Co-Design of CVT-Based Electric Vehicles
Abstract
:1. Introduction
- :
- An SST-based EV model including energy dynamics and thermodynamics with reference to a series production vehicle is firstly created. It is developed based on static efficiency maps represented by lookup tables, which is validated against measurement data from real-world driving. It replicates the physical behavior of the vehicle in reality.
- :
- A CVT-based EV model is then developed based on , where only the SST is replaced by a CVT (an off-the-shelf component, which is not optimized). Other components, for example, the battery and EM, are the same. The CVT model is created based on experimental data from a test rig.
- :
- Component models from are convexified to fit the measurement data from real-world driving and experimental data from the test rig. is subsequently optimized with the co-design optimization strategy.
2. Problem Definition
3. System Modeling
3.1. Derivation of Convex Models
3.2. Drive Cycle
3.3. Longitudinal Dynamics
3.4. Convex CVT Model
3.5. Convex EM Model
3.6. Convex EM Power Limitation Model
3.7. Thermal EM-CVT Model
3.8. Convex Battery Model
3.9. Convex Mass and Cost Models
4. Optimization Results and Discussion
4.1. Control and Design Freedom
4.2. Sequential Design versus Simultaneous Design
- SD: Based on , assuming that the EM size is fixed (i.e., ) in order to achieve the required performance (Section 1), the goal is to find the CVT speed ratio over time, CVT and battery size reducing the TCO.
4.3. Towards a Low-Power Application
- LP: Based on , assuming that there are no performance requirements (Section 1), the aim is to find the optimal design and control variables reducing the TCO while satisfying drive cycle requirements.
4.4. Thermal Performance
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
AC | Alternating Current |
BA | Battery |
CAN | Controller Area Network |
CP | Convex Programming |
CVT | Continuously Variable Transmission |
DC | Direct Current |
DNR | Drive, Neutral and Reverse |
DP | Dynamic Programming |
EC | Energy Consumption |
ELOP | Electric Oil Pump |
EM | Electric Machine |
EV | Electric Vehicle |
FD | Final Drive |
ICDC | Intercity Drive Cycle |
KPI | Key Performance Indicator |
LP | Low Power |
OOL | Optimal Operating Line |
PSO | Particle Swarm Optimization |
RL | Road Load |
SC | System Cost |
SD | Sequential Design |
SST | Single Speed Transmission |
TCO | Total Cost of Ownership |
TMS | Thermal Management System |
TR | Transmission |
VA | Variator |
VCU | Vehicle Control Unit |
WH | Wheel |
WLTC | Worldwide Harmonized Light Vehicles Test Cycle |
Appendix A. SST-Based EV Model
Appendix A.1. Longitudinal Dynamics
Parameter | Value | Unit | Description |
---|---|---|---|
1.18 | kg/m3 | Density of air | |
0.27 | - | Aerodynamic drag coefficient | |
2.21 | m2 | Frontal area | |
0.00724 | - | Rolling resistance coefficient | |
1 | kgm2 | Wheel inertia | |
0.312 | m | Wheel radius | |
0.98 | - | Fixed gear efficiency | |
0.985 | - | Final drive efficiency | |
2.63 | - | Underdrive ratio | |
0.7 | - | Overdrive ratio | |
430 [19] | J/kgK | Specific heat capacity of EM | |
630 [23] | J/kgK | Specific heat capacity of CVT | |
630 [23] | J/kgK | Specific heat capacity of SST | |
4090 | J/kgK | Specific heat capacity of EM cooling medium | |
1000 | J/kgK | Specific heat capacity of air | |
0.62 [23] | - | CVT heating coefficient | |
2000 | W/m2K | Heat transfer coefficient between EM and its cooling medium | |
10 | W/m2K | Heat transfer coefficient between EM and ambient air | |
10 | W/m2K | Heat transfer coefficient between CVT and ambient air | |
111 | W/K | Heat transfer coefficient between EM and CVT | |
125 | W/K | Heat transfer coefficient between EM cooling medium and CVT oil | |
0.2 | m2 | Heat exchange area between EM and its cooling medium | |
0.32 | m2 | Heat exchange area between EM and ambient air | |
0.17 | m2 | Heat exchange area between CVT and ambient air | |
1.5 | kg | Cooling medium mass | |
0.35 | kg/s | Coolant flow rate | |
0.6 [34] | - | Radiator effectiveness | |
65 | °C | Maximum EM temperature | |
65 | °C | Maximum cooling medium temperature at EM outlet | |
65 | °C | Maximum cooling medium temperature at EM inlet | |
46.532 | km | Two repeated WLTC length | |
300,000 | km | Traveled distance of vehicle in its lifetime | |
0.23 | €/kWh | Price of electricity | |
13 [23] | €/kg | Specific cost of CVT | |
1000 | € | Specific cost of EM | |
250 | €/kWh | Specific cost of battery | |
25.4 | kWh | Battery energy | |
264 | - | Battery cells |
Appendix A.2. Single-Speed Transmission
Appendix A.3. Electric Machine
Appendix A.4. Thermal EM-SST Model
Appendix A.5. Battery
Appendix B. CVT-Based EV Model
Appendix C. Convex Programming
Appendix D. Main Parameters of EV Model
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Parameter | Unit | |||
---|---|---|---|---|
Transmission ratio | - | 9.02 | [4.47, 16.8] | [3.5, 11.68] |
EM scaling factor | - | 1 | 1 | 0.79 |
Battery cells | - | 264 | 264 | 253 |
Maximum EM torque | Nm | 290 () | 290 | 228 |
EM base speed | rpm | 3293 () | 3293 | 4188 |
Maximum EM power | kW | 100 () | 100 | 100 |
Curb weight | kg | 1252 () | 1252 | 1252 |
Transmission mass | kg | 26 () | 56 () | 52 |
EM mass | kg | 74 () | 74 | 58 |
Battery mass | kg | 318 () | 318 | 303 |
Driver mass | kg | 90 () | 90 | 90 |
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Wei, C.; Hofman, T.; Ilhan Caarls, E. Co-Design of CVT-Based Electric Vehicles. Energies 2021, 14, 1825. https://doi.org/10.3390/en14071825
Wei C, Hofman T, Ilhan Caarls E. Co-Design of CVT-Based Electric Vehicles. Energies. 2021; 14(7):1825. https://doi.org/10.3390/en14071825
Chicago/Turabian StyleWei, Caiyang, Theo Hofman, and Esin Ilhan Caarls. 2021. "Co-Design of CVT-Based Electric Vehicles" Energies 14, no. 7: 1825. https://doi.org/10.3390/en14071825
APA StyleWei, C., Hofman, T., & Ilhan Caarls, E. (2021). Co-Design of CVT-Based Electric Vehicles. Energies, 14(7), 1825. https://doi.org/10.3390/en14071825