Optimal Sizing and Energy Management of Microgrids with Vehicle-to-Grid Technology: A Critical Review and Future Trends
Abstract
:1. Introduction
- Present different topics and challenges that can be investigated in the field of MGs and V2G technology;
- Provide information on the latest technologies and key locks towards future research topics in the field of MGs.
2. Microgrids Main Components
2.1. DER, ESS and Loads in Microgrids
2.1.1. Evolution of RERs Technologies
- Solar energy, which includes three types: photovoltaic panels, solar heating, and concentrating solar power;
- Wind energy, where two types can be distinguished, onshore and offshore wind turbines;
- Marine energy, such as wave energy converters, tidal stream, tidal range [3].
2.1.2. Evolution of ESSs Technologies
2.1.3. Evolution of Loads
2.2. Evolution of Communication Tools
2.3. Evolution of Electric Vehicles
- Voltage and frequency control:
- –
- Voltage stability is maintained when there is a balance between reactive power supply and demand. EVs act, instantly, to regulate signals that could be separately handled by each EV. A battery charger is used to integrate voltage regulation. The EV charger can manage the charging current in such a way to have the necessary phase angle to compensate for capacitive or inductive reactive power [63]. The charging stations can be managed such that at a low voltage, EV charging stops, and it resumes when the voltage level is high.
- –
- Frequency stability is maintained when there is a balance between active power supply and demand. In [63], frequency regulation techniques are presented using large cyclic generators, but they are expensive. The rapid charging and discharging of EV batteries can offer an alternative to frequency regulation [27]. Three types of control to maintain stable frequency exist, which are primary, secondary and tertiary control as described in [64].
- Load balancing and peak power (load management): The bi-directional operation of the system can manage the electrical charge, such that in peak hours it discharges, and it charges when demand is low, i.e., during the night and off-peak hours. In [65], a smart charging algorithm is developed to allow peak load management and to shift the consumption curve. Shifting the load can be achieved through load coordination, reducing the impact of the EV fleet on the grid. The objective of the controlled battery charger is to shift the energy demand and level the peak load. In [66], authors suggest that shifting the load curve by peak power control is the cheapest solution for load management.
- Support to renewable energy resources: can be a backup source for renewable resources during their low output, providing alternative energy production [25]. Centralized power plants need to reduce their production by decreasing the number of distributed generation units to restore the balance. Conversely, EVs can store excess energy produced by RERs when they are in peak production, and then be discharged and fed into the grid when demand is higher [28]. In [67], the authors show that distribution networks with smartgrids and RERs are much cleaner than other systems and save industries USD 3.58 per vehicle per day.
3. Microgrids Classification
3.1. Type of Power
3.2. Type of Control
3.3. Type of Operation
4. Electric Vehicles Integration into Microgrids
4.1. Network and EVs Constraints
- Load balancing;
- Harmonic elimination;
- Load diversion to avoid spikes;
- Optimisation of the operational cost of the system;
- Improvement of load factors;
- Minimising emissions;
- Encouraging RERs integration.
- Centralized implementation: the network controls all the system including the EVs. This category is applicable for systems with very large charging stations.
- Stand-alone implementation: it does not allow for unified control. However, the features are flexible, convenient and not dependent on time or location.
- Implementation in an MG: The EVs are integrated to perform just in one area. There is no exchange with the main network. It can ensure self-sufficiency in this area.
- Battery replacement: reducing the number of storage batteries by integrating more EVs into the system. The interest is to minimize the initial investment and maintenance cost.
- The distribution of charging stations, and EVs.
- The management of EV charging, which remains complicated due to the unpredicted use of EV by users.
- The bidirectional charging, requiring a low-loss charger.
- The impact of the concept on batteries performance (battery degradation, reduced life cycle, etc.).
- Use smart approaches to manage the operation of all EVs. An algorithm is proposed in [91], which showed some drawbacks as it makes the problems more complicated and does not take into consideration the proprietary side of the EVs.
- Use a decentralised model as in [17]: the principle is to put an intermediate system. Each area containing a number of EVs is managed by a management system, so the main network will not handle the details of each EV.
4.2. Power Quality Standards
- IEC 61851, which regulates:
- –
- The non-isolated charging system for electric vehicles that defines the charging modes;
- –
- The types of outputs from the charging stations (both AC and DC) to the EV;
- –
- Safety requirements for EMC and for the connector socket.
- The connectors for the EV are designed according to IEC 62196 and SAE [83].
- Communications between the charging station and the EV are regulated by SAE . This regulates the communication between the EV and the power grid to achieve energy transfer. The ISO 15118 standard defines the characteristics of the communication interface between the vehicle and the electrical network [94].
4.3. Main Contributions Regarding V2G
5. Microgrid Sizing
5.1. Components Sizing, MG Siting and Operation Scheduling
5.2. AC Microgrids Sizing
5.3. DC Microgrids Sizing
6. Energy Management Systems
- Minimizing the operating costs of the micro-grid;
- Maximising the output power of the generators at a given time;
- Minimising environmental costs.
6.1. Microgrid Optimal Operation and Resilience
6.2. ESSs Constraints
6.3. Software for EMS
6.4. Optimization Methods for EMS Problems Solving
- Trajectory meta-heuristics, with main methods such as Simulated Annealing, Tabu Search, Greedy Randomized Adaptive Search Procedures, Variable Neighbourhood Search, and Iterated Local Search.
- Population-based meta-heuristics, suitable methods are described such as GA and particle swarm optimization (PSO),
- Bio-inspired metaheuristics, which are metaheuristics that imitate nature. Main methods are: Evolutionary algorithms, Swarm intelligence and Ecology-based algorithms.
6.4.1. Linear and Non-Linear Programming Methods
6.4.2. Metaheuristic Methods
6.4.3. Dynamic Programming Techniques
6.4.4. Multi-Agent Systems
6.4.5. Stochastic Methods and Robust Programming
6.4.6. Neural Network Techniques
6.4.7. Fuzzy Logic Methods
6.4.8. Others Methods
7. Future Research and Challenges in MGs
7.1. Power-to-Gas Technology
7.2. Scalable Communication
7.3. Cyber-Security Issues
7.4. Machine Learning
8. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
Microgrid | |
Energy Management System | |
Renewable Energy Resources | |
Energy Storage System | |
Diesel Generator | |
Distributed Energy Resources | |
Electric Vehicle | |
Vehicle to Grid | |
P2G | Power to Gas |
Direct Current | |
Alternative Current | |
Photovoltaic Panel | |
Lithium Ion Battery | |
Redox Flow Battery | |
Na-ion Batteries | |
Electrochemical Capacitors | |
Flywheel | |
International Electrotechnical Commission | |
Genetic Algorithm | |
Artificial Neural Networks | |
Linear Programming | |
Integer Linear Programming | |
Integer Programming | |
- | Nondeterministic Polynomial-time hard |
Heat pumps | |
Flywheel | |
Numerical weather information | |
Mixed Integer Programming | |
Mixed integer linear programming | |
Particle Swarm Optimisation | |
Integer minimisation problem | |
Evolutionary strategy | |
Ant Colony Optimisation | |
Peak-to-average ratio | |
Superconducting Magnetic Energy Storage | |
Multi-agent systems | |
Karush–Kuhn–Tucker | |
Sequential quadratic programming |
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Ref. | Main Contributions |
---|---|
[22] | In this paper, the optimisation and control techniques are presented and criticized in detail. Optimization methods are classified into several classes to allow the understanding of the advantage and disadvantage of each of them, and their use cases. The main components of the MG and its modes of operation are also presented. |
[23] | The authors presented a comparative study of different EMS in MGs, classified the optimisation objectives, system constraints, solution methods and simulation software used in grid-tied and autonomous MGs. |
[24] | In this work an agricultural investment in the Algerian Sahara is carried out. A hybridization is initiated with local renewable solar energy resource, mainly PVs. This work is limited to the hydraulic pumped storage system, which is effective due to its geological aspects and the subject matter. The proposed management strategy considers temporal solar energy and combines it with pumping and online fuel consumption optimisation. |
[25] | Various configurations and contracts available for the purchase/sale of energy from/to the grid are analysed and compared. The results show the potential to reduce energy costs, pollution and grid reliance. |
[26] | The study presents various functionalities of V2G, such as active power regulation, reactive power support, load balancing, filtering of current harmonics, etc. At the same time, disadvantages are presented such as, battery degradation, communication costs between EVs and the grid, as well as the need for upgraded grid infrastructure. |
[27] | The authors developed models to compute the grid supply capacity of three types of electric vehicles. Several advantages are presented, such as increased stability and reliability of the power grid, reduced costs of the power system, and storage of renewable energy to overcome the intermittency issue. |
[28] | This work shows that there could be a good combination between EVs and power grids, providing an additional storage system. Excess energy produced by RERs can be stored in EVs for driving and released again when consumption demand increases. |
[28] | This work shows that uncoordinated charging causes voltage problems. Authors address this problem by adding a voltage constraint in the optimization model that makes the power bidirectional. |
[29] | In the context of smart control strategies in the Kansai region of Japan, through scenario analysis, the authors evaluate the influence of the implementation of PV, electric vehicles (EV) and heat pumps (HP) in future smart grids. The system also contributes to emission reduction. |
[30] | A flywheel storage system is used in this work. The authors model the autonomous hybrid system between the DG, wind turbine and flywheel. Results show that this storage system can improve the dynamic performance of the hybrid grid in several situations, such as wind power uncertainty, slow response of the DG and load uncertainty. |
[31] | A DC MG based on supercapacity for energy storage is achieved. A control technique is developed for controlling a bi-directional converter that connects the grid with the supercapacity providing the switch and play function. It is demonstrated that supercapacity can reduce the impact of oscillations due to transients in resources and load. |
[32] | The authors designed a multi-layer control allowing a better integration of the DC MG. The objectives are to avoid unwanted injection, to reduce the MG power fluctuations, and to lower the peak load of the network by using a predictive interface system. |
DERs | Loads | ||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
CGs | RERs | ESSs | Type | ||||||||||
CG | PV | Wind | Marine | BIO | BAT | SC | FW | H2 | Hydro | Compressed Air | Shedded | Critical | |
[33] | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ||||||
[31] | ✓ | ✓ | ✓ | ✓ | |||||||||
[34] | ✓ | ✓ | ✓ | ✓ | |||||||||
[30] | ✓ | ✓ | ✓ | ✓ | |||||||||
[35] | ✓ | ✓ | ✓ | ✓ | ✓ | ||||||||
[36] | ✓ | ✓ | ✓ | ✓ | ✓ | ||||||||
[37] | ✓ | ✓ | ✓ | ✓ | ✓ | ||||||||
[38] | ✓ | ✓ | ✓✓ | ✓ | ✓ | ||||||||
[39] | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ||||
[40] | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ |
Methods | Advantages | Drawbacks |
---|---|---|
Linear programming methods | It allows an optimal use of productive resources. It improves the quality of decisions by providing possible and practical solutions. | The objective function and the constraint equalities or inequalities must be linear, which is not always possible. |
Non-Linear programming methods | It relies on simplified techniques to solve complicated problems. It gives several possible optimal solutions, which is an advantage over the mixed-integer linear programming (MILP) formulation. | The computation is done in several iterations, and it is therefore computationally expensive. |
Heuristic methods | It performs decision making faster and simply through shortcuts and good calculations using rules of thumbs such as intelligent guessing, trial and error, process of elimination, past formulas and analysis of historical data. | The end result may not be the optimal solution, the decision made may be inaccurate and the data selected may be insufficient. |
Stochastic methods | It is completely explicit about the assumptions made, and it allows these assumptions to be tested using a number of techniques. As it models random variation in decision variables, it is possible to estimate the uncertainty of these variables and the optimal solution found. | It may be based on very simple and unrealistic assumptions. Its model is too computationally complex to implement and requires quite extensive statistical and computer skills than some simpler deterministic models. |
Dynamic programming methods | Dynamic programming divides the main problem into several less complex problems, which can be solved more easily from the smallest to the largest by keeping the intermediate solutions. | Solving problems recursively makes the process a bit complex. |
Fuzzy logic methods | The structures of fuzzy logic models are not complex, justifiable and robust because it does not require exact information sources. It can be programmed according to the circumstances in case of sensors failure. | The results are not always accurate. They are therefore perceived as depending on suspicions, sometimes this reasoning is confused with the probability hypothesis. |
Neural network methods | Artificial neural networks perform several calculations at once, can give results even with a lack of information thanks to its automatic learning process and its ability to generalize. | It needs processors with parallel processing power, according to their structure. |
Multi-agent systems methods | This approach increases the efficiency of the solution mainly through the application of negotiation rules, evaluation, and coordination. | This technique complicates a scheduling problem as it has to decompose criteria for each individual agent. |
Ref. | Methods | Contributions | Limitations |
---|---|---|---|
[206] | Mixed integer non linear programming | Minimisation of general operating costs while maintaining the safety of the MG and ensuring their autonomy. | Two very important points are not taken into consideration: battery ESSs and the reduction of emission costs. |
[74] | Mixed integer non linear programming | The developed system can take into account the effects of grid imbalance and correct potential reactive power deficits. | Voltage limits are not taken into account. Detailed three-phase models are needed to overcome this problem. |
[207] | Non-Linear Programming | Demand mitigates the variability of renewable resources by allowing user demand to be controllable. | A robust optimisation method must be carried out in response to the demand to overcome the uncertainties of the microgrid. |
[153] | Non-Linear Programming | The developed method allows to optimally manage the use of the battery while minimizing the grid power. | The uncertainty of the PVs and the load are not taken into consideration. |
[156] | PSO algorithm | The operating costs of the DGs are well studied by selecting the right sizing and sitting. | Emissions minimisation is not considered. It must be taken into account in systems containing DGs. |
[208] | Evolutionary strategy | An efficient optimisation is presented that reduces the operating cost of PVs with batteries with an hourly variation in consumption considered in the study. | Seasonal and other types of consumption variations should be taken into account to obtain more accurate results. |
[209] | Particles Swarm Optimization | The wind uncertainty is taken into account as well as several important components such as PVs, wind turbines, battery bank, electrolyser, fuel cell and hydrogen tank. | The uncertainty of the wind leads to an increase in the cost, which must also be optimised. |
[210] | GA and MILP | The used technique is a very flexible set of sub-functions, an intelligent convergence behaviour, as well as diversified search approaches and penalty methods for constraint violations. | More parameters can be added in this approach to obtain a self-adopting system. |
[159] | Chaotic quantum genetic algorithm | The economic resolution by this method is efficient and presents interesting solutions. | Storage systems are not taken into account, neither is its uncertainty. |
[166,182] | Stochastic | The algorithm has a faster convergence rate. It effectively reduces the operational cost by taking into account the inherent intermittency and variability of renewable energy resources. | The proposed model can also be adapted to take into account other uncertainties such as load and customer behaviour. |
[211] | Multi-agent systems | This approach makes multi-agent systems well suited to the use and control of MGs. A step-by-step conceptual framework and platforms for the construction of multi-agent systems are developed. | Hardware incompatibility, the uncertainty inherent in the complexity of the software and the security risk for malicious external actors limit the use of management information systems for monitoring MGs. |
[196] | Fuzzy logic approach | The adapted fuzzy approach improved the coefficients of the PI voltage and frequency controllers. | This work is only one part of energy management of AC MGs. It must be adapted to deal with DC and hybrid microgrids. |
[200] | Fuzzy logic approach | The proposed methodology allows a control of the charge and discharge, which gives good results. The power consumption is effectively reduced. | A forecasting system is required to complete the model. |
[194] | Fuzzy logic approach | The results show that the load profile is well regulated by fuzzy logic rules. | Emissions should be taken into account to make the model more realistic. The ESSs also need to be inserted (batteries, for instance) allowing for islanded operation. |
[212] | Multi-agent system | Decision-making is facilitated by this method. | The approach is greatly complicated by the requirements for resilient, robust and rapid solutions. |
[190] | Artificial neural network | The technique is very effective, as it allows the optimal angle of inclination of pVs to be estimated with an accuracy of only 3 degrees. | This work is not an EMS but it can be integrated into EMS for more decision making. |
[183] | Stochastic programming | The most important advantage of this algorithm is the fast transfer of information between agents, allowing global optima to be found, even for complicated systems. | The only missing part is the storage system. |
[179] | Robust programming | The approach is useful for optimising the operation of wind-battery-diesel hybrid networks. | Optimisation of controllable load transfers is not assured. |
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Ouramdane, O.; Elbouchikhi, E.; Amirat, Y.; Sedgh Gooya, E. Optimal Sizing and Energy Management of Microgrids with Vehicle-to-Grid Technology: A Critical Review and Future Trends. Energies 2021, 14, 4166. https://doi.org/10.3390/en14144166
Ouramdane O, Elbouchikhi E, Amirat Y, Sedgh Gooya E. Optimal Sizing and Energy Management of Microgrids with Vehicle-to-Grid Technology: A Critical Review and Future Trends. Energies. 2021; 14(14):4166. https://doi.org/10.3390/en14144166
Chicago/Turabian StyleOuramdane, Oussama, Elhoussin Elbouchikhi, Yassine Amirat, and Ehsan Sedgh Gooya. 2021. "Optimal Sizing and Energy Management of Microgrids with Vehicle-to-Grid Technology: A Critical Review and Future Trends" Energies 14, no. 14: 4166. https://doi.org/10.3390/en14144166
APA StyleOuramdane, O., Elbouchikhi, E., Amirat, Y., & Sedgh Gooya, E. (2021). Optimal Sizing and Energy Management of Microgrids with Vehicle-to-Grid Technology: A Critical Review and Future Trends. Energies, 14(14), 4166. https://doi.org/10.3390/en14144166