For purposes such as rate setting and long-term capacity planning, electrical utility companies are interested in dividing their customers into homogeneous groups or clusters in terms of the customers' electricity demand profiles. Such demand profiles are typically represented by load series, long time series of daily or even hourly rates of energy consumption of individual customers. The high dimension and time series nature inherent in the load series render existing methods of clustering analysis ineffective. To handle the high dimension and to take advantage of the time-series nature of load series, we introduce a class of mixture models for time series, the random effects mixture models, which are particularly useful for clustering the...
The classification of electrical load profiles has become increasingly important as a driver for dis...
Mixture model-based clustering, usually applied to multidimensional data, has become a popular appro...
The rapid increase of electric vehicles (EVs) has a large impact on distribution networks in residen...
Clustering of electricity customers supports effective market segmentation and management. The liter...
Detailed large-scale simulations require a lot of data. Residential electrical load profiles are wel...
Clustering analysis of daily load profiles represents an effective technique to classify and aggrega...
This work positions the task of grouping electricity load time series among the vast field of cluste...
Challenged by new problems ranging from new renewable production methods to novel sources of loads, ...
Clustering analysis of daily load profiles represents an effective technique to classify and aggrega...
Advanced metering infrastructures such as smart metering have begun to attract increasing attention;...
Online Edition: ISSN 0948-6968. Funding Agency Grant Number XJTLU Key Programme Special Fund, AI Uni...
This paper presents a new method for forecasting a load of individual electricity consumers using sm...
Clustering methods are increasingly being applied to residential smart meter data, which provides a ...
Accurate information about the actual behavior of electricity users is essential to the electricity ...
In the current structure of the electricity business, distribution and supply services have been unb...
The classification of electrical load profiles has become increasingly important as a driver for dis...
Mixture model-based clustering, usually applied to multidimensional data, has become a popular appro...
The rapid increase of electric vehicles (EVs) has a large impact on distribution networks in residen...
Clustering of electricity customers supports effective market segmentation and management. The liter...
Detailed large-scale simulations require a lot of data. Residential electrical load profiles are wel...
Clustering analysis of daily load profiles represents an effective technique to classify and aggrega...
This work positions the task of grouping electricity load time series among the vast field of cluste...
Challenged by new problems ranging from new renewable production methods to novel sources of loads, ...
Clustering analysis of daily load profiles represents an effective technique to classify and aggrega...
Advanced metering infrastructures such as smart metering have begun to attract increasing attention;...
Online Edition: ISSN 0948-6968. Funding Agency Grant Number XJTLU Key Programme Special Fund, AI Uni...
This paper presents a new method for forecasting a load of individual electricity consumers using sm...
Clustering methods are increasingly being applied to residential smart meter data, which provides a ...
Accurate information about the actual behavior of electricity users is essential to the electricity ...
In the current structure of the electricity business, distribution and supply services have been unb...
The classification of electrical load profiles has become increasingly important as a driver for dis...
Mixture model-based clustering, usually applied to multidimensional data, has become a popular appro...
The rapid increase of electric vehicles (EVs) has a large impact on distribution networks in residen...