Fed-NILM: A Federated Learning-based Non-Intrusive Load Monitoring Method for Privacy-Protection
Non-intrusive load monitoring (NILM) is essential for understanding customer's power consumption patterns and may find wide applications like carbon emission reduction and energy conservation. The training of NILM models requires massive load data containing different types of appliances. Howev...
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Zusammenfassung: | Non-intrusive load monitoring (NILM) is essential for understanding
customer's power consumption patterns and may find wide applications like
carbon emission reduction and energy conservation. The training of NILM models
requires massive load data containing different types of appliances. However,
inadequate load data and the risk of power consumer privacy breaches may be
encountered by local data owners during the NILM model training. To prevent
such potential risks, a novel NILM method named Fed-NILM which is based on
Federated Learning (FL) is proposed in this paper. In Fed-NILM, local model
parameters instead of local load data are shared among multiple data owners.
The global model is obtained by weighted averaging the parameters. Experiments
based on two measured load datasets are conducted to explore the generalization
ability of Fed-NILM. Besides, a comparison of Fed-NILM with locally-trained
NILMs and the centrally-trained NILM is conducted. The experimental results
show that Fed-NILM has superior performance in scalability and convergence.
Fed-NILM outperforms locally-trained NILMs operated by local data owners and
approximates the centrally-trained NILM which is trained on the entire load
dataset without privacy protection. The proposed Fed-NILM significantly
improves the co-modeling capabilities of local data owners while protecting
power consumers' privacy. |
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DOI: | 10.48550/arxiv.2105.11085 |