A multi-stage joint planning and operation model for energy hubs considering integrated demand response programs

•Developing a stochastic model for the joint planning and operation of energy hub.•Dividing the solution space into two stages to increase the solution speed.•Tackling the problem by using continuous and discrete methods.•Reducing planning cost by employing RCGA.•Investigating the effect of continuo...

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Bibliographic Details
Published in:International journal of electrical power & energy systems Vol. 140; p. 108103
Main Authors: Mansouri, S.A., Ahmarinejad, A., Sheidaei, F., Javadi, M.S., Rezaee Jordehi, A., Esmaeel Nezhad, A., Catalão, J.P.S.
Format: Journal Article
Language:English
Published: Elsevier Ltd 01.09.2022
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ISSN:0142-0615
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Summary:•Developing a stochastic model for the joint planning and operation of energy hub.•Dividing the solution space into two stages to increase the solution speed.•Tackling the problem by using continuous and discrete methods.•Reducing planning cost by employing RCGA.•Investigating the effect of continuous and discrete methods on the hub planning.•Assessing the impacts of various DR and IDR programs on the hub planning. Energy hub systems improve energy efficiency and reduce emissions due to the coordinated operation of different infrastructures. Given that these systems meet the needs of customers for different energies, their optimal design and operation is one of the main challenges in the field of energy supply. Hence, this paper presents a two-stage stochastic model for the integrated design and operation of an energy hub in the presence of electrical and thermal energy storage systems. As the electrical, heating, and cooling loads, besides the wind turbine’s (WT’s) output power, are associated with severe uncertainties, their impacts are addressed in the proposed model. Besides, demand response (DR) and integrated demand response (IDR) programs have been incorporated in the model. Furthermore, the real-coded genetic algorithm (RCGA), and binary-coded genetic algorithm (BCGA) are deployed to tackle the problem through continuous and discrete methods, respectively. The simulation results show that considering the uncertainties leads to the installation of larger capacities for assets and thus a 8.07% increase in investment cost. The results also indicate that the implementation of shiftable IDR program modifies the demand curve of electrical, cooling and heating loads, thereby reducing operating cost by 15.1%. Finally, the results substantiate that storage systems with discharge during peak hours not only increase system flexibility but also reduce operating cost.
ISSN:0142-0615
DOI:10.1016/j.ijepes.2022.108103