Automatic Label Correction and Appliance Prioritization in Single Household Electricity DisaggregationOpen Website

2016 (modified: 02 Mar 2020)AAAI Workshop: AI for Smart Grids and Smart Buildings 2016Readers: Everyone
Abstract: Electricity disaggregation focuses on classification ofindividual appliances by monitoring aggregate electricalsignals. In this paper we present a novel algorithmto automatically correct labels, discard contaminatedtraining samples, and boost signal to noise ratio throughhigh frequency noise reduction. We also propose amethod for prioritized classification which classifies applianceswith the most intense signals first. When testedon four houses in Kaggles Belkin dataset, these methodsautomatically relabel over 77% of all training samplesand decrease error rate by an average of 45% in bothreal power and high frequency noise classification.
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