Residential Demand Response Scheduling with Consideration of Consumer Preferences

This paper proposes a new demand response scheduling framework for an array of households, which are grouped into different categories based on socio-economic factors, such as the number of occupants, family decomposition and employment status. Each of the households is equipped with a variety of ap...

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Main Authors: Raka Jovanovic, Abdelkader Bousselham, Islam Safak Bayram
Format: Article
Language:English
Published: MDPI AG 2016-01-01
Series:Applied Sciences
Subjects:
Online Access:http://www.mdpi.com/2076-3417/6/1/16
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spelling doaj-ebe08d37e1d54feabeb964c876a467b82020-11-24T21:53:02ZengMDPI AGApplied Sciences2076-34172016-01-01611610.3390/app6010016app6010016Residential Demand Response Scheduling with Consideration of Consumer PreferencesRaka Jovanovic0Abdelkader Bousselham1Islam Safak Bayram2Qatar Environment and Energy Research Institute (QEERI), Hamad Bin Khalifa University, P.O. Box 5825, Doha 3263, QatarQatar Environment and Energy Research Institute (QEERI), Hamad Bin Khalifa University, P.O. Box 5825, Doha 3263, QatarQatar Environment and Energy Research Institute (QEERI), Hamad Bin Khalifa University, P.O. Box 5825, Doha 3263, QatarThis paper proposes a new demand response scheduling framework for an array of households, which are grouped into different categories based on socio-economic factors, such as the number of occupants, family decomposition and employment status. Each of the households is equipped with a variety of appliances. The model takes the preferences of participating households into account and aims to minimize the overall production cost and, in parallel, to lower the individual electricity bills. In the existing literature, customers submit binary values for each time period to indicate their operational preferences. However, turning the appliances “on” or “off” does not capture the associated discomfort levels, as each appliance provides a different service and leads to a different level of satisfaction. The proposed model employs integer values to indicate household preferences and models the scheduling problem as a multi-objective mixed integer programming. The main thrust of the framework is that the multi-level preference modeling of appliances increases their “flexibility”; hence, the job scheduling can be done at a lower cost. The model is evaluated by using the real data provided by the Department of Energy & Climate Change, UK. In the computational experiments, we examine the relation between the satisfaction of consumers based on the appliance usage preferences and the electricity costs by exploring the Pareto front of the related objective functions. The results show that the proposed model leads to significant savings in electricity cost, while maintaining a good level of customer satisfaction.http://www.mdpi.com/2076-3417/6/1/16demand responsemixed integer linear programmingschedulingsmart grids
collection DOAJ
language English
format Article
sources DOAJ
author Raka Jovanovic
Abdelkader Bousselham
Islam Safak Bayram
spellingShingle Raka Jovanovic
Abdelkader Bousselham
Islam Safak Bayram
Residential Demand Response Scheduling with Consideration of Consumer Preferences
Applied Sciences
demand response
mixed integer linear programming
scheduling
smart grids
author_facet Raka Jovanovic
Abdelkader Bousselham
Islam Safak Bayram
author_sort Raka Jovanovic
title Residential Demand Response Scheduling with Consideration of Consumer Preferences
title_short Residential Demand Response Scheduling with Consideration of Consumer Preferences
title_full Residential Demand Response Scheduling with Consideration of Consumer Preferences
title_fullStr Residential Demand Response Scheduling with Consideration of Consumer Preferences
title_full_unstemmed Residential Demand Response Scheduling with Consideration of Consumer Preferences
title_sort residential demand response scheduling with consideration of consumer preferences
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2016-01-01
description This paper proposes a new demand response scheduling framework for an array of households, which are grouped into different categories based on socio-economic factors, such as the number of occupants, family decomposition and employment status. Each of the households is equipped with a variety of appliances. The model takes the preferences of participating households into account and aims to minimize the overall production cost and, in parallel, to lower the individual electricity bills. In the existing literature, customers submit binary values for each time period to indicate their operational preferences. However, turning the appliances “on” or “off” does not capture the associated discomfort levels, as each appliance provides a different service and leads to a different level of satisfaction. The proposed model employs integer values to indicate household preferences and models the scheduling problem as a multi-objective mixed integer programming. The main thrust of the framework is that the multi-level preference modeling of appliances increases their “flexibility”; hence, the job scheduling can be done at a lower cost. The model is evaluated by using the real data provided by the Department of Energy & Climate Change, UK. In the computational experiments, we examine the relation between the satisfaction of consumers based on the appliance usage preferences and the electricity costs by exploring the Pareto front of the related objective functions. The results show that the proposed model leads to significant savings in electricity cost, while maintaining a good level of customer satisfaction.
topic demand response
mixed integer linear programming
scheduling
smart grids
url http://www.mdpi.com/2076-3417/6/1/16
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