Aspirations of grid independence could be achieved by residential power systems connected only to small highly variable loads, if overall demand on the network can be accurately anticipated. Absence of the diversity found on networks with larger load cohorts or consistent industrial customers, makes such overall load profiles difficult to anticipate on even a short term basis. Here, existing forecasting techniques are employed alongside enhanced classification/clustering models in proposed methods for forecasting demand in a bottom up manner. A Markov Chain based sampling technique derived from Practice Theory of human behavior is proposed as a means of providing a forecast with low computational effort and reduced historical data requireme...
Though extensive, the literature on electrical load forecasting lacks reports on studies focused on ...
To improve the management and reliability of power distribution networks, there is a strong demand f...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
Aspirations of grid independence could be achieved by residential power systems connected only to sm...
Abstract—Aspirations of grid independence could be achieved by residential power systems connected o...
Forecasting the electricity demand for individual households is important for both consumers and uti...
Power load forecasting plays a critical role in the context of electric supply optimization. The con...
Microgrids need a robust residential load forecasting. As a consequence, this highlights the problem...
The pervasive installation of smart meters in households opens new possibilities for advanced analyt...
Short-term forecasts of energy consumption are invaluable for operation of energy systems, including...
Load Forecasting plays a key role in making today's and future's Smart Energy Grids sustainable and ...
Pervasive installation of smart meters opens new possibilities for advanced analytics of electricity...
Electrical load forecasting has a fundamental role in the decision-making process of energy system o...
An integrated domestic occupancy and demand model with a 1-min resolution has been developed which b...
Accurate load forecasting is essential for power-sector planning and management. This applies during...
Though extensive, the literature on electrical load forecasting lacks reports on studies focused on ...
To improve the management and reliability of power distribution networks, there is a strong demand f...
Smart grid components such as smart home and battery energy management systems, high penetration of ...
Aspirations of grid independence could be achieved by residential power systems connected only to sm...
Abstract—Aspirations of grid independence could be achieved by residential power systems connected o...
Forecasting the electricity demand for individual households is important for both consumers and uti...
Power load forecasting plays a critical role in the context of electric supply optimization. The con...
Microgrids need a robust residential load forecasting. As a consequence, this highlights the problem...
The pervasive installation of smart meters in households opens new possibilities for advanced analyt...
Short-term forecasts of energy consumption are invaluable for operation of energy systems, including...
Load Forecasting plays a key role in making today's and future's Smart Energy Grids sustainable and ...
Pervasive installation of smart meters opens new possibilities for advanced analytics of electricity...
Electrical load forecasting has a fundamental role in the decision-making process of energy system o...
An integrated domestic occupancy and demand model with a 1-min resolution has been developed which b...
Accurate load forecasting is essential for power-sector planning and management. This applies during...
Though extensive, the literature on electrical load forecasting lacks reports on studies focused on ...
To improve the management and reliability of power distribution networks, there is a strong demand f...
Smart grid components such as smart home and battery energy management systems, high penetration of ...