Identification of Power Quality Disturbances Considering New Energy Intake

Power quality can be one of the most important indicators for assessing the sensitivity of new energy intake. With the increasing access to renewable energy sources in the power system, the issue of power quality has become an important consideration. This paper proposes an identification method bas...

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Published in2023 3rd International Conference on New Energy and Power Engineering (ICNEPE) pp. 886 - 889
Main Authors Liu, Chang, Ji, Xiu, Meng, Xiangdong, Guo, Zhongqi
Format Conference Proceeding
LanguageEnglish
Published IEEE 24.11.2023
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Abstract Power quality can be one of the most important indicators for assessing the sensitivity of new energy intake. With the increasing access to renewable energy sources in the power system, the issue of power quality has become an important consideration. This paper proposes an identification method based on an integrated decision tree to identify and analyze the perturbations in power quality correctly. Firstly, real-time data of power quality compound disturbances are collected, and through preprocessing as well as feature extraction, we obtain a set of characteristic vectors. Then, utilizing the idea of integrated learning, an integrated model consisting of multiple decision trees is constructed. In the integrated model, each decision tree independently classifies the feature vectors, and the final classification results are obtained according to the voting mechanism. Finally, the effectiveness and accuracy of the method are verified through experiments, which can accurately identify and classify power quality compound disturbances with high identification accuracy and robustness. Therefore, applying the method in the power system has important practical significance.
AbstractList Power quality can be one of the most important indicators for assessing the sensitivity of new energy intake. With the increasing access to renewable energy sources in the power system, the issue of power quality has become an important consideration. This paper proposes an identification method based on an integrated decision tree to identify and analyze the perturbations in power quality correctly. Firstly, real-time data of power quality compound disturbances are collected, and through preprocessing as well as feature extraction, we obtain a set of characteristic vectors. Then, utilizing the idea of integrated learning, an integrated model consisting of multiple decision trees is constructed. In the integrated model, each decision tree independently classifies the feature vectors, and the final classification results are obtained according to the voting mechanism. Finally, the effectiveness and accuracy of the method are verified through experiments, which can accurately identify and classify power quality compound disturbances with high identification accuracy and robustness. Therefore, applying the method in the power system has important practical significance.
Author Meng, Xiangdong
Ji, Xiu
Guo, Zhongqi
Liu, Chang
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Snippet Power quality can be one of the most important indicators for assessing the sensitivity of new energy intake. With the increasing access to renewable energy...
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SubjectTerms Compounds
decision tree
Decision trees
Feature extraction
new energy
Optimization
Power quality
Power systems
Random forests
Title Identification of Power Quality Disturbances Considering New Energy Intake
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