General Approach to Electrical Microgrids: Optimization, Efficiency, and Reliability
Abstract
:1. Introduction
2. DC Microgrids
- Reduction in conversion stages;
- Decrease in losses;
- Greater simplicity in control.
Ref. | Operating Scenario | System Capabilities (kW) | Type of Load | Control | Remarks |
---|---|---|---|---|---|
[21] | Grid-connected | PV WT BESS | Customers (2 kW) | Droop | They use a hierarchical control to correct voltage variations. |
[22] | *** | PV BESS | *** | Multi-agents | Local controls (LCs) are used, and they exchange information with neighboring controls. |
[14] | Grid-connected | PV WT BESS | Resistive motors | *** | Various centralized, decentralized, and distributed control strategies are presented. |
[23] | Grid-connected | PV (12 kW) BESS ion litio (6.5 kWh/710 VCD/3 A) | Essential criticisms (9 kW) | SCADA | The EMS in this work is designed to minimize the energy consumption from the main grid, and it also operates with the Maximum Power Point Tracking (MPPT) of the photovoltaic panels. |
[24] | Autonomous | PV WT BESS Acid lead | AC loads (lamps) | Rapid Control Prototype (RPC) | They employ a real-time control system to operationally and experimentally validate the resources of the microgrid. |
[25] | Grid-connected | *** | Variants | Finite State Machine | A second output voltage tracking controller with performance recovery was implemented. |
[26] | Autonomous | PV (9 kW) WT (5 kVA) BESS (60 Ah/12 V) SC (16 V) | Critical loads on CD (4 kW) Critical loads in AC (1.5 kW) | Real-time laboratory | The dispatchable generator plays a crucial role in isolated scenarios from the electrical grid. |
[27] | Autonomous | PV Diesel generator (6 kW) BESS (10 Ah/36 V) | CD loads | Model Predictive Control | It performs real-time measurements for the optimal dispatch of energy, ensuring the distribution of the energy flow. |
[28] | Grid-connected | PV (150 kW) BESS (200 Ah/336 V) VE (40 kW) | LED lights (20 kW) Air conditioning (30 kW) | Jerarchic | An EMS is proposed where the prioritization is given to minimizing battery wear, along with a strategy based on minimizing operating costs. |
[29] | Grid-connected | FC PV BESS | Commercial building | *** | EMS is based on a Particle Swarm Algorithm (SSA) due to its advantages in convergence and computational simplicity. |
3. AC Microgrids
- In situations of uncertainty or transients in the grid, the soft isolation capacity of the AC-MG facilitates less distortion of loads within the microgrid operation;
- The average performance of the electrical grid is optimized;
- During peak load demand, the AC-MG protects against grid faults by regulating load demand;
- A significant improvement in environmental conditions is made possible by using low- or zero-emission-power generators;
- The system enhances overall efficiency by enabling multiple energy sources and reducing heat generation;
- Production costs and electricity availability decrease for users;
- It facilitates the improvement of energy quality and reliability during the application of microgrids based on sensitive loads.
- Increased costs and net metering for microgrid integration;
- Requires the involvement of expert energy engineers and well-equipped engineering techniques;
- It is necessary to follow or develop interconnection standards to maintain coherence;
- Control and protection are major issues for harnessing the network formation and tracking mode.
- Synchronization difficulties after islanded operation in terms of stability;
- Appearance of voltage angles and phase mismatch during resynchronization from network formation to tracking mode;
- Errors in voltage setpoints increase by circulating current between the microgrid and the main grid, thereby increasing oscillations in active and reactive power;
- In islanded operation mode, to track changes in load frequency, the MG must regulate operating power, causing frequency error generation issues affecting system voltage and phases;
- Impedance-related factors, such as line and distributed generation (DG), also affect the control and distribution of reactive power during grid-connected and isolated modes, respectively.
4. Hybrid MGs
4.1. AC-Coupled Hybrid Microgrid
4.2. DC-Coupled Hybrid Microgrid
4.3. AC-DC Coupled Hybrid Microgrid
5. Impact of Energy Variability and System Costs on Microgrid Configurations
6. Discussion
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
ESS | Energy Storage System |
MG | Microgrid |
RES | Renewable Energy Source |
PV | Photovoltaic Solar |
PCC | Point of Common Coupling |
DC | Direct Current |
AC | Alternating Current |
HMG | Hybrid Microgrid |
IPC | Interconnection Power Converter |
MPPT | Maximum Power Point Tracking |
MPC | Model Predictive Control |
GA | Genetic Algorithms |
LP | Linear Programming |
NLP | Non-Linear Programming |
ANN | Artificial Neuronal Network |
PSO | Particle Swarm Optimization |
FC | Fuel Cell |
Appendix A
Ref. | Operating Scenarios | Optimization Method | Type of Control | Function Objective | Elements and Power Range Power |
---|---|---|---|---|---|
[72] | Isolated | Mixed Integer Linear Programming (MILP) | Centralized | Net project cost | L (66.3 kW), PV (60 kW), BESS (464 kWh), GENSET = (58 kW) |
[73] | Grid-connected | Fuzzy Decision-Making Method | *** | Operational costs | L (20 kW), PV (7 kW), WT (5 kW), BESS (100 kWh), PF (4 kW) |
[74] | Isolated | Chaotic Crow Search Algorithm (CCSA) | Coefficient diagram method (CDM) | Frequency stability | L (15 MW), PV (6 MW), WT (8 MW), BESS (4 MW/h). |
[75] | Grid-connected | Improved Hybrid Optimization by Genetic Algorithms (iHOGA) | LF = load following CC = cycle charging | Maximizing the service life of the elements | L (50 kW), PV (31.9 kW), PF (1.9 kW), BESS (89.520 kW/h) |
[76] | Isolated | Gauss–Seidel (Coordinate Descent) | Intelligent load control | Minimizing the size of the energy system | L (450 kW), PV (1000), PVS (120 kW) |
[77] | Isolated | MOPSO | Centralized | Minimization of energy costs | L (84.7 kW), PV (61 kW), HG (11 kW) |
[78] | Grid-connected | Non-linear Programming | *** | Minimize daily operating costs | L (80 kW), PV (100 kW), FC (50 kW), |
[79] | Grid-connected | PSO | P&O | Minimizing response time to disturbances | L (60 kW), PV (40 kW), WT (50 kW) |
[80] | Grid-connected | Gift-based Algorithm (RB-EMS) | *** | *** | L (400 kW), PV (235 kW), WT (200 kW), BESS (750 kWh), PEV (60 kWh) |
[81] | Isolated | Mixed Integer Linear Programming (MILP) | Centralized | Minimizing operating costs | L (3500 kW), PV (4000 kW), BESS (1200 kWh) |
[82] | Isolated | Mixed Integer Quadratic Programming (MIQP) | Distributed Explicit Model Predictive Control (DeMPC) | Reduce FC starts and stops | L, PV (57.6 kW), FC (1200 W), EA (5 kW) |
[83] | Isolated | Construction of the Pyramids of Giza (GPC) | *** | Minimizing the net annual cost | L(43 kW), PV, WT, BESS, BG |
[84] | Isolated | Particle Swarm Optimization (PSO) | *** | Minimizing the net annual cost | L (2.3 kWh), PV (2.65 kW), WT (2.01 kW), BESS (14.86 kW), GD (3.6 kW) |
[85] | Grid-connected | Modified Particle Swarm Optimization (MPSO) | Hierarchical Control | Minimize system costs | L (650 kW), PV (500 kW), BESS (30 kW), GD1 (200 kW), GD2 (200 kW), MT (65 kW) |
[86] | Isolated | PSO | *** | Minimize installation costs and running costs | L, PV, WT, BESS, GD. |
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Type of Microgrid | Operational Current | Features |
---|---|---|
DC Microgrid | Direct current | Exclusive for DC; ideal for DC electronic and renewable loads; requires inverters to integrate with AC. |
DC-coupled Hybrid Microgrid | DC with AC sources | Combines DC with AC power sources via converters; flexible in the use of power supplies and power supply. |
AC Microgrid | Altern current | AC operation; most common in micro-grids and is compatible with many conventional power sources. |
Hybrid Microgrid coupled to AC | AC with DC sources | Uses AC and DC power sources; employs AC-DC inverters to integrate DC components into AC grids. |
Hybrid AC-DC Microgrid | Simultaneous AC and DC | Combines both types of current to support mixed loads and improve the flexibility and stability of the system. |
Ref. | Location | Component Systems | Power Ranges (kW) | Remarks |
---|---|---|---|---|
[34] | Greek Island | PV WT BESS | 12 50 85 | Development of a large number of reliable forecasting algorithms is applied to a remote island along with an innovative storage system. |
[35] | Hachinohe | PV WT Diesel generator | 100 50 510 | The main objective was to optimize the operation and control of the system, assess costs and benefits, and evaluate the potential for emissions reduction. |
[36] | Senegal | PV BESS | 10 80 | Reducing loss rates in local networks resulting from the use of renewable energy in a grid-connected environment. |
[37] | Porto | PV WT | 150 50 | Supplies a time-variable load, and the numerical results verify the applicability and accuracy of the developed technique for estimating the load and filter currents. |
[38] | Japan | PV WT BESS | 200 100 450 | Joint estimation of an advanced filter to estimate the current of the AC microgrid and unknown loads from the measurement of the AC bus voltage. |
Ref. | Location | Component Systems | Power Ranges (kW) | Features |
---|---|---|---|---|
[50] | Hachinohe in Japan | PV Diesel Generator WT BESS | 2 de 50 3 de 170 2 de 2 100 | Provides electricity to four schools and an office. The energy control and management system ensure a balance between generation and consumption through a weekly plan, updated every three minutes, and regulates the energy flow at the interconnection points. |
[51] | Bronsbergen in Netherland | PV BESS | 315 *** | Two battery banks, acting as a central energy storage system, are connected at the common coupling point. |
[52] | Kythnos in Greece | PV BESS Diesel generator | 10 53/h 5 | The residential service is powered by three battery inverters in parallel using the frequency droop control method, in which the grid frequency is used as the communication signal. |
[53] | Aichi in Japan | FC carbonate FC solid oxid | 300 25 | The matching between supply and demand power, as well as voltage control, are managed by the battery converter. In addition, optimization techniques (genetic algorithm for day-ahead generation planning) are used. |
[54] | Cesi in Italy | PV Diesel generator | 350 *** | It features a central control scheme, using optimization techniques, which regulates the set points of each source. |
[55] | Kahua in the USA | PV WT BESS FC | 10 7.5 85/h 5 | The electricity generated by the wind turbine and solar array is used to power an electrolyser that produces hydrogen, which is stored without further compression. If electricity is needed, the hydrogen is supplied to a fuel cell to generate electricity. |
Optimization Method | Approach | Advantages | Disadvantages | Common Applications |
---|---|---|---|---|
Optimization based on Linear Programming (LP) and Non-Linear Programming (NLP) | Use mathematical models to re-solve linear or linear optimization problems. non-linear in real time. | Computational efficiency for well-defined problems with clear constraints. | Not suitable for extremely complex problems or problems with high uncertainty. | Optimization of operating costs, generation and load planning in microgrids. |
Model-based Predictive Control (MPC) | It uses a dynamic model of the system to predict and optimize the future actions of the microgrid. | Enables real-time optimization and handling of stability constraints. | It requires accurate modeling and can be computationally intensive. | Energy flow control, optimization of generation and storage distribution. |
Genetic Algorithms (GA) | It uses evolutionary processes to find optimal solutions, adapting parameters as progress is made. | Flexibility to solve non-linear and multi-constrained problems. | Slow convergence and sensitivity to parameter selection. | Design of micro-grid configuration, integration of renewable and conventional sources. |
Stochastic Optimization | Probabilistic models to optimize systems under uncertainty, ideal for renewable sources. | Effective in managing uncertainties, such as variability in renewable production. | It requires adequate uncertainty and can be computationally intensive. | Integration of intermittent renewable energies; optimization of storage. |
Artificial Neuronal Networks (ANN) | Use of neural network models for prediction and decision making in complex systems. | Ability to learn and adapt to complex patterns in non-linear data. | It requires large amounts of data to train and is difficult to interpret. | Demand and generation forecasting, real-time optimization, adaptive control. |
Particle Swarm Optimization (PSO) | Based on the simulation of the collective behavior of particles (agents) seeking optimal solutions. | Effective in finding solutions to complex and non-linear problems, fast in convergence. | Requires proper parameter setting to avoid suboptimal solutions. | Optimization of generation distribution, power flow control, design of hybrid microgrids. |
Ref. | MG Configuration | Main Components | Approximate Cost (USD/kW) | Features |
---|---|---|---|---|
[66] | AC Microgrid with PV | PV systems, inverters, storage system | 1500–3500 | Costs highly dependent on the size of the MG and the quality of the PV systems. |
[67] | Hybrid Microgrid (AC/DC) | PV systems, wind turbine, batteries, AC/DC converters | 2500–5000 | Combination of AC and DC systems, more flexibility, but also more complexity in integration and control. |
[68] | Microgrid with FC | Fuel cell, batteries, converters, back-up grid | 3500–6000 | High initial investment due to fuel cells but offers higher reliability in constant generation. |
[69] | Microgrid PV-WT-Diesel | Diesel generator, PV systems, wind turbine, storage system | 2000–4000 | Often used in remote areas; operating costs depend on the price of fuel and the proportion of renewables used. |
[70] | Industrial Microgrid | Combined generation (CHP), storage, grid integration | 2000–5000 | Configuration designed for industrial environments, with increased capacity and redundancy to ensure continuous supply. |
[71] | Residential Microgrid | PV systems, storage system whit batteries | 1500–3000 | Low capacity, designed to meet the specific demands of small households or communities. |
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Toledo-Pérez, M.D.C.; Vargas-Méndez, R.A.; Claudio-Sánchez, A.; Osorio-Gordillo, G.L.; Vela-Valdés, L.G.; González-Flores, J.Á.; Rodríguez-Benítez, O. General Approach to Electrical Microgrids: Optimization, Efficiency, and Reliability. Electricity 2025, 6, 12. https://doi.org/10.3390/electricity6010012
Toledo-Pérez MDC, Vargas-Méndez RA, Claudio-Sánchez A, Osorio-Gordillo GL, Vela-Valdés LG, González-Flores JÁ, Rodríguez-Benítez O. General Approach to Electrical Microgrids: Optimization, Efficiency, and Reliability. Electricity. 2025; 6(1):12. https://doi.org/10.3390/electricity6010012
Chicago/Turabian StyleToledo-Pérez, Ma. Del Carmen, Rodolfo Amalio Vargas-Méndez, Abraham Claudio-Sánchez, Gloria Lilia Osorio-Gordillo, Luis Gerardo Vela-Valdés, Juan Ángel González-Flores, and Omar Rodríguez-Benítez. 2025. "General Approach to Electrical Microgrids: Optimization, Efficiency, and Reliability" Electricity 6, no. 1: 12. https://doi.org/10.3390/electricity6010012
APA StyleToledo-Pérez, M. D. C., Vargas-Méndez, R. A., Claudio-Sánchez, A., Osorio-Gordillo, G. L., Vela-Valdés, L. G., González-Flores, J. Á., & Rodríguez-Benítez, O. (2025). General Approach to Electrical Microgrids: Optimization, Efficiency, and Reliability. Electricity, 6(1), 12. https://doi.org/10.3390/electricity6010012