Paper
11 March 2022 Research on analysis of power and water consumption data for group tenant identification based on federated learning
Jian Ma, Jian Zheng, Yifan Yang, Chunting Kang, Yuxin Wang, Yang Wang, Yutong Li
Author Affiliations +
Proceedings Volume 12160, International Conference on Computational Modeling, Simulation, and Data Analysis (CMSDA 2021); 121602C (2022) https://doi.org/10.1117/12.2627667
Event: International Conference on Computational Modeling, Simulation, and Data Analysis (CMSDA 2021), 2021, Sanya, China
Abstract
The protection of user privacy is more and more important, which restricts the effective application of traditional methods in some fields. Federated learning is an effective method to solve such problems. The vertical federated learning method can be effectively applied to the joint analysis of multiple energy data. This paper discusses the application of this method in identifying group tenants in the research of urban energy big data, proposes an address based data matching method and corresponding coding rules, and implements an example based on SecureBoost. The results show that vertical federated learning has a good effect in the joint modeling of electricity and water data.
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Jian Ma, Jian Zheng, Yifan Yang, Chunting Kang, Yuxin Wang, Yang Wang, and Yutong Li "Research on analysis of power and water consumption data for group tenant identification based on federated learning", Proc. SPIE 12160, International Conference on Computational Modeling, Simulation, and Data Analysis (CMSDA 2021), 121602C (11 March 2022); https://doi.org/10.1117/12.2627667
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KEYWORDS
Data modeling

Analytical research

Computer security

Artificial intelligence

Network architectures

Network security

Statistical analysis

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