LAPSE:2023.17640
Published Article
LAPSE:2023.17640
Power Profile and Thresholding Assisted Multi-Label NILM Classification
March 6, 2023
Abstract
Next-generation power systems aim at optimizing the energy consumption of household appliances by utilising computationally intelligent techniques, referred to as load monitoring. Non-intrusive load monitoring (NILM) is considered to be one of the most cost-effective methods for load classification. The objective is to segregate the energy consumption of individual appliances from their aggregated energy consumption. The extracted energy consumption of individual devices can then be used to achieve demand-side management and energy saving through optimal load management strategies. Machine learning (ML) has been popularly used to solve many complex problems including NILM. With the availability of the energy consumption datasets, various ML algorithms have been effectively trained and tested. However, most of the current methodologies for NILM employ neural networks only for a limited operational output level of appliances and their combinations (i.e., only for a small number of classes). On the contrary, this work depicts a more practical scenario where over a hundred different combinations were considered and labelled for the training and testing of various machine learning algorithms. Moreover, two novel concepts—i.e., thresholding/occurrence per million (OPM) along with power windowing—were utilised, which significantly improved the performance of the trained algorithms. All the trained algorithms were thoroughly evaluated using various performance parameters. The results shown demonstrate the effectiveness of thresholding and OPM concepts in classifying concurrently operating appliances using ML.
Keywords
computational complexity, demand side management, Energy Efficiency, Machine Learning, multiclassification, non-intrusive load monitoring (NILM), smart building energy management systems (SBEM)
Suggested Citation
Rehmani MAA, Aslam S, Tito SR, Soltic S, Nieuwoudt P, Pandey N, Ahmed MD. Power Profile and Thresholding Assisted Multi-Label NILM Classification. (2023). LAPSE:2023.17640
Author Affiliations
Rehmani MAA: Department of Mechanical and Electrical Engineering, SF&AT, Massey University, Auckland 0632, New Zealand; School of Professional Engineering, Manukau Institute of Technology, Auckland 2104, New Zealand [ORCID]
Aslam S: School of Professional Engineering, Manukau Institute of Technology, Auckland 2104, New Zealand [ORCID]
Tito SR: School of Professional Engineering, Manukau Institute of Technology, Auckland 2104, New Zealand [ORCID]
Soltic S: School of Professional Engineering, Manukau Institute of Technology, Auckland 2104, New Zealand
Nieuwoudt P: School of Professional Engineering, Manukau Institute of Technology, Auckland 2104, New Zealand [ORCID]
Pandey N: School of Professional Engineering, Manukau Institute of Technology, Auckland 2104, New Zealand [ORCID]
Ahmed MD: Research Office, Manukau Institute of Technology, Auckland 2104, New Zealand
Journal Name
Energies
Volume
14
Issue
22
First Page
7609
Year
2021
Publication Date
2021-11-14
ISSN
1996-1073
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Original Submission
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PII: en14227609, Publication Type: Journal Article
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LAPSE:2023.17640
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https://doi.org/10.3390/en14227609
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