A Multi-Agent NILM Architecture for Event Detection and Load Classification

A multi-agent architecture for a Non-Intrusive Load Monitoring (NILM) solution is presented and evaluated. The underlying rationale for such an architecture is that each agent (load event detection, feature extraction, and classification) outperforms others of the same type in particular scenarios;...

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Veröffentlicht in:Energies (Basel) 2020-09, Vol.13 (17), p.4396
Hauptverfasser: Lazzaretti, André Eugenio, Renaux, Douglas Paulo Bertrand, Lima, Carlos Raimundo Erig, Mulinari, Bruna Machado, Ancelmo, Hellen Cristina, Oroski, Elder, Pöttker, Fabiana, Linhares, Robson Ribeiro, Nolasco, Lucas da Silva, Lima, Lucas Tokarski, Omori, Júlio Shigeaki, Santos, Rodrigo Braun dos
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Sprache:eng
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Zusammenfassung:A multi-agent architecture for a Non-Intrusive Load Monitoring (NILM) solution is presented and evaluated. The underlying rationale for such an architecture is that each agent (load event detection, feature extraction, and classification) outperforms others of the same type in particular scenarios; hence, by combining the expertise of these agents, the system presents an improved performance. Known NILM algorithms, as well as new algorithms, proposed by the authors, were individually evaluated and compared. The proposed architecture considers a NILM system composed of Load Monitoring Modules (LMM) that report to a Center of Operations, required in larger facilities. For the purposed of evaluating and comparing performance, five load event detect agents, five feature extraction agents, and five classification agents were studied so that the best combinations of agents could be implemented in LMMs. To evaluate the proposed system, the COOLL and the LIT-Dataset were used. Performance improvements were detected in all scenarios, with power-ON and power-OFF detection improving up to 13%, while classification accuracy improved up to 9.4%.
ISSN:1996-1073
1996-1073
DOI:10.3390/en13174396