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Training Load Monitoring Algorithms on Highly Sub-Metered Home Electricity Consumption Data

Mario BergesEthan GoldmanH. Scott MatthewsLucio Soibelman( )
Civil and Environmental Engineering Department, Carnegie Mellon University, Pittsburgh, PA 15213, USA
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Abstract

The growing interest in energy-efficient buildings is driving changes in investment, design, and occupant behavior. To better focus cost and resource conservation efforts, electricity consumption feedback can be used to provide motivation, guidance, and verification. Disaggregating by end-use helps both consumers and producers to identify targets for conservation. While hardware-based sub-metering is costly and labor-intensive, non-intrusive load monitoring (NILM) is capable of gathering detailed energy-use data with minimal equipment cost and installation time. However, variations in measurements between metering devices complicate the process of compiling the necessary appliance profiles. Future work involves the development of NILM algorithms using sensor fusion and detailed appliance-level data gathered from a highly-sensed house currently being constructed near Pittsburgh, Pennsylvania.

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Tsinghua Science and Technology
Pages 406-411

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Cite this article:
Berges M, Goldman E, Matthews HS, et al. Training Load Monitoring Algorithms on Highly Sub-Metered Home Electricity Consumption Data. Tsinghua Science and Technology, 2008, 13(S1): 406-411. https://doi.org/10.1016/S1007-0214(08)70182-2

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Received: 30 May 2008
Published: 15 July 2026
© Tsinghua University Press 2008