2017
DOI: 10.1109/tsg.2015.2493205
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Incorporating Practice Theory in Sub-Profile Models for Short Term Aggregated Residential Load Forecasting

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Cited by 141 publications
(89 citation statements)
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References 24 publications
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“…These are an ARIMA model with lags of 48 samples, and feed-forward Neural Network with 48 output nodes and 49 input nodes as used in [16], model based on the Gaussian Process (GP) and Gradient Boost Machine (GBM) used by [17], Ensemble Forecast (combination of all used demand forecasting methods by simple unweighted average) [18,19] and finally Persistent forecasting.…”
Section: ) Demand Forecasting: Different Methods Of Demandmentioning
confidence: 99%
“…These are an ARIMA model with lags of 48 samples, and feed-forward Neural Network with 48 output nodes and 49 input nodes as used in [16], model based on the Gaussian Process (GP) and Gradient Boost Machine (GBM) used by [17], Ensemble Forecast (combination of all used demand forecasting methods by simple unweighted average) [18,19] and finally Persistent forecasting.…”
Section: ) Demand Forecasting: Different Methods Of Demandmentioning
confidence: 99%
“…Due to the page limit and many mature approaches that already exist for residential load forecasting [33,34] and portfolio evaluation [35,36], risk management will be the focus of discussion here, along with many recent advances in the research community. In a typical example such as [37], the author utilizes stochastic programming techniques to determine the day-ahead market bidding strategies for retailers with flexible demands to maximize their short-term profit, specifically including a case study based on Sweden's electricity market and consideration of the demand uncertainty of retail customers.…”
Section: Decision Making Of Retailersmentioning
confidence: 99%
“…Practice theory is used in [24], [25] to conceptualize and explain energy consumption behaviours, routines and possible flexibility. While formalisms are emerging [26] , a model that quantifies demand changes in reaction to pricing signals has yet to emerge as a standard approach.…”
Section: Predicting User Response To a Price Signalmentioning
confidence: 99%
“…In this work a simple, straight forward method, which takes into account user preferences for the use of the appliance and the responsiveness for each activity towards a price change is presented which can enrich or substitute existing elasticity based approaches. Although inflexible personal routines as highlighted in [26] are not explicitly captured, the presented methods implicitly build on daily routines and a load shift will occur in line with observed temporal preferences for each activity.…”
Section: Predicting User Response To a Price Signalmentioning
confidence: 99%
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