A Systematic Review of Technologies, Control Methods, and Optimization for Extended-Range Electric Vehicles
Abstract
:1. Introduction
2. Extended Range Electric Vehicle Technology
2.1. Technological Classification of EREV
- High instant power and high power density.
- High torque at low speeds for starting and climbing, and high power at high speeds for cruising.
- An extensive speed range including constant-torque and constant-power regions. In this case, the APU, when it is on, needs to operate in the same regions.
- Fast torque response.
- High efficiency over a large speed and torque ranges.
- High reliability and robustness for various vehicle operating conditions.
- Reasonable cost.
2.1.1. Internal Combustion Engine Extended Range (ICE-ER)
2.1.2. Regenerative Shock Absorber Extended Range (RSA-ER)
2.1.3. Regenerative Braking Extended Range RB-ER
2.1.4. Fuel Cell Extended Range (FC-ER)
2.1.5. Micro Gas Turbine Extended Range (MGT-ER)
- A radial compressor compresses the inlet air.
- Air is pre-heated in the recuperator using heat from the turbine exhaust.
- Heated air from the recuperator is mixed with fuel in the combustion chamber and burned.
- Hot gas expands in turbine stages, and the gas’s energy is converted into mechanical energy to drive the air-compressor and the drive equipment (usually generator).
2.1.6. Thermoacoustic Engine Extended Range (TAE-ER)
- The exhaust heat is converted to acoustic energy (mechanical);
- The acoustic energy is converted to electrical energy [58].
2.1.7. Flywheel Energy Storage Extended Range (FES-ER)
2.1.8. Solar Energy Storage Extended Range (SES-ER)
2.1.9. Rotatory Engine Extended Range (RE-ER)
2.1.10. Wind Turbine Extended Range (WT-ER)
3. A Comparison of the Technology Used in EREVs
- System power;
- Amount of extra range;
- Global system efficiency;
- Emissions.
Extended Range System | System Power | Extra Range | Efficiency | Emissions |
---|---|---|---|---|
ICE-ER | 30 kW [12] 35 kW [14] 5.5 kW [35] 111 kW [72] | 232.79% [7] 430 km [12] 51–139 km [35] 380 km [73] 330 km [74] 676 [72] | 20–40% [75,76] 31% [12] | Low |
Fuel cell-ER | 20 kW [77] 85–83 kW [78] 1200 W [47] 25 kW [79] 128 kW [80] | 500 km [77] 650 km [80] 665 km [81] 594 km [81] 1500 km [82] | 70% [77] 63.6–72.4% [83] 43% [47] 55.21% [79] | No |
Rotary engine-ER | 3.8 kW [84] 20 kW [85] | 80 km [85] 321 km [86] | 73% [87] 78% [84] 77% [85] | Low |
RB-ER | 14.8 kW [88] 55.75–82.66 kJ [89] 298.75 kJ [90] | 32.1–47.7% of the total recoverable energy [89] 1.18% SOC improve [90] | 79–94% [88] 30–60% [26] 47% [89] | No |
MGT-ER | 32 kW [91] 100 kW [92] 63.3 kW [93] | 370 km [94] | 47.2% [95] 28% [91] 30% [92] 35% [94] 38% [93] | Low |
PVC-ER | 68.2–300 W [96] | 19.6 km [96] | 91.2% [96] 20.2–23% [96] | No |
WT-ER | 2.64 kW [97] 0.1–1.1 kW [70] | add up to 10% [98] 7.27 km [97] | 75% [97] 75–90% [70] | Low |
FES-ER | 40 kW to 1.6 MW [99] 60–101 kW [100] 1–20 kW [101] | 50% milage over [100] 1.17% milage over [102] | 60% [100] 90–95% [103] 70–90% [104] | No |
TAE-ER | 710 W [105] 1029 W [106] 58 W [107] 1.5 kW [108] | 80% fuel consumtion savings [59] | 33.8–38.7% [60] 30% [105] 5.4% [106] 18% [78] 16% [108] | Low |
RSA-ER | 8–40 W [100] 0.74–0.78 kW [109] 19.2–67.5 W [110] 4.3 W [38] | Can power an 8 W lidar for 323 days or a 2 W camera for 1292 days [100] | 70–80% [100] 71–84% [111] 33–63% [110] 87% [38] 16% [38] | No |
3.1. EREV Configuration
- The traction force, which can be forward, backward, or four-wheel drive.
- The position of the engine.
- If it has a gearbox and the type of differential, mechanical or electronic.
EREV Topological Configurations
3.2. Key Components of an EREV
4. Control and Management
- Optimize the system’s energy flow;
- Predict the remaining energy and hence the residual driving cycle;
- Turn on the APU to charge and improve the autonomy with a suitable control method;
- Suggest more efficient driving behavior;
- Direct energy regenerated from braking to receptive energy sources such as the batteries;
- Modulate temperature control as a response to external climate;
- Propose battery charging;
- Analyze the operation history of the energy source, especially the battery;
- Diagnose any incorrect behavior or defective components of the energy source, or malfunctions of any component.
Control Methods/Strategy | Author | Controlled System | Technology | Purpose | Application |
---|---|---|---|---|---|
Constant power control strategy | [3] | BMS | ER-ICE | The lowest permissible level of SOC after the drive charge the vehicle | Charging Management Arterial Roads |
A power follower control strategy | [3] | BMS | ER-ICE | The lowest permissible level of SOC after the drive charge the vehicle | Charging Management Express Way |
Proportional resonant control strategy | [8] | Generator | ER-ICE | To maintain the efficient region of the generator | Generate more energy |
Partial power following control strategy | [8] | ICE | ER-ICE | To maintain the efficient region to operate the ICE | Reduce fuel consumption |
A control strategy based on Pontryagins Minimum Principle (PMP) | [9] | ICE | ER-ICE | Monitors the current SOC of the battery | Minimizes the energy consumed during driving |
Predictive control-based energy management | [90] | Fuel Cells | ER-FC | Forecasted speed | Minimize hydrogen consumption |
Regenerative Braking control strategy (RRBCS) | [28] | Regenerative braking | ER-RB | The better capacity of the regenerative braking energy consider slip ratio of the tire | Coordinate regenerative braking torque and mechanical friction to maximize energy recovery and to ensure the braking efficiency |
A normal control strategy based on a state of charge (SOC) | [12] | ICE | ER-ICE | Monitors the battery state of charge (SOC) | Reduce CO2 emissions |
Automatic Mechanical Transmission (AMT) Shift control strategy | [43] | Regenerative braking | ER-RB | Identify the braking intention and transmission shifts correctly | Improve the braking energy recovery rate, and ensure the braking safety a stability |
Start-stop control strategy | [33] | ICE- Generator | ER-ICE | Reduce the start-stop times and running time | Fuel economy |
Adaptive power management strategy PMS | [18] | ICE | ER-ICE | Asses the battery SOC and vehicle speed | Improve energy savings, the fuel, and electrical consumption |
Method of quantitative estimation | [120] | Generator | ER-ICE | Optimize the design parameters aiming at the maximum efficiency in the continuos rated | Find maximum torque per ampere |
Charge-deplete-charge- sustain (CDCS) strategy | [15] | ICE- Generator | ER-ICE | Asses the battery SOC and vehicle speed | Energy efficiency, reduce energy consumption and reduce costs of operation |
Thermal management system to battery cooling strategy | [22] | Battery | ER-ICE | Quantify the heat generation sources and accurately predicting cell temperatures | Improve longevity, safety, and overall performance |
A data driving behavior predictive control strategy | [23] | Driving behavior | ER-ICE | Predict the EV power requests and optimize their control inputs | Improving the driving range and battery life while maintaining thermal comfort for the passengers |
Mixed-integer convex program | [37] | Powertrain | ER-ICE | Formulate an economic optimization | All the quantities to minimize are expressed as a monetary variable |
The convex optimal control problem | [36] | Powertrain | ER-ICE | Optimization over the entire driving cycle is computed offline | Achieve the best possible energy consumption. |
The optimal operation curve control strategy | [29] | ICE | ER-ICE | Research and control the vehicle required torque | Control the power allocation of APU and batteries to reduce fuel consumption and obtain good fuel economy |
Multi-objective hierarchical prediction energy management strategy | [52] | Fuel cells | ER-FC | Propose a Global state of charge rapid planning method based only on the expected driving distance | Achieve optimal fuel cell life economy and energy consumption economy |
A novel energy-aware velocity planning | [32] | ICE | ER-ICE | Propose energy-aware velocity planning | Improve electric vehicle fuel efficiency |
Pseudospectral optimal control | [34] | APU | ER-ICE | Maintain engine speed constant is better for the dynamic characteristics of APU | Different limits of the APU power changing rate significantly influence the fuel consumption |
Model predictive control | [121,122] | Powertrain | ER-ICE | Propose a computationally tractable model prediction control (MPC) | Prediction horizon so that energy consumption is minimized |
5. System Optimization
- As the interactions among various subsystems significantly affect the performances of EREVs, the significance of those interactions should be analyzed and taken into account.
- The model’s accuracy is usually correlated with the model’s complexity, but the latter may run counter to usability, tradeoffs among the accuracy, complexity, usability, and simulation time should be considered.
- The system voltage generally causes contradictory issues for EREV design. For example, the battery weight (higher voltage requires more battery modules in series, and hence more weight for the battery case). Similarly, motor drive voltage and current ratings, auxiliary power unit range, energy generated, acceleration performance, driving range, and safety should be optimized at the system level.
- The adoption of multiple energy sources helps to increase the driving range. For the EREV case, the APU should be optimized based on the vehicle’s performance and cost requirements.
5.1. Controller Optimization for Plant
5.2. Multidisciplinary Optimization
5.3. Optimal Control
5.4. Size Optimization
6. The Process of Designing an EREV
7. Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
EV | Electric vehicle |
EREV | Extended range electric vehicle |
APU | Auxiliary power unit |
Series HEV | Series hybrid electric vehicles |
RE | Range extender |
ICEV | Internal combustion engine vehicle |
SOC | State of charge |
PHEV | Plug-in hybrid electric vehicle |
FWD | Forward wheel drive |
RWD | Rear-wheel drive |
AWD | All wheel drive |
ICE | Internal combustion engine |
ICE-ER | Internal combustion engine extended range |
RSA-ER | Regenerative shock absorber extended range |
RB-ER | Regenerative braking extended range |
RBS | Regenerative braking system |
RRBCS | Revised regenerative braking control strategy |
AMT | Automatic mechanical transmission |
FC | Fuel cell |
FC-ER | Fuel cell extended range |
MGT | Micro gas turbine |
MGT-ER | Micro gas turbine extended range |
TAE | Thermoacoustic engine |
TAE-ER | Thermoacoustic engine extended range |
TAC | Thermoacoustic converter |
FES | Flywheel energy storage |
FES-ER | Flywheel energy storage extended range |
PVC | Photovoltaic cell |
SES | Solar energy storage |
RE | Rotary engine |
RE-ER | Rotary engine extended range |
WT | Wind turbine |
WT-ER | Wind turbine extended range |
GHG | Greenhouse gases |
EMS | Energy management system |
BMS | Battery management system |
OEM | Original equipment manufacturer |
CAGR | Compound annual growth rate |
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Puma-Benavides, D.S.; Izquierdo-Reyes, J.; Calderon-Najera, J.d.D.; Ramirez-Mendoza, R.A. A Systematic Review of Technologies, Control Methods, and Optimization for Extended-Range Electric Vehicles. Appl. Sci. 2021, 11, 7095. https://doi.org/10.3390/app11157095
Puma-Benavides DS, Izquierdo-Reyes J, Calderon-Najera JdD, Ramirez-Mendoza RA. A Systematic Review of Technologies, Control Methods, and Optimization for Extended-Range Electric Vehicles. Applied Sciences. 2021; 11(15):7095. https://doi.org/10.3390/app11157095
Chicago/Turabian StylePuma-Benavides, David Sebastian, Javier Izquierdo-Reyes, Juan de Dios Calderon-Najera, and Ricardo A. Ramirez-Mendoza. 2021. "A Systematic Review of Technologies, Control Methods, and Optimization for Extended-Range Electric Vehicles" Applied Sciences 11, no. 15: 7095. https://doi.org/10.3390/app11157095
APA StylePuma-Benavides, D. S., Izquierdo-Reyes, J., Calderon-Najera, J. d. D., & Ramirez-Mendoza, R. A. (2021). A Systematic Review of Technologies, Control Methods, and Optimization for Extended-Range Electric Vehicles. Applied Sciences, 11(15), 7095. https://doi.org/10.3390/app11157095