Smart energy meters generate real time, high frequency data which can foster demand management and response of consumers and firms, with potential private and social benefits. However, proper statistical techniques are needed to make sense of this large amount of data and translate them into usable recommendations. Here, we apply Functional Data Analysis (FDA), a novel branch of Statistics that analyses functions-to identify drivers of residential electricity load curves. We evaluate a real time feedback intervention which involved about 1000 Italian households for a period of three years. Results of the FDA modelling reveal, for the first time, daytime-indexed patterns of residential electricity consumption which depend on the ownership of...
During the last few decades, citizens around western countries became more and more sensible to ener...
The increasing share of renewable energy sources on the supply side, as well as the so-called electr...
© 2014 Elsevier Ltd. This study uses high-frequency appliance-level electricity consumption data for...
Smart energy meters generate real time, high frequency data which can foster demand management and r...
Smart meters can help citizens in optimizing energy consumption patterns. However, mixed evidence ex...
The 2020 International Workshop on Advanced Analytics and Learning on Temporal Data (AALTD 2020),Ghe...
International audienceAll stakeholders in the energy field acknowledge a growing need for higher con...
Electricity consumption is characterized not only by its total amount, but also its temporal course,...
With increasing shares of intermittent renewable energy sources in the power mix, managing residenti...
The contribution of households’ electricity pattern loads into demand response logics is nowadays a ...
Load demand in residential houses is a significant contributor to peak load problems experienced by ...
Demand-side flexibility has been suggested as a tool for peak demand reduction and large-scale integ...
The importance of load demand variation, when analysing energy and environmental impact of residenti...
During the last few decades, citizens around western countries became more and more sensible to ener...
The increasing share of renewable energy sources on the supply side, as well as the so-called electr...
© 2014 Elsevier Ltd. This study uses high-frequency appliance-level electricity consumption data for...
Smart energy meters generate real time, high frequency data which can foster demand management and r...
Smart meters can help citizens in optimizing energy consumption patterns. However, mixed evidence ex...
The 2020 International Workshop on Advanced Analytics and Learning on Temporal Data (AALTD 2020),Ghe...
International audienceAll stakeholders in the energy field acknowledge a growing need for higher con...
Electricity consumption is characterized not only by its total amount, but also its temporal course,...
With increasing shares of intermittent renewable energy sources in the power mix, managing residenti...
The contribution of households’ electricity pattern loads into demand response logics is nowadays a ...
Load demand in residential houses is a significant contributor to peak load problems experienced by ...
Demand-side flexibility has been suggested as a tool for peak demand reduction and large-scale integ...
The importance of load demand variation, when analysing energy and environmental impact of residenti...
During the last few decades, citizens around western countries became more and more sensible to ener...
The increasing share of renewable energy sources on the supply side, as well as the so-called electr...
© 2014 Elsevier Ltd. This study uses high-frequency appliance-level electricity consumption data for...