Multi-Objective Fuzzy Logic-Based Energy Management System for Microgrids with Battery and Hydrogen Energy Storage System

This paper proposes a fuzzy logic-based energy management system (EMS) for microgrids with a combined battery and hydrogen energy storage system (ESS), which ensures the power balance according to the load demand at the time that it takes into account the improvement of the microgrid performance fro...

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Veröffentlicht in:Electronics (Basel) 2020-07, Vol.9 (7), p.1074
Hauptverfasser: Vivas, Francisco José, Segura, Francisca, Andújar, José Manuel, Palacio, Adriana, Saenz, Jaime Luis, Isorna, Fernando, López, Eduardo
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container_end_page
container_issue 7
container_start_page 1074
container_title Electronics (Basel)
container_volume 9
creator Vivas, Francisco José
Segura, Francisca
Andújar, José Manuel
Palacio, Adriana
Saenz, Jaime Luis
Isorna, Fernando
López, Eduardo
description This paper proposes a fuzzy logic-based energy management system (EMS) for microgrids with a combined battery and hydrogen energy storage system (ESS), which ensures the power balance according to the load demand at the time that it takes into account the improvement of the microgrid performance from a technical and economic point of view. As is known, renewable energy-based microgrids are receiving increasing interest in the research community, since they play a key role in the challenge of designing the next energy transition model. The integration of ESSs allows the absorption of the energy surplus in the microgrid to ensure power supply if the renewable resource is insufficient and the microgrid is isolated. If the microgrid can be connected to the main power grid, the freedom degrees increase and this allows, among other things, diminishment of the ESS size. Planning the operation of renewable sources-based microgrids requires both an efficient dispatching management between the available and the demanded energy and a reliable forecasting tool. The developed EMS is based on a fuzzy logic controller (FLC), which presents different advantages regarding other controllers: It is not necessary to know the model of the plant, and the linguistic rules that make up its inference engine are easily interpretable. These rules can incorporate expert knowledge, which simplifies the microgrid management, generally complex. The developed EMS has been subjected to a stress test that has demonstrated its excellent behavior. For that, a residential-type profile in an actual microgrid has been used. The developed fuzzy logic-based EMS, in addition to responding to the required load demand, can meet both technical (to prolong the devices’ lifespan) and economic (seeking the highest profitability and efficiency) established criteria, which can be introduced by the expert depending on the microgrid characteristic and profile demand to accomplish.
doi_str_mv 10.3390/electronics9071074
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source MDPI - Multidisciplinary Digital Publishing Institute; EZB-FREE-00999 freely available EZB journals
subjects Alternative energy sources
Control algorithms
Controllers
COVID-19
Distributed generation
Efficiency
Electric power grids
Electrical loads
Electricity distribution
Energy management
Energy resources
Energy storage
Fuzzy control
Fuzzy logic
Fuzzy systems
Heuristic
Hydrogen
Hydrogen storage
Hydrogen-based energy
Linguistics
Multiple objective analysis
Neural networks
Optimization techniques
Profitability
Renewable resources
title Multi-Objective Fuzzy Logic-Based Energy Management System for Microgrids with Battery and Hydrogen Energy Storage System
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