Research Article
Fault Diagnosis Algorithm Based on Power Outage Data in Power Grid
@ARTICLE{10.4108/ew.4657, author={Haiyan Wang and Xinping Yuan and Shanfei Gao and Shoushan Gao}, title={Fault Diagnosis Algorithm Based on Power Outage Data in Power Grid}, journal={EAI Endorsed Transactions on Energy Web}, volume={10}, number={1}, publisher={EAI}, journal_a={EW}, year={2023}, month={12}, keywords={Power grid, Fault diagnosis, Support vector machines, Decision tree}, doi={10.4108/ew.4657} }
- Haiyan Wang
Xinping Yuan
Shanfei Gao
Shoushan Gao
Year: 2023
Fault Diagnosis Algorithm Based on Power Outage Data in Power Grid
EW
EAI
DOI: 10.4108/ew.4657
Abstract
INTRODUCTION: With the rapid development of the power industry, the power system has become more and more complex and prone to failures, which seriously impacts power supply and safety. OBJECTIVES: Development of efficient and accurate fault diagnosis algorithms for power systems. METHODS:Proposes a fault diagnosis algorithm based on outage data to construct an outage fault prediction model using accurate data. First, the outage data are collected, pre-processed, feature extracted and reduced to obtain a more efficient data set. Then, an optimized fault diagnosis algorithm is designed based on logit, support vector machine (SVM) and decision tree (DT) to improve the accuracy and efficiency of fault diagnosis. RESULTS: The method is applied to the natural power system, and the results show that the optimization algorithm outperforms the traditional methods. Specifically, the accuracy of the optimization algorithm can reach 100%, while the accuracy of the traditional logit algorithm and SVM algorithm is only 84% and 93%, which is a significant improvement in the model prediction performance. CONCLUSION: The author can significantly optimize the performance of its model and construct an outage data mining algorithm with a good predictive ability to achieve grid fault research and judgment, which has a specific application value in the practical field.
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