Electric Mobility: An Overview of the Main Aspects Related to the Smart Grid
Abstract
:1. Introduction
- V2B, V2G, and V2H approaches;
- Opportunities for the participation in ancillary services;
- Charging levels, modes, and methods;
- Opportunities to assist SG’s energy management systems (EMS);
- SWOT analysis of the V2G.
2. Vehicle-to-Everything
2.1. Vehicle-to-Grid
2.2. Vehicle-to-Home
2.3. Vehicle-to-Building
3. Charging Levels, Modes, and Methods
4. Ancillary Services
4.1. Frequency and Voltage Regulation
4.2. Valley Filling and Peak Shaving
4.3. Renewable Energy Supporting and Balancing
4.4. Summary of Ancillary Services Approaches
5. Energy Management in Smart Grids
6. SWOT Analysis of V2G Technology
6.1. Strengths
- This technology provides advantages to both EV users and the electric grid, and the application of this technology is compatible with smart and microgrids [70];
- Due to the occurrence of high demand moments, it is necessary to have some supporting technology, being the implementation of V2G technology cheaper than increasing the production capacity of the available energy sources in the grid or than preparing new energy sources [71];
- This technology increases the quality and stability of the electric grid by providing ancillary systems [72];
- It allows EV owners to profit from buying and selling energy on the grid, where they buy when energy is cheapest, especially at night, and sell it in periods of higher demand, where energy is expensive [73];
- This technology helps the integration of RES, such as wind and solar energy, into the grid [26].
6.2. Weaknesses
- The most significant disadvantage of this technology is the negative impact on the EV battery, causing a reduction in its life cycle, with various charging and discharging processes [27];
- This technology is complicated to implement in an initial phase since it is necessary to have coordination and standardization with the respective grid operators [74];
- At present, most of the major manufacturers do not provide V2G enabled EVs [28];
- This technology, being a recent concept in the market, relies heavily on the “brand reputation and credibility” of EV providers to attract customers [75].
6.3. Opportunities
- Battery life cycles can be extended by implementing control and optimization algorithms [76];
- Develop a new battery management system that protects, measures, and notifies EV users about all factors that may negatively influence their battery [77];
- Development of new control strategies for EVs battery chargers [78].
6.4. Threats
- With the successive uses of EV batteries, their capacity decreases, which consequently influences the energy that the owner of the EV can sell to the grid, decreasing the profit and influencing the amount of energy he can transfer to the grid itself [79];
- Like all those that depend on communication systems, this technology is subject to cyber-attacks, damaging the EVs themselves and the grid itself. For these reasons, it is necessary to apply certain precautions to prevent cyber-attacks as much as possible [80].
7. Discussion and Conclusions
- Nowadays, we can see that the prices of EVs are decreasing and that EVs’ autonomy is increasing. However, the price of EVs is still not affordable for most people. Therefore, developing new policies that encourage EV purchase, e.g., free parking or subsidies that help mitigate the investment made, especially in the initial phase when people are adapting to EV technology. Likewise, develop policies that improve charging infrastructure and penalize ICEVs as well. Thus, through the combination of these policies, the dissemination and the option of EVs become more accessible;
- The battery is one of the most important aspects of EVs and one of the most sought-after by users. However, battery degradation is influenced by several factors such as the charging/discharging processes carried out, the ambient temperature, and the driving cycles, making it difficult to inform the battery status to the respective user and consequently making people unconvinced to opt for EVs. Therefore, developing models and systems that can extract information from the battery in more detail and in real-time is crucial to enable monitoring and control of all phases of battery life, thus keeping users well-informed;
- EVs usage should be conducted in the context of optimal energy management in distribution networks and buildings in order to avoid user discomfort in the charging and discharging profiles, as well as to minimize energy costs.
Author Contributions
Funding
Conflicts of Interest
Nomenclature
AS | Ancillary Services |
DR | Demand Response |
DSO | Distribution System Operator |
EMS | Energy Management System |
EV | Electric Vehicle |
GHG | Greenhouse Gases |
ICEV | Internal Combustion Engine Vehicle |
ISO | Independent System Operator |
MILP | Mixed Integer Linear Programming |
MOPSO | Multi-Objective Particle Swarm Optimization |
PV | Photovoltaic |
RES | Renewable Energy Sources |
SG | Smart Grid |
SOC | State of Charge |
V2B | Vehicle-to-Building |
V2G | Vehicle-to-Grid |
V2H | Vehicle-to-Home |
V2X | Vehicle-to-Everything |
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Ref. | Feature | |||
---|---|---|---|---|
Charging/Discharging | Ancillary Services | Energy Management | V2X | |
[1] | - | - | Driving and resisting forces of EVs’ adoption | - |
[4] | - | Frequency regulation, voltage regulation, spinning reserve | - | V2G for mitigating uncertainty of RES |
[5] | Charging methods, charging levels. | Frequency regulation, voltage regulation, spinning reserve | Centralized and decentralized charging | V2G for optimal management and AS |
[11] | Charging levels, standards | Harmful impacts of EVs in AS | EV potential benefits to the power grid | V2G importance to EV massive deployment |
[15] | - | - | Quantitative metrics to assess reliability | - |
[16] | - | Frequency regulation | - | V2X deployment barriers |
[17] | Charging connectors, charging levels, charging methods, and modes | - | Battery management systems | - |
[18] | Charging levels, modes, standards | - | Bidirectional on-board chargers | V2G interfaces |
[19] | Charging levels, charging methods, and modes | Peak shaving, stability, Voltage regulation | Actual piloting examples | V2G Communication and power system features |
[20] | Charging levels, modes, standards | Negative impacts of EV integration in SG | Power quality issues, Renewables integration support | Communications for EV integration |
[21] | - | - | Smart cities’ strategies to implement EV | - |
[22] | - | - | Factors associated with EV adoption | - |
[23] | - | Grid balancing | - | V2G impact on distribution grids |
[24] | Charging methods, communication standards | - | - | V2G and V2H technologies structures and components |
[25] | Charging modes, charging levels, standards | - | Energy management in different charging places options | V2G communication requirements |
[26] | - | Regulation up, regulation down, spinning reserve non-spinning reserve | Economic and feasibility aspects of V2G | V2G-related pilots |
[27] | - | - | Optimization of energy management targeting minimization of battery degradation | V2G impacts on battery degradation |
[28] | - | - | Business models for energy management for different actors | Business models for V2G |
This paper | Updates the existing charging levels, charging methods, and modes | Presents the different ancillary services that EVs can provide | Presents the EVs’ impact in the energy management of the SG and updates the identification of energy management methods | Focuses on V2B, V2G, and V2H technologies |
Power Levels | Nominal Voltage (V) | Max Current (A) | Power (kW) | Type of Charge | |
---|---|---|---|---|---|
AC | Level 1 | 120, 1-phase | ≤16 | 1.9 | Slow |
Level 2 | 240, 1-phase | ≤30 | ≤7.2 | Slow | |
240, 3-phase | ≤80 | ≤19.2 | Slow | ||
Level 3 | 400, 3-phase | >80 | ≤130 | Slow | |
DC | Level 1 | 200–450 | ≤80 | ≤36 | Slow |
Level 2 | 200–450 | ≤200 | ≤90 | Medium | |
Level 3 | 200–600 | ≤400 | ≤240 | Fast |
Connection Mode | Grid Connection | Voltage (V) | Max Current (A) | Type of Charge |
---|---|---|---|---|
Mode 1 (AC) | 1-phase | 250 | 10 | Slow |
3-phase | 480 | 16 | Slow | |
Mode 2 (AC) | 1-phase | 250 | 32 | Slow |
3-phase | 480 | 32 | Slow | |
Mode 3 (AC) | 1-phase | 250 | 32 | Slow |
3-phase | 480 | 250 | Medium | |
Mode 4 (DC) | - | 600 | 400 | Fast |
Charging Methods | Main Characteristics | ||
---|---|---|---|
Unidirectional | Uncontrolled |
| |
Controlled | Centralized |
| |
Decentralized |
| ||
Bidirectional |
|
Ref. | Summary | Topic |
---|---|---|
[24] | Model based on linear programming that aims at minimizing frequency deviations. | Frequency and Voltage Regulation |
[57] | V2G strategy that permits control of the grid’s primary frequency through the active participation of EVs. | |
[33] | New configuration of a multi-functional grid-connected inverter, which allows voltage regulation. | |
[58] | Model based on predictive control that enables EVs to compensate reactive power of the grid. | |
[59] | Model that schedules the charging/discharging of the EV supporting the grid through frequency and voltage regulation. | |
[50] | Model that allows reducing 19.7% of the building’s peak power consumption. | Valley Filling and Peak Shaving Valley Filling and Peak Shaving |
[51] | Model for small-scale ESM that performs peak shaving of a microgrid. | |
[52] | Strategy based on predictive control that makes it possible to reduce/shave the peak loads of a building. | |
[60] | Aggregator-based DR program for the EVs that participate in V2G systems to regulate the grid’s peak. | |
[61] | Price-based DR strategy that reduces the energy cost and mitigates the peak loads of the respective home. | |
[62] | Multi-agent system framework to analyze the performance of the EMS to perform the peak shaving and valley filling. | |
[36] | Model that reduces the energy cost of the grid and mitigates the impact of photovoltaic production. | Renewable Energy Supporting and Balancing |
[37] | V2G strategy that allows reducing the grid power peak up to 35%. | |
[42] | V2H and V2G strategies that improves the PV self-consumption and reduce the energy cost of the residence. | |
[46] | V2H-based model that aims to minimize the energy costs of smart homes that benefit. | |
[63] | Model that coordinates the charging of EVs, which takes advantage of periods of higher PV generation. |
Feature | RES | Battery | Methods | Case Study | ||||
---|---|---|---|---|---|---|---|---|
Classification | Forecasting | Optimization | Building | Public Park | Home | |||
Charging/ Discharging | - | [5,54,78] | - | - | [14] | [14] | - | - |
Ancillary Services | [35,36,37,46,51,52,63,64,65,79] | [5,59,64] | - | [46,51,52,57,58,59,60,64] | [13,35,50,57,58,59,60,63,64,65] | [34,52] | [33,36,37,50,51,55,62,64,71,72,79] | - |
Energy Management | [35,38,46,48,51,52,63,64,65,66,67,68,69,71,79], | [59,64] | [68,74] | [6,46,51,52,57,58,59,60,64,67,73] | [31,35,38,45,48,50,51,57,58,59,60,61,63,64,66,67,68,69,71,73] | [34,52] | [38,50,51,64,71,72,73,79] | [66,68] |
V2X | [35,36,37,38,42,43,44,45,46,47,48,49,51,52,63,64,65,71,79] | [5,59,64,76,77,78] | [30,41] | [6,46,49,51,52,53,57,58,59,64,66,67,70,73,76] | [13,14,35,36,37,38,39,42,43,44,45,48,49,50,51,53,57,58,59,61,63,64,65,67,70,71,73,76] | [14,34,44,49,52,53] | [33,36,37,38,40,41,42,51,55,62,64,71,72,79], | [42,43,45,46,47,49,61] |
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Barreto, R.; Faria, P.; Vale, Z. Electric Mobility: An Overview of the Main Aspects Related to the Smart Grid. Electronics 2022, 11, 1311. https://doi.org/10.3390/electronics11091311
Barreto R, Faria P, Vale Z. Electric Mobility: An Overview of the Main Aspects Related to the Smart Grid. Electronics. 2022; 11(9):1311. https://doi.org/10.3390/electronics11091311
Chicago/Turabian StyleBarreto, Rúben, Pedro Faria, and Zita Vale. 2022. "Electric Mobility: An Overview of the Main Aspects Related to the Smart Grid" Electronics 11, no. 9: 1311. https://doi.org/10.3390/electronics11091311
APA StyleBarreto, R., Faria, P., & Vale, Z. (2022). Electric Mobility: An Overview of the Main Aspects Related to the Smart Grid. Electronics, 11(9), 1311. https://doi.org/10.3390/electronics11091311