The large amount of data collected by smart meters is a valuable resource that can be used to better understand consumer behavior and optimize electricity consumption in cities. This paper presents an unsupervised classification approach for extracting typical consumption patterns from data generated by smart electric meters. The proposed approach is based on a constrained Gaussian mixture model whose parameters vary according to the day type (weekday, Saturday or Sunday). The proposed methodology is applied to a real dataset of Irish households collected by smart meters over one year. For each cluster, the model provides three consumption profiles that depend on the day type. In the first instance, the model is applied on the electricity c...
Challenged by new problems ranging from new renewable production methods to novel sources of loads, ...
The availability of smart meter data allows defining innovative applications such as demand response...
The availability of smart meter data allows defining innovative applications such as demand response...
Abstract Smart meter stores electricity consumption data of every consumer in the smart grid system....
Clustering methods are increasingly being applied to residential smart meter data, which provides a ...
Clustering methods are increasingly being applied to residential smart meter data, which provides a ...
Electricity consumption is characterized not only by its total amount, but also its temporal course,...
The availability of increasing amounts of data to electricity utilities through the implementation o...
Electricity smart meter consumption data is enabling utilities to analyze consumption information at...
Time-series smart meter data can record precisely electricity consumption behaviors of every consume...
Abstract Under the digitalization trend in the energy sector, utilities are devoted to providing bet...
Cluster analysis is increasingly applied to smart meter electricity demand data to identify patterns...
The 2020 International Workshop on Advanced Analytics and Learning on Temporal Data (AALTD 2020),Ghe...
Rapid growth in smart meter installations has given rise to vast collections of data at a high time-...
Massive informations about individual (household, small and medium enterprise) consumption are now p...
Challenged by new problems ranging from new renewable production methods to novel sources of loads, ...
The availability of smart meter data allows defining innovative applications such as demand response...
The availability of smart meter data allows defining innovative applications such as demand response...
Abstract Smart meter stores electricity consumption data of every consumer in the smart grid system....
Clustering methods are increasingly being applied to residential smart meter data, which provides a ...
Clustering methods are increasingly being applied to residential smart meter data, which provides a ...
Electricity consumption is characterized not only by its total amount, but also its temporal course,...
The availability of increasing amounts of data to electricity utilities through the implementation o...
Electricity smart meter consumption data is enabling utilities to analyze consumption information at...
Time-series smart meter data can record precisely electricity consumption behaviors of every consume...
Abstract Under the digitalization trend in the energy sector, utilities are devoted to providing bet...
Cluster analysis is increasingly applied to smart meter electricity demand data to identify patterns...
The 2020 International Workshop on Advanced Analytics and Learning on Temporal Data (AALTD 2020),Ghe...
Rapid growth in smart meter installations has given rise to vast collections of data at a high time-...
Massive informations about individual (household, small and medium enterprise) consumption are now p...
Challenged by new problems ranging from new renewable production methods to novel sources of loads, ...
The availability of smart meter data allows defining innovative applications such as demand response...
The availability of smart meter data allows defining innovative applications such as demand response...