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A Bi-Layer Multi-Objective Techno-Economical Optimization Model for Optimal Integration of Distributed Energy Resources into Smart/Micro Grids

doi: 10.3390/en13071706
handle: 11386/4757668 , 1959.4/unsworks_80602
The energy management system is executed in microgrids for optimal integration of distributed energy resources (DERs) into the power distribution grids. To this end, various strategies have been more focused on cost reduction, whereas effectively both economic and technical indices/factors have to be considered simultaneously. Therefore, in this paper, a two-layer optimization model is proposed to minimize the operation costs, voltage fluctuations, and power losses of smart microgrids. In the outer-layer, the size and capacity of DERs including renewable energy sources (RES), electric vehicles (EV) charging stations and energy storage systems (ESS), are obtained simultaneously. The inner-layer corresponds to the scheduled operation of EVs and ESSs using an integrated coordination model (ICM). The ICM is a fuzzy interface that has been adopted to address the multi-objectivity of the cost function developed based on hourly demand response, state of charges of EVs and ESS, and electricity price. Demand response is implemented in the ICM to investigate the effect of time-of-use electricity prices on optimal energy management. To solve the optimization problem and load-flow equations, hybrid genetic algorithm (GA)-particle swarm optimization (PSO) and backward-forward sweep algorithms are deployed, respectively. One-day simulation results confirm that the proposed model can reduce the power loss, voltage fluctuations and electricity supply cost by 51%, 40.77%, and 55.21%, respectively, which can considerably improve power system stability and energy efficiency.
- Islamic Azad University of Falavarjan Iran (Islamic Republic of)
- UNSW Sydney Australia
- Bu-Ali Sina University Iran (Islamic Republic of)
- University of Technology Sydney Australia
- Islamic Azad University of Hamedan Iran (Islamic Republic of)
anzsrc-for: 4009 Electronics, Technology, 330, anzsrc-for: 51 Physical sciences, anzsrc-for: 40 Engineering, anzsrc-for: 4008 Electrical Engineering, 40 Engineering, 13 Climate Action, energy storage, T, electric vehicle, renewable energy, 620, anzsrc-for: 02 Physical Sciences, microgrid, 4009 Electronics, demand response, anzsrc-for: 33 Built environment and design, 7 Affordable and Clean Energy, 4008 Electrical Engineering, Sensors and Digital Hardware, anzsrc-for: 09 Engineering, microgrid; renewable energy; electric vehicle; energy storage; demand response, Demand response; Electric vehicle; Energy storage; Microgrid; Renewable energy
anzsrc-for: 4009 Electronics, Technology, 330, anzsrc-for: 51 Physical sciences, anzsrc-for: 40 Engineering, anzsrc-for: 4008 Electrical Engineering, 40 Engineering, 13 Climate Action, energy storage, T, electric vehicle, renewable energy, 620, anzsrc-for: 02 Physical Sciences, microgrid, 4009 Electronics, demand response, anzsrc-for: 33 Built environment and design, 7 Affordable and Clean Energy, 4008 Electrical Engineering, Sensors and Digital Hardware, anzsrc-for: 09 Engineering, microgrid; renewable energy; electric vehicle; energy storage; demand response, Demand response; Electric vehicle; Energy storage; Microgrid; Renewable energy
citations This is an alternative to the "Influence" indicator, which also reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically).22 popularity This indicator reflects the "current" impact/attention (the "hype") of an article in the research community at large, based on the underlying citation network.Top 10% influence This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically).Top 10% impulse This indicator reflects the initial momentum of an article directly after its publication, based on the underlying citation network.Top 10%
