A method for evaluating options for motif detection in electricity meter data

11/16/2020
by   Ian Dent, et al.
0

Investigation of household electricity usage patterns, and matching the patterns to behaviours, is an important area of research given the centrality of such patterns in addressing the needs of the electricity industry. Additional knowledge of household behaviours will allow more effective targeting of demand side management (DSM) techniques.

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