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Scientific Article details

Title Big Data Anomaly Prediction Algorithm of Smart City Power Internet of Things Based on Parallel Random Forest
ID_Doc 42289
Authors Zheng, SD; Cheng, J; Xiong, HZ; Wang, YJ; Wang, YN
Title Big Data Anomaly Prediction Algorithm of Smart City Power Internet of Things Based on Parallel Random Forest
Year 2024
Published Journal Of Testing And Evaluation, 52, 3
DOI 10.1520/JTE20220676
Abstract Conventional power data prediction algorithms easily lead to the loss of key power data in a complex wireless network environment. Therefore, a power big data anomaly prediction algorithm based on parallel random forest is proposed. According to the power big data anomaly prediction algorithm based on parallel random forest, a network power big data anomaly prediction algorithm platform is established, and based on the platform, key data features such as user address and power transmission packet structure are extracted according to the category of power users. According to the relationship between power shunt function value and power data unit density, the parameter value of the system and finally the reasonable anomaly prediction of power big data in wireless network are determined. Finally, filter the classified data through attribute reduction and gene expression programming algorithm to obtain the data to be encrypted and complete the research on the anomaly prediction algorithm of power big data. Experimental results show that the proposed algorithm has better prediction performance and can ensure better data prediction effect.
Author Keywords parallel random forest; power big data; anomaly prediction algorithm; key data characteristics; attribute reduction
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:001181721600001
WoS Category Materials Science, Characterization & Testing
Research Area Materials Science
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