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Operational Strategy Optimization in an Optimal Sized Smart Microgrid

handle: 1959.4/unsworks_65863
Recently, microgrids (MGs) have attracted considerable attention as a high-quality and reliable source of electricity. In this paper, energy management in MGs is addressed in the light of economic efficiency, environmental restrictions, and reliability improvement via: 1) optimizing the type and capacity of distributed generation (DG) sources, as well as the capacity of storage devices (SD); and 2) developing an operational strategy (OS) for energy management in MGs. A master-slave objective function based on net present value (as an economic indicator) is proposed. Such objective function is solved using a hybrid optimization method. This method includes two steps. In the first step, 2-D slave object functions (SOFs), operating costs, and consumer outage cost (as a reliability index) are minimized by quadratic programming and particle swarm optimization (PSO) algorithms, respectively. Then Pareto curve is drawn for SOF and fuzzy logic is employed to select the best SOF solution, OS, from Pareto curve. In the second step, using the best OS from step one for any iteration, PSO algorithms employed to solve master objective function, and to determine the optimum capacity and type of DGs and SDs. The results show that the proposed framework can be considered as an efficient tool in planning and energy management of MGs.
- UNSW Sydney Australia
- Bu-Ali Sina University Iran (Islamic Republic of)
- Bu-Ali Sina University Iran (Islamic Republic of)
anzsrc-for: 4009 Electronics, 330, anzsrc-for: 4606 Distributed computing and systems software, 650, anzsrc-for: 40 Engineering, 4009 Electronics, anzsrc-for: 0915 Interdisciplinary Engineering, 7 Affordable and Clean Energy, 4008 Electrical Engineering, Sensors and Digital Hardware, anzsrc-for: 4008 Electrical Engineering, anzsrc-for: 0906 Electrical and Electronic Engineering, 40 Engineering
anzsrc-for: 4009 Electronics, 330, anzsrc-for: 4606 Distributed computing and systems software, 650, anzsrc-for: 40 Engineering, 4009 Electronics, anzsrc-for: 0915 Interdisciplinary Engineering, 7 Affordable and Clean Energy, 4008 Electrical Engineering, Sensors and Digital Hardware, anzsrc-for: 4008 Electrical Engineering, anzsrc-for: 0906 Electrical and Electronic Engineering, 40 Engineering
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