Investigating Underlying Drivers of Variability in Residential Energy Usage Patterns with Daily Load Shape Clustering of Smart Meter Data
Ling Jin, C. Anna Spurlock, Sam Borgeson, Alina Lazar, Daniel Fredman,, Annika Todd, Alexander Sim, Kesheng Wu

TL;DR
This study analyzes residential energy usage variability using daily load shape clustering of smart meter data, highlighting temperature as a key driver and implications for demand-response strategies.
Contribution
It introduces an improved adaptive K-means clustering method to profile household load patterns and systematically evaluates external and internal factors influencing consumption variability.
Findings
Outdoor temperature is the primary external driver of load shape variability.
Top three consumption patterns account for about 50% of usage on hot days.
Household responsiveness to temperature explains load shape variability.
Abstract
Residential customers have traditionally not been treated as individual entities due to the high volatility in residential consumption patterns as well as a historic focus on aggregated loads from the utility and system feeder perspective. Large-scale deployment of smart meters has motivated increasing studies to explore disaggregated daily load patterns, which can reveal important heterogeneity across different time scales, weather conditions, as well as within and across individual households. This paper aims to shed light on the mechanisms by which electricity consumption patterns exhibit variability and the different constraints that may affect demand-response (DR) flexibility. We systematically evaluate the relationship between daily time-of-use patterns and their variability to external and internal influencing factors, including time scales of interest, meteorological conditions,…
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Taxonomy
TopicsSmart Grid Energy Management · Energy Load and Power Forecasting · Building Energy and Comfort Optimization
Methodsk-Means Clustering
