This paper presents a new method for forecasting a load of individual electricity consumers using smart grid data and clustering. The data from all consumers are used for clustering to create more suitable training sets to forecasting methods. Before clustering, time series are efficiently preprocessed by normalisation and the computation of various model-based time series representation methods. Final centroid-based forecasts are scaled by saved normalisation parameters to create the forecast for every consumer. Our method is compared with the approach that creates forecasts for every consumer separately. Evaluation and experiments were conducted on three smart meter datasets from residences of Ireland and Australia, and factories of Slova...
Forecasting the electricity demand for individual households is important for both consumers and uti...
Short-term load forecasting ensures the efficient operation of power systems besides affording conti...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
Advanced metering infrastructures such as smart metering have begun to attract increasing attention;...
Smart grids require flexible data driven forecasting methods. We propose clustering tools for bottom...
Smart meters provide much energy consumption information at the residential level, making it possibl...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
The pervasive installation of smart meters in households opens new possibilities for advanced analyt...
Challenged by new problems ranging from new renewable production methods to novel sources of loads, ...
The smart meter is an important part of the smart grid, and in order to take full advantage of smart...
For the operator of a power system, having an accurate forecast of the day-ahead load is imperative ...
Clustering analysis of daily load profiles represents an effective technique to classify and aggrega...
Clustering of electricity customers supports effective market segmentation and management. The liter...
The present-day advances in technologies provide the opportunities to pave a road from conventional ...
While electricity demand forecasting literature has focused on large, industrial, and national deman...
Forecasting the electricity demand for individual households is important for both consumers and uti...
Short-term load forecasting ensures the efficient operation of power systems besides affording conti...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
Advanced metering infrastructures such as smart metering have begun to attract increasing attention;...
Smart grids require flexible data driven forecasting methods. We propose clustering tools for bottom...
Smart meters provide much energy consumption information at the residential level, making it possibl...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
The pervasive installation of smart meters in households opens new possibilities for advanced analyt...
Challenged by new problems ranging from new renewable production methods to novel sources of loads, ...
The smart meter is an important part of the smart grid, and in order to take full advantage of smart...
For the operator of a power system, having an accurate forecast of the day-ahead load is imperative ...
Clustering analysis of daily load profiles represents an effective technique to classify and aggrega...
Clustering of electricity customers supports effective market segmentation and management. The liter...
The present-day advances in technologies provide the opportunities to pave a road from conventional ...
While electricity demand forecasting literature has focused on large, industrial, and national deman...
Forecasting the electricity demand for individual households is important for both consumers and uti...
Short-term load forecasting ensures the efficient operation of power systems besides affording conti...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...