Optimal Calibration of an Adaptive and Predictive Energy Management Strategy for Fuel Cell Electric Trucks
Abstract
:1. Introduction
2. Performance of Fuel Cell Electric Trucks in Realistic Driving Simulations
2.1. Fuel Cell Vehicle Modeling
2.2. Performance Indicators in Realistic Driving Scenarios
3. Adaptive and Predictive Energy Management System
3.1. Optimal Generation of Predictive SoC and FCS Power References for Entire Route
- maximize the fuel cell system efficiency,
- keep the SoC within the range 50–80%,
- and avoid fuel cell operation at high power.
3.2. On-Board Adaptive Energy Management Strategy
3.3. Optimal Calibration of EMS Parameters Using AVL CAMEO
4. Optimal Calibration Results
Comparison with Non-Adaptive and Non-Predictive Strategies
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
Nomenclature
Desired electric load | |
Road slope | |
v | Vehicle speed |
Desired vehicle speed | |
Electric load | |
Fuel cell power | |
Battery power | |
Electric losses of fuel cell cooling system | |
Electric losses of battery cooling system | |
Nominal fuel cell power | |
Rate of change of fuel cell power | |
Minimum battery power | |
Maximum battery power | |
Battery state of charge | |
Battery temperature | |
Rate of change of battery state of charge | |
Battery open circuit voltage | |
Battery internal resistance | |
Nominal battery charge | |
Ambient temperature | |
Cooling power of chiller system | |
Coefficient of performance of battery cooling system | |
Electric motor power | |
Electric power of external auxiliary systems | |
Mechanical power at wheels | |
Mechanical braking power | |
Resistant force to vehicle motion | |
Vehicle mass | |
Hydrogen consumption | |
Hydrogen consumption rate | |
Fuel cell voltage degradation | |
Share of fuel cell voltage degradation caused by start-up/shut-down cycles | |
Share of fuel cell voltage degradation caused by low-power operation | |
Share of fuel cell voltage degradation caused by high-power operation | |
Share of fuel cell voltage degradation caused by dynamic loading | |
Number of fuel cell starts | |
Time at low-power operation | |
Time at high-power operation | |
Number of equivalent charge/discharge cycles | |
Battery current | |
Deviation from SoC reference | |
Predictive SoC reference | |
Standard deviation of | |
Fuel cell power setpoint | |
Predictive fuel cell power reference | |
Rate of change of fuel cell power setpoint | |
EMS parameter 1 | |
EMS parameter 2 | |
EMS parameter 3 | |
Battery power setpoint | |
Maximum battery temperature |
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EMS | ||||||
---|---|---|---|---|---|---|
Adap. | Pred. | (kg/100 km) | (%/100.000 km) | (−/100.000 km) | (C) | |
Yes | Yes | 11.06 | 1.77 | 965 | 44.1 | 0.0181 |
No | Yes | 11.12 | 1.52 | 1040 | 49.8 | 0.0105 |
No | No | 11.34 | 1.77 | 1130 | 50.6 | 0.1220 |
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Ferrara, A.; Zendegan, S.; Koegeler, H.-M.; Gopi, S.; Huber, M.; Pell, J.; Hametner, C. Optimal Calibration of an Adaptive and Predictive Energy Management Strategy for Fuel Cell Electric Trucks. Energies 2022, 15, 2394. https://doi.org/10.3390/en15072394
Ferrara A, Zendegan S, Koegeler H-M, Gopi S, Huber M, Pell J, Hametner C. Optimal Calibration of an Adaptive and Predictive Energy Management Strategy for Fuel Cell Electric Trucks. Energies. 2022; 15(7):2394. https://doi.org/10.3390/en15072394
Chicago/Turabian StyleFerrara, Alessandro, Saeid Zendegan, Hans-Michael Koegeler, Sajin Gopi, Martin Huber, Johannes Pell, and Christoph Hametner. 2022. "Optimal Calibration of an Adaptive and Predictive Energy Management Strategy for Fuel Cell Electric Trucks" Energies 15, no. 7: 2394. https://doi.org/10.3390/en15072394
APA StyleFerrara, A., Zendegan, S., Koegeler, H. -M., Gopi, S., Huber, M., Pell, J., & Hametner, C. (2022). Optimal Calibration of an Adaptive and Predictive Energy Management Strategy for Fuel Cell Electric Trucks. Energies, 15(7), 2394. https://doi.org/10.3390/en15072394