Research on Multi-Objective Compound Energy Management Strategy Based on Fuzzy Control for FCHEV
Abstract
:1. Introduction
2. Powertrain Structure and Key Component Characteristics of FCHEV
2.1. Powertrain Structure of FCHEV
2.2. Fuel Cell Model
2.3. Supercapacitor Park Model
2.4. DC/DC Model
2.5. Motor Model
2.6. Complete Vehicle Model
3. Energy Management Strategy
3.1. Influencing Factors of Fuel Cell Durability
- Start–stop condition
- 2.
- Idling condition
- 3.
- Frequent load changes condition
- 4.
- Overload condition
3.2. Design of Compound Energy Management Strategy
3.2.1. Fuzzy Logic Control Strategy
Variable Design for Inputs and Outputs
Fuzzy Distribution of Input and Output Variables
Formulation of Fuzzy Rules
- Meet the overall vehicle dynamics requirements: the sum of the fuel cell and supercapacitor park’s output power should be sufficient to fulfill the total vehicle required power of the FCHEV.
- Meet the economy requirements of FCHEV: to improve the vehicle’s working efficiency, the fuel cell’s output power should be controlled in the high-efficiency zone; simultaneously, the supercapacitor park should also absorb the braking energy as much as possible.
- Meet the fuel cell’s durability requirements: minimize frequent start–stop situations with fuel cells.
- Meet the SOC requirements of supercapacitor parks: control the SOC of supercapacitors to fluctuate within a reasonable range (0.4–0.8).
3.2.2. Switching Control Strategy
3.2.3. Smoothing Fuel Cell Output Power
4. Modeling and Simulation Analysis
4.1. Establishment of Simulation Model
- Modify the module control library: open the Advisor control module database, save the original <vc>fuel cell as <vc>fuel cell_new, and finally embed the designed control strategy into <vc>fuel cell_new to complete the control module modification.
- Modify the top-level module: open the original Advisor top-level module BD_FUELCELL.mdl and save it as BD_FUELCELL_new.mdl, replace <vc>fuel cell in this module with <vc>fuel cell _new.
- Modify the m file: first save the original FUELCELL_defaults_in.m as FUECELL_new_defaults_in.m and modify the first two sentences of the file to the top-level module of your own name; then, to make the module recognizable to the Advisor, add the following statement to the driver chain field of the global variable Vinf:
4.2. Simulation Comparison and Analysis
5. Conclusions
- All control strategies can meet the power requirements of the whole vehicle, but the proposed compound energy management strategy ensures that the supercapacitor park SOC fluctuates within a reasonable range on the basis of the advantages of conventional fuzzy control, and effectively avoids the overcharge of the supercapacitor park, to protect the supercapacitor park.
- The proposed compound energy management strategy smooths the output power of the fuel cell through the moving average filtering algorithm, which improves the smoothness of the output power of the fuel cell, reduces the rate of change of the power of the fuel cell and improves the durability of the fuel cell.
- Compared with the PI control and power-following control strategy, the compound energy management strategy reduces the number of starts and stops of the fuel cell and effectively avoids the reduction of the life of the fuel cell.
- The compound energy management strategy can fully consider the operating states of the fuel cell and supercapacitor park, which can effectively utilize the high power density of the supercapacitor park to ensure a smooth fuel cell output power while effectively improving the economy of the fuel cell hybrid vehicle. Compared with the PI control and power-following control strategy, the equivalent hydrogen consumption per 100 km under the compound energy management strategy is reduced by 13.15% and 9.18%, respectively, and the number of starts and stops is also reduced by 11 and 2 times, respectively. Therefore, this strategy can effectively reduce the hydrogen consumption of FCHEV and improve the durability of the fuel cell.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Name | Parameter | Value | Unit |
---|---|---|---|
vehicle part | mass | 1138 | |
drag coefficient | 0.335 | ||
frontal area | 2 | ||
wheel | wheel radius | 0.282 | |
rolling coefficient | 0.009 | ||
drive motor | power max | 75 | |
max efficiency | 0.92 | - | |
fuel cell | power max | 50 | |
max efficiency | 0.6 | - | |
supercapacitor park | rated voltage | 2 | |
group number | 80 | - | |
capacity | 2.1 |
K | ||||||||
---|---|---|---|---|---|---|---|---|
VL | L0 | L1 | M | H0 | H1 | VH | ||
SOC | VL | M | H | VH | VH | VH | VH | VH |
L | M | M | M | H | H | VH | VH | |
M | VL | VL | VL | M | M | H | H | |
H | VL | VL | VL | L | L | L | M | |
VH | VL | VL | VL | VL | VL | VL | VL |
Statistical Results | PI Control | Power Following Control Strategy | Compound Energy Management Strategy |
---|---|---|---|
52.39 | 50.1 | 45.5 | |
start and stop times | 15 | 6 | 4 |
fuel cell efficiency | 0.54 | 0.53 | 0.55 |
supercapacitor park efficiency | 0.97 | 0.98 | 0.98 |
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Lin, C.; Luo, W.; Lan, H.; Hu, C. Research on Multi-Objective Compound Energy Management Strategy Based on Fuzzy Control for FCHEV. Energies 2022, 15, 1721. https://doi.org/10.3390/en15051721
Lin C, Luo W, Lan H, Hu C. Research on Multi-Objective Compound Energy Management Strategy Based on Fuzzy Control for FCHEV. Energies. 2022; 15(5):1721. https://doi.org/10.3390/en15051721
Chicago/Turabian StyleLin, Cuixia, Wenguang Luo, Hongli Lan, and Cong Hu. 2022. "Research on Multi-Objective Compound Energy Management Strategy Based on Fuzzy Control for FCHEV" Energies 15, no. 5: 1721. https://doi.org/10.3390/en15051721
APA StyleLin, C., Luo, W., Lan, H., & Hu, C. (2022). Research on Multi-Objective Compound Energy Management Strategy Based on Fuzzy Control for FCHEV. Energies, 15(5), 1721. https://doi.org/10.3390/en15051721