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Power communication digital flow prediction method based on VMD-LSTM-SVM model
by
Zhang, Qian
, Wang, Kai
, Yang, Dandan
, Zhang, Xu
, Hao, Meiwei
in
Communications traffic
/ Physics
/ Power flow
/ Traffic congestion
2023
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Power communication digital flow prediction method based on VMD-LSTM-SVM model
by
Zhang, Qian
, Wang, Kai
, Yang, Dandan
, Zhang, Xu
, Hao, Meiwei
in
Communications traffic
/ Physics
/ Power flow
/ Traffic congestion
2023
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Power communication digital flow prediction method based on VMD-LSTM-SVM model
Journal Article
Power communication digital flow prediction method based on VMD-LSTM-SVM model
2023
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Overview
Under the current trend of abundant information on power business, large data concentration, and large flow explosion, aiming at the randomness, volatility, and uncertainty of massive flow of electric power communication network, a digital power flow prediction method based on VMD-LSTM-SVM model is proposed. The interaction between the values of each traffic index before and after time is considered. LSTM is used to process traffic data and make an accurate prediction of future traffic. The power communication network can make dispatch responses to possible communication congestion by using link resources according to traffic prediction results and ensuring the transmission quality of power service data.
Publisher
IOP Publishing
Subject
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