Non-Intrusive Energy Disaggregation Using Non-negative Matrix Factorization with Sum-to-k Constraint
Alireza Rahimpour, Hairong Qi, David Fugate, Teja Kuruganti

TL;DR
This paper introduces a novel non-negative matrix factorization method with a sum-to-k constraint for energy disaggregation, effectively extracting device-level consumption from aggregated signals in smart homes and industrial settings.
Contribution
It proposes S2K-NMF, a new constrained matrix factorization approach that improves source separation in energy disaggregation tasks over existing methods.
Findings
S2K-NMF outperforms state-of-the-art algorithms in disaggregation accuracy.
Effective in residential and industrial energy monitoring scenarios.
Provides publicly available code and dataset for further research.
Abstract
Energy disaggregation or Non-Intrusive Load Monitoring (NILM) addresses the issue of extracting device-level energy consumption information by monitoring the aggregated signal at one single measurement point without installing meters on each individual device. Energy disaggregation can be formulated as a source separation problem where the aggregated signal is expressed as linear combination of basis vectors in a matrix factorization framework. In this paper, an approach based on Sum-to-k constrained Non-negative Matrix Factorization (S2K-NMF) is proposed. By imposing the sum-to-k constraint and the non-negative constraint, S2K-NMF is able to effectively extract perceptually meaningful sources from complex mixtures. The strength of the proposed algorithm is demonstrated through two sets of experiments: Energy disaggregation in a residential smart home, and HVAC components energy…
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See pages 1-12 of FINAL_DRAFT_ARX.pdf
