Minimizing Energy Consumption and Powertrain Cost of Fuel Cell Hybrid Vehicles with Consideration of Different Driving Cycles and SOC Ranges
Abstract
:1. Introduction
2. Materials and Methods
2.1. Vehicle Drivetrain Model
2.2. PMP-Based Power Management Strategy
3. Results
3.1. Effective Power Source Size
3.2. Comparison of Fuel Consumption
3.3. Comparison of Powertrain Cost
4. Conclusions
- (1)
- The article compares the fuel consumption and power cost for different energy source combinations at different SOC ranges (aggressive: 0.2–0.8, conservative: 0.5–0.6) for different driving cycles. The simulation results have revealed that fuel consumption of the aggressive SOC range at a power-source combination of (200,150) (battery size [unit], fuel cell size [kW]) is approximately 3.8 times higher than that of the conservative SOC range for the same driving cycle.
- (2)
- To find the effective power-source combinations, based on the entire vehicle powertrain model, PMP optimal control was used to determine the power-source size according to the minimum fuel consumption corresponding to the optimal power output of the FCHV at the time of calculation. The simulation results have shown that the power-source size is positively correlated with fuel consumption for the same driving cycle and SOC range, and the effect of fuel cell size on fuel consumption is more significant than that of the battery.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
A | vehicle front area |
c | turning parameter |
air density | |
effective discharge | |
acceleration force | |
air drag force | |
vehicle traction force | |
F | faraday constant |
Hamiltonian function | |
I | battery operation current |
Stack current | |
M | vehicle mass |
fuel consumption rate | |
number of cells | |
n | the number of electrons acting in the reaction |
N | motor speed rpm |
p | co-state |
Pbatt | battery power output |
net power | |
required of motor | |
required motor power | |
fuel cell stack power | |
wheel radius | |
R | battery internal resistance |
SOC constraint cost function | |
SOC | state of charge |
rate of state of charge | |
torque of motor | |
time step | |
V | battery open circuit voltage |
motor efficiency | |
rolling resistance coefficient | |
drivetrain efficiency | |
turning parameters | |
turning parameters | |
Hydrogen excess ratio |
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Vehicle Mass (without Power Source) | 1400 kg | Shift Point | 2000 [rpm] |
Air density | 1.21 kg/m3 | Maximum Motor input voltage | 500 [V] |
Front area | 1.12 [m2] | Maximum Motor speed | 8250 [rpm] |
Radius of Wheel | 0.29 [m] | Battery type | |
First gear ratio | 3.78 | Voltage | 3.2 V |
Second gear ratio | 2.06 | Capacity | 15 Ah |
Third gear ratio | 1.58 | Cycle Life | 2500 (charge and discharge at 1 C 80% capacity) |
Fourth gear ratio | 1.21 | Fast Discharge Current | 15 A |
Fifth gear ratio | 0.82 | Maximum Discharge Current | 45 A |
Final driving ratio | 4.125 | Charge Current | 15 A |
Driving line efficiency | 0.95 | Battery cell mass | 335 g/cell |
Air drag coefficient | 0.37 | Cost of battery | $831.5/kWh |
Rolling resistance coefficient | 0.014 | Cost of fuel cell | $800/kW |
Motor efficiency | 0.95 | Fuel cell mass | 0.013· kg |
Fuel Cell Size [kW] | ||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
62 | 70 | 80 | 90 | 100 | 110 | 120 | 130 | 140 | 150 | |||
Battery size [unit cell] | 60 | X | X | X | X | X | 90.40 | 98.40 | 106.40 | 114.40 | 122.40 | Cost of power-source combination [$103] |
80 | X | X | X | X | X | 91.20 | 99.20 | 107.20 | 115.20 | 123.20 | ||
100 | X | X | X | X | 84.00 | 92.00 | 100.00 | 108.00 | 116.00 | 124.00 | ||
120 | X | X | X | 76.79 | 84.79 | 92.79 | 100.79 | 108.79 | 116.79 | 124.79 | ||
140 | X | X | X | 77.59 | 85.59 | 93.59 | 101.59 | 109.59 | 117.59 | 125.59 | ||
160 | X | X | 70.39 | 78.39 | 86.39 | 94.39 | 102.39 | 110.39 | 11839 | 126.39 | ||
180 | X | 63.19 | 71.19 | 79.19 | 87.19 | 95.19 | 103.19 | 111.19 | 119.19 | 127.19 | ||
200 | 57.59 | 63.99 | 71.99 | 79.99 | 87.99 | 95.99 | 103.99 | 111.99 | 119.99 | 127.99 |
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Gao, Y.; Liu, C.; Liang, Y.; Hamed, S.K.; Wang, F.; Bi, B. Minimizing Energy Consumption and Powertrain Cost of Fuel Cell Hybrid Vehicles with Consideration of Different Driving Cycles and SOC Ranges. Energies 2022, 15, 6167. https://doi.org/10.3390/en15176167
Gao Y, Liu C, Liang Y, Hamed SK, Wang F, Bi B. Minimizing Energy Consumption and Powertrain Cost of Fuel Cell Hybrid Vehicles with Consideration of Different Driving Cycles and SOC Ranges. Energies. 2022; 15(17):6167. https://doi.org/10.3390/en15176167
Chicago/Turabian StyleGao, Yang, Changhong Liu, Yuan Liang, Sadegh Kouhestani Hamed, Fuwei Wang, and Bo Bi. 2022. "Minimizing Energy Consumption and Powertrain Cost of Fuel Cell Hybrid Vehicles with Consideration of Different Driving Cycles and SOC Ranges" Energies 15, no. 17: 6167. https://doi.org/10.3390/en15176167
APA StyleGao, Y., Liu, C., Liang, Y., Hamed, S. K., Wang, F., & Bi, B. (2022). Minimizing Energy Consumption and Powertrain Cost of Fuel Cell Hybrid Vehicles with Consideration of Different Driving Cycles and SOC Ranges. Energies, 15(17), 6167. https://doi.org/10.3390/en15176167