A study of power distribution system fault classification with machine learning techniques

Author(s):  
Nicholas S. Coleman ◽  
Christian Schegan ◽  
Karen N. Miu
Energies ◽  
2019 ◽  
Vol 12 (23) ◽  
pp. 4509
Author(s):  
Miguel Carpintero-Rentería ◽  
David Santos-Martín ◽  
Mónica Chinchilla ◽  
David Rebollal

A microgrid (MG) is an electric power distribution system that may provide a suitable ecosystem for distributed generation. Detailed information about the infrastructure layer in MG projects is available, so this study aimed to propose a compendium and a model creation guideline for MGs. The aggregated information based on 1618 MGs was summarized into different tables and analyzed based on various parameters. Two MG infrastructure model creation tools were developed. First, a simple guideline was created based on the information in the tables, and then a machine learning tool based on decision trees was proposed that generates more accurate MG models using two main inputs: latitude and the segment in which they operate.


2019 ◽  
Vol 255 ◽  
pp. 05001
Author(s):  
Cui Hao ◽  
Wang Kesheng ◽  
Li Yu ◽  
Yang Binyuan ◽  
miao Qiang

The amount of data is of crucial to the accuracy of fault classification through machine learning techniques. In wind energy harvest industry, due to the shortage of faulty data obtained in real practice, together with ever changing operational conditions, fault detection and evaluation of wind turbine blade problems become intractable through conventional machine learning methods. In this paper, a modified unsupervised learning method, namely a convolutional auto-encoder based data enlargement strategy (ABE) is proposed for wind turbine blade fault classification. Limited simulation results for different levels of wind turbine icy blades are used for investigation. First, convolutional auto encoder is used to increase the amount of the data. Then, decision tree based xgboost tool, as an example, is used to demonstrate the effectiveness of data enlargement strategy for fault classification. The study shows that the proposed data enlargement strategy is an effective method to improve the fault classification accuracy through machine learning techniques.


Author(s):  
K. Moloi ◽  
M. Ntombela ◽  
Thapelo. C. Mosetlhe ◽  
Temitope. R. Ayodele ◽  
Adedayo. A. Yusuff

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