Increasing the efficiency of local energy markets through residential demand response
Abstract Local energy markets (LEMs) aim at building up local balances of generation and demand close to real time. A bottom-up energy system made up of several LEMs could reduce energy transmission, renewable curtailment and redispatch measures in the long-term, if managed properly. However, relyin...
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doaj-443a497c7ee143bbbd40041acf091b332020-11-24T22:16:04ZengSpringerOpenEnergy Informatics2520-89422018-08-011111810.1186/s42162-018-0017-3Increasing the efficiency of local energy markets through residential demand responseEsther Mengelkamp0Samrat Bose1Enrique Kremers2Jan Eberbach3Bastian Hoffmann4Christof Weinhardt5Karlsruhe Institute of TechnologyKarlsruhe Institute of TechnologyEuropean Institute for Energy ResearchEuropean Institute for Energy ResearchEuropean Institute for Energy ResearchKarlsruhe Institute of TechnologyAbstract Local energy markets (LEMs) aim at building up local balances of generation and demand close to real time. A bottom-up energy system made up of several LEMs could reduce energy transmission, renewable curtailment and redispatch measures in the long-term, if managed properly. However, relying on limited local resources, LEMs require flexibility to achieve a high level of self-sufficiency. We introduce demand response (DR) into LEMs as a means of flexibility in residential demand that can be used to increase local self-sufficiency, decrease residual demand power peaks, facilitate local energy balances and reduce the cost of energy supply. We present a simulation study on a 100 household LEM and show how local sufficiency can be increased up to 16% with local trading and DR. We study three German regulatory scenarios and derive that the electricity price and the annual residual peak demand can be reduced by up to 10c€/kWh and 40%.http://link.springer.com/article/10.1186/s42162-018-0017-3Demand responseLocal energy marketReinforcement learningAgent-based simulationPeer-to-peer trading |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Esther Mengelkamp Samrat Bose Enrique Kremers Jan Eberbach Bastian Hoffmann Christof Weinhardt |
spellingShingle |
Esther Mengelkamp Samrat Bose Enrique Kremers Jan Eberbach Bastian Hoffmann Christof Weinhardt Increasing the efficiency of local energy markets through residential demand response Energy Informatics Demand response Local energy market Reinforcement learning Agent-based simulation Peer-to-peer trading |
author_facet |
Esther Mengelkamp Samrat Bose Enrique Kremers Jan Eberbach Bastian Hoffmann Christof Weinhardt |
author_sort |
Esther Mengelkamp |
title |
Increasing the efficiency of local energy markets through residential demand response |
title_short |
Increasing the efficiency of local energy markets through residential demand response |
title_full |
Increasing the efficiency of local energy markets through residential demand response |
title_fullStr |
Increasing the efficiency of local energy markets through residential demand response |
title_full_unstemmed |
Increasing the efficiency of local energy markets through residential demand response |
title_sort |
increasing the efficiency of local energy markets through residential demand response |
publisher |
SpringerOpen |
series |
Energy Informatics |
issn |
2520-8942 |
publishDate |
2018-08-01 |
description |
Abstract Local energy markets (LEMs) aim at building up local balances of generation and demand close to real time. A bottom-up energy system made up of several LEMs could reduce energy transmission, renewable curtailment and redispatch measures in the long-term, if managed properly. However, relying on limited local resources, LEMs require flexibility to achieve a high level of self-sufficiency. We introduce demand response (DR) into LEMs as a means of flexibility in residential demand that can be used to increase local self-sufficiency, decrease residual demand power peaks, facilitate local energy balances and reduce the cost of energy supply. We present a simulation study on a 100 household LEM and show how local sufficiency can be increased up to 16% with local trading and DR. We study three German regulatory scenarios and derive that the electricity price and the annual residual peak demand can be reduced by up to 10c€/kWh and 40%. |
topic |
Demand response Local energy market Reinforcement learning Agent-based simulation Peer-to-peer trading |
url |
http://link.springer.com/article/10.1186/s42162-018-0017-3 |
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1725791448453873664 |