Proceedings of the 3rd ACM International Conference on Systems for Energy-Efficient Built Environments 2016
DOI: 10.1145/2993422.2993425
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Analyzing Energy Usage on a City-scale using Utility Smart Meters

Abstract: Understanding the energy usage of buildings is crucial for policymaking, energy planning, and achieving sustainable development. Unfortunately, instrumenting buildings to collect energy usage data is difficult and all publicly available datasets typically include only a few hundred homes within a region. Due to their relatively small size, these datasets provide limited insight and are insufficient for analyses that require a larger representation, such as an entire city or town. In recent years, utility compa… Show more

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Cited by 30 publications
(25 citation statements)
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“…This process further reduced the cluster library size to 39 clusters, and they were considered as the final clusters for the rest of the analysis. Although other common cluster validation indices (e.g., silhouette coefficient) can be used in the process of selecting the number of clusters, these generic metrics may not work as expected for this domain-specific problem [55] and lead to underestimation of the number of clusters.…”
Section: B Building Energy Characterizationmentioning
confidence: 99%
“…This process further reduced the cluster library size to 39 clusters, and they were considered as the final clusters for the rest of the analysis. Although other common cluster validation indices (e.g., silhouette coefficient) can be used in the process of selecting the number of clusters, these generic metrics may not work as expected for this domain-specific problem [55] and lead to underestimation of the number of clusters.…”
Section: B Building Energy Characterizationmentioning
confidence: 99%
“…While there are have been several research on forecasting demand [22], most approaches focus on predicting the aggregate grid demand, which is often smooth and predictable. However, transformer load sees higher variations depending on the number of homes the transformers feed electricity [17]. Further, any net-metered renewable sources such as rooftop solar or wind will increase the stochasticity in the observed demand.…”
Section: Load Forecasting Under Uncertaintymentioning
confidence: 99%
“…Previous work in classification of smart meter data focuses primarily the ability to predict demographics, appliance characteristics, and renewable energy integration potential from residential buildings [1,2,5]. Residential customer segmentation is a part of this effort [6].…”
Section: Related Workmentioning
confidence: 99%