FederatedNILM: A Distributed and Privacy-preserving Framework for
Non-intrusive Load Monitoring based on Federated Deep Learning
- URL: http://arxiv.org/abs/2108.03591v1
- Date: Sun, 8 Aug 2021 08:56:40 GMT
- Title: FederatedNILM: A Distributed and Privacy-preserving Framework for
Non-intrusive Load Monitoring based on Federated Deep Learning
- Authors: Shuang Dai, Fanlin Meng, Qian Wang, Xizhong Chen
- Abstract summary: This paper develops a distributed and privacy-preserving federated deep learning framework for NILM (FederatedNILM)
FederatedNILM combines federated learning with a state-of-the-art deep learning architecture to conduct NILM for the classification of typical states of household appliances.
- Score: 8.230120882304723
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Non-intrusive load monitoring (NILM), which usually utilizes machine learning
methods and is effective in disaggregating smart meter readings from the
household-level into appliance-level consumptions, can help to analyze
electricity consumption behaviours of users and enable practical smart energy
and smart grid applications. However, smart meters are privately owned and
distributed, which make real-world applications of NILM challenging. To this
end, this paper develops a distributed and privacy-preserving federated deep
learning framework for NILM (FederatedNILM), which combines federated learning
with a state-of-the-art deep learning architecture to conduct NILM for the
classification of typical states of household appliances. Through extensive
comparative experiments, the effectiveness of the proposed FederatedNILM
framework is demonstrated.
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