2018
DOI: 10.3390/en11123503
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Robust Day-Ahead Forecasting of Household Electricity Demand and Operational Challenges

Abstract: In the recent years, several short-term forecasting models of household electricity demand have been proposed in the literature. This is partly due to emerging smart-grid applications, which require these kinds of forecasts to manage systems such as smart homes, prosumer aggregations, etc., and partly thanks to the availability of data from smart meters, which enable the development of such models. Since most models are academically developed, they often do not address challenges related to their implementatio… Show more

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Cited by 16 publications
(18 citation statements)
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“…The variables were chosen based on the fundamentals of the electricity market [24,25]. Household demand especially depends on temperature.…”
Section: The Methodology Of Electricity Demand Model Creationmentioning
confidence: 99%
“…The variables were chosen based on the fundamentals of the electricity market [24,25]. Household demand especially depends on temperature.…”
Section: The Methodology Of Electricity Demand Model Creationmentioning
confidence: 99%
“…Currently there is little research focused on micro-grid power load forecasting considering weather factors; [22] aimed to provide a day-ahead residential load prediction and directly used the outdoor air temperature as the weather characteristic but did not explore the specific influence of different weather characteristics. Our paper aims to study the influence of meteorological data on a single household power load and provide an hour-ahead load forecast.…”
Section: Previous Workmentioning
confidence: 99%
“…This can be a complex task and remains as an open research field, whereas defining an uncertainty interval for robust optimization is a more straightforward task, which does not necessarily require correlation analysis. • The load and PV forecasts are obtained with state-of-the art techniques that were developed independently from this publication and that are fed with real-world data measurements in a real rural neighborhood in Portugal, as a part of the European project SENSIBLE [29], [30]. This advanced forecasting methodology and the final available outcome (quantile-based forecast intervals) are efficiently used as inputs in the RO formulation.…”
Section: About the Present Workmentioning
confidence: 99%