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Smart Substation Network Fault Classification Based on a Hybrid Optimization Algorithm

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Języki publikacji
EN
Abstrakty
EN
Accurate network fault diagnosis in smart substations is key to strengthening grid security. To solve fault classification problems and enhance classification accuracy, we propose a hybrid optimization algorithm consisting of three parts: anti-noise processing (ANP), an improved separation interval method (ISIM), and a genetic algorithm-particle swarm optimization (GA-PSO) method. ANP cleans out the outliers and noise in the dataset. ISIM uses a support vector machine (SVM) architecture to optimize SVM kernel parameters. Finally, we propose the GA-PSO algorithm, which combines the advantages of both genetic and particle swarm optimization algorithms to optimize the penalty parameter. The experimental results show that our proposed hybrid optimization algorithm enhances the classification accuracy of smart substation network faults and shows stronger performance compared with existing methods.
Twórcy
autor
  • Department of Information Technology, Wenzhou Vocational & Technical College, also with College of Computer Information Technology, Wuhan Institute of Shipbuilding Technology
autor
  • Department of Information Technology, Wenzhou Vocational & Technical College
autor
  • School of Computer Science, Wuhan University
Bibliografia
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Uwagi
This work was supported by the scientific research project of Zhejiang Provincial Department of Education (project number: Y201738745), the National Natural Science Foundation of China (project number: 61772386).
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-02bacc68-a5de-44f4-bfbe-c613ba9f7bb1
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