In this paper, we perform a cluster analysis using smart meter electricity demand data from 656 households in Switzerland, collected during one year. First, we present the silhouette analysis to determine the optimum number of clusters for a k-means clustering approach. Secondly, we try different distance functions used in the k-means clustering to partition the samples into different categories. We find that the choice of distance function has no effect on the clustering performance. Finally, we investigate the "dimensionality curse" and find that low dimensions should be preferred to increase the quality of the clustering outcome
A clustering module based on the k-means cluster analysis method was developed. Smart meter based re...
A clustering module based on the k-means cluster analysis method was developed. Smart meter based re...
Advanced metering infrastructures such as smart metering have begun to attract increasing attention;...
Electricity smart meter consumption data is enabling utilities to analyze consumption information at...
As the amount of collected and analysed data for electricity usage from buildings is increasing it b...
Cluster analysis is increasingly applied to smart meter electricity demand data to identify patterns...
As the amount of collected and analysed data for electricity usage from buildings is increasing it b...
Electricity usage patterns are important for suppliers in order to ensure efficient electricity dist...
Various clustering methods have been applied to determine representative groups of buildings based o...
Various clustering methods have been applied to determine representative groups of buildings based o...
Various clustering methods have been applied to determine representative groups of buildings based o...
Various clustering methods have been applied to determine representative groups of buildings based o...
Various clustering methods have been applied to determine representative groups of buildings based o...
The availability of increasing amounts of data to electricity utilities through the implementation o...
A clustering module based on the k-means cluster analysis method was developed. Smart meter based re...
A clustering module based on the k-means cluster analysis method was developed. Smart meter based re...
A clustering module based on the k-means cluster analysis method was developed. Smart meter based re...
Advanced metering infrastructures such as smart metering have begun to attract increasing attention;...
Electricity smart meter consumption data is enabling utilities to analyze consumption information at...
As the amount of collected and analysed data for electricity usage from buildings is increasing it b...
Cluster analysis is increasingly applied to smart meter electricity demand data to identify patterns...
As the amount of collected and analysed data for electricity usage from buildings is increasing it b...
Electricity usage patterns are important for suppliers in order to ensure efficient electricity dist...
Various clustering methods have been applied to determine representative groups of buildings based o...
Various clustering methods have been applied to determine representative groups of buildings based o...
Various clustering methods have been applied to determine representative groups of buildings based o...
Various clustering methods have been applied to determine representative groups of buildings based o...
Various clustering methods have been applied to determine representative groups of buildings based o...
The availability of increasing amounts of data to electricity utilities through the implementation o...
A clustering module based on the k-means cluster analysis method was developed. Smart meter based re...
A clustering module based on the k-means cluster analysis method was developed. Smart meter based re...
A clustering module based on the k-means cluster analysis method was developed. Smart meter based re...
Advanced metering infrastructures such as smart metering have begun to attract increasing attention;...