URI | http://purl.tuc.gr/dl/dias/D6D5C92C-F485-480A-8C2F-0E00CA5BABAA | - |
Identifier | https://doi.org/10.3390/en11113012 | - |
Identifier | https://www.mdpi.com/1996-1073/11/11/3012 | - |
Language | en | - |
Extent | 22 pages | en |
Title | Development of demand response energy management optimization at building and district levels using genetic algorithm and artificial neural network modelling power predictions | en |
Creator | Kampelis Nikolaos | en |
Creator | Καμπελης Νικολαος | el |
Creator | Tsekeri Elisavet | en |
Creator | Τσεκερη Ελισαβετ | el |
Creator | Kolokotsa Dionysia | en |
Creator | Κολοκοτσα Διονυσια | el |
Creator | Kalaitzakis Konstantinos | en |
Creator | Καλαϊτζακης Κωνσταντινος | el |
Creator | Isidori Daniela | en |
Creator | Cristalli Cristina | en |
Publisher | MDPI | en |
Content Summary | Demand Response (DR) is a fundamental aspect of the smart grid concept, as it refers to the necessary open and transparent market framework linking energy costs to the actual grid operations. DR allows consumers to directly or indirectly participate in the markets where energy is being exchanged. One of the main challenges for engaging in DR is associated with the initial assessment of the potential rewards and risks under a given pricing scheme. In this paper, a Genetic Algorithm (GA) optimisation model, using Artificial Neural Network (ANN) power predictions for day-ahead energy management at the building and district levels, is proposed. Individual building and building group analysis is conducted to evaluate ANN predictions and GA-generated solutions. ANN-based short term electric power forecasting is exploited in predicting day-ahead demand, and form a baseline scenario. GA optimisation is conducted to provide balanced load shifting and cost-of-energy solutions based on two alternate pricing schemes. Results demonstrate the effectiveness of this approach for assessing DR load shifting options based on a Time of Use pricing scheme. Through the analysis of the results, the practical benefits and limitations of the proposed approach are addressed. | en |
Type of Item | Peer-Reviewed Journal Publication | en |
Type of Item | Δημοσίευση σε Περιοδικό με Κριτές | el |
License | http://creativecommons.org/licenses/by/4.0/ | en |
Date of Item | 2019-05-27 | - |
Date of Publication | 2018 | - |
Subject | Artificial neural network | en |
Subject | Demand response | en |
Subject | Energy management | en |
Subject | Genetic algorithm | en |
Subject | Microgrid | en |
Subject | Optimisation | en |
Subject | Power predictions | en |
Subject | Smart grid | en |
Bibliographic Citation | N. Kampelis, E. Tsekeri, D. Kolokotsa, K. Kalaitzakis, D. Isidori and C. Cristalli "Development of demand response energy management optimization at building and district levels using genetic algorithm and artificial neural network modelling power predictions," Energies, vol. 11, no. 11, Nov. 2018. doi: 10.3390/en11113012 | en |