Multiple households energy consumption forecasting using consistent modeling with privacy preservation

Journal Publication ResearchOnline@JCU
Yang, Fan;Yan, Ke;Jin, Ning;Du, Yang
Abstract

Traditional data-driven energy consumption forecasting models, including machine learning and deep learning methods, showed outstanding performance in terms of forecasting accuracy and efficiency. The superior performances are based on enough training data samples. Moreover, the derived forecasting model is only applicable to the training dataset and usually is applied to specific household. In real-world smart city development, a centralized forecasting model is required to model and forecasting energy consumption patterns for multiple households, whereas the traditional data-driven forecasting approaches may become invalid. A consistent model is demanded in this scenario modeling multiple households’ energy consumption patterns. Additionally, privacy issues are also highly concerned in such scenarios. Accurate energy consumption forecasting with privacy preservations becomes a key point for the state-of-art research. In this study, we adopt an innovative privacy-preserving structure that combines deep learning and federated learning. Under the premise of guaranteeing forecasting accuracy and privacy preservation, this structure can achieve the forecasting of various household energy consumption with a consistent model that simultaneously forecast multiple household energy consumption data by transmission control protocol.

Journal

Advanced Engineering Informatics

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Volume

55

ISBN/ISSN

1873-5320

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Pages Count

10

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Publisher

Elsevier

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EISSN

N/A

DOI

10.1016/j.aei.2022.101846