A Hybrid Machine Learning Model for Electricity Consumer Categorization Using Smart Meter Data
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- van Zoest, Vera & El Gohary, Fouad & Ngai, Edith C.H. & Bartusch, Cajsa, 2021. "Demand charges and user flexibility – Exploring differences in electricity consumer types and load patterns within the Swedish commercial sector," Applied Energy, Elsevier, vol. 302(C).
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Keywords
smart meter data; electricity consumption behaviors; consumer categorization; clustering; classification;All these keywords.
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