Back-filling Missing Data When Predicting Domestic Electricity Consumption From Smart Meter Data
This work helps consumers manage energy use and choose tariffs, but it is incremental as it applies existing methods to a specific data gap in smart meter analysis.
The study tackled the problem of estimating annual electricity bills from smart meter data with up to six months of missing data by developing a back-filling method, and identified five user consumption profiles to show that Time-of-Use tariffs are economically advantageous for most users, especially those with higher nighttime consumption.
This study uses data from domestic electricity smart meters to estimate annual electricity bills for a whole year. We develop a method for back-filling data smart meter for up to six missing months for users who have less than one year of smart meter data, ensuring reliable estimates of annual consumption. We identify five distinct electricity consumption user profiles for homes based on day, night, and peak usage patterns, highlighting the economic advantages of Time-of-Use (ToU) tariffs over fixed tariffs for most users, especially those with higher nighttime consumption. Ultimately, the results of this study empowers consumers to manage their energy use effectively and to make informed choices regarding electricity tariff plans.