The numerical results of a real data show that the prediction accuracy of the L1 regularization model is high enough. Furthermore, the solutions are sparse and easy to be interpreted.
Keywords :
data mining; gradient methods; load forecasting; maintenance engineering; neural nets; power apparatus; power engineering computing; power supplies to apparatus; power system reliability; power transformers; support vector machines; C4.5 decision tree; L1 regularization classification model; SVM; artificial neural network; cost-sensitive loss function; data mining technique; electric power system reliability; gradient boosting algorithm; power supply equipment; power transformer condition-based maintenance; prediction accuracy; satisfactory sparsity; Accuracy; Boosting; Discharges; Heating; Power transformers; Testing; L1 regularization; condition-based maintenance; power transformer;
Conference_Titel :
Advanced Power System Automation and Protection (APAP), 2011 International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4244-9622-8
DOI :
10.1109/APAP.2011.6180737