2022
DOI: 10.1049/cmu2.12519
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MLfus: A real‐time forecasting architecture for low communication costs in electricity IoT based on ensemble learning

Abstract: With the application and popularity of Internet of Things (IoT) technology, real-time prediction of time series data has become the focus of electricity IoT data governance. At present, most of the time-series data prediction methods for the electricity IoT have the defect of being unable to process-related information between sequences. What's worse, the mainstream data fusion methods all have the problem of limited data dimension. This paper proposes a decision-level fusion architecture MLfus for multi-sourc… Show more

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