Multi-System Coupling DMi Hybrid Vehicle Modeling and Its Performance Analysis Based on Simulation
Abstract
:1. Introduction
2. Resistance Decomposition and EV Mode Energy Consumption Analysis
3. Driving Modes Overview
4. Component Parameters and Power Performance
5. Driving Modes Selection and Energy Management
- The remaining electricity is a prerequisite for entering EV mode.
- The power demand under different SOC is a prerequisite for engine start.
- Velocity is a prerequisite for entering parallel mode.
- The engine speed is limited by the acceleration pedal depth and the velocity after considering the NVH requirement.
- The engine torque is located at the ‘eco area’ and determined by the current status of the acceleration pedal depth and SOC.
6. Simulation Model and Fuel Consumption Analysis
7. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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System | Improvement | Energy Consumption Reduction (kWh/100 km) | Contributions |
---|---|---|---|
Aerodynamic drag | 2.18% | 0.13 | 4.49% |
Rolling resistance | 20.12% | 0.83 | 29.35% |
Caliper drag | 85.24% | 0.81 | 28.87% |
Low voltage accessories | 31.20% | 0.25 | 8.88% |
Powertrain | 5.88% | 0.8 | 28.41% |
Total (kWh) | 2.82 (Experimental result 2.8) |
Component | Parameter | Unit | Value |
---|---|---|---|
Engine | Engine displacement | L | 1.5 |
Maximum power | kW | 81 | |
Maximum torque | Nm | 135 | |
Maximum thermal efficiency (Calibration) | % | 43 | |
Motor | Maximum power | kW | 145 |
Maximum torque | Nm | 325 | |
Maximum speed | rpm | 16,000 | |
Generator | Maximum power | kW | 70 |
Nominal power | kW | 55 | |
Maximum speed | rpm | 13,000 | |
Transmission | EV mode transmission ratio | - | 10.126 |
Parallel mode transmission ratio | - | 2.875 | |
Series mode transmission ratio | - | 2.07 | |
Battery | Voltage | V | 3.2 |
Capacity | Ah | 41 |
NCM/NCA | LFP | BYD Blade Battery | |
---|---|---|---|
Energy density | high | low | normal |
Cycle life | normal | long | long |
Safety | low | high | ultra-high |
Cost | high | low | low |
Environmental friendliness | poisonous | non-poisonous | non-poisonous |
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Li, S.; Wang, P.; Zeng, D.; Peng, W.; Yang, L. Multi-System Coupling DMi Hybrid Vehicle Modeling and Its Performance Analysis Based on Simulation. World Electr. Veh. J. 2021, 12, 215. https://doi.org/10.3390/wevj12040215
Li S, Wang P, Zeng D, Peng W, Yang L. Multi-System Coupling DMi Hybrid Vehicle Modeling and Its Performance Analysis Based on Simulation. World Electric Vehicle Journal. 2021; 12(4):215. https://doi.org/10.3390/wevj12040215
Chicago/Turabian StyleLi, Song, Puxi Wang, Dong Zeng, Wenjie Peng, and Liu Yang. 2021. "Multi-System Coupling DMi Hybrid Vehicle Modeling and Its Performance Analysis Based on Simulation" World Electric Vehicle Journal 12, no. 4: 215. https://doi.org/10.3390/wevj12040215
APA StyleLi, S., Wang, P., Zeng, D., Peng, W., & Yang, L. (2021). Multi-System Coupling DMi Hybrid Vehicle Modeling and Its Performance Analysis Based on Simulation. World Electric Vehicle Journal, 12(4), 215. https://doi.org/10.3390/wevj12040215