Energy Management Strategy Based on V2X Communications and Road Information for a Connected PHEV and Its Evaluation Using an IDHIL Simulator
Abstract
:1. Introduction
2. Integrated Driving Hardware-in-the-Loop (IDHIL) Simulator
2.1. Target Vehicle
2.2. Implementation of Vitual Roads for Simulation
2.3. Simulation Scenario
3. Energy Management Strategy
3.1. Cooperative Eco-Driving (CED) Guidance
3.1.1. Curve Speed Assistance (CSA)
3.1.2. Slope Speed Assistance (SSA)
3.1.3. Coasting Assistance (CA)
3.1.4. Cooperative Eco-Driving Speed and Guide Signals
- Green light: This is a situation where there are no curves, slopes, or traffic jams. The driver maneuvers the pedals so that the vehicle speed follows the guide speed. It also includes situations where TSA determines that the vehicle will be able to pass through the intersection. In this case, the speed to pass through the intersection is provided.
- Yellow light: When there is a curve, slope, or traffic jam ahead, it guides the driver to coast. In this case, the driver can coast until the guide speed is reached without pedal control.
- Red light: This is a situation where TSA has determined that you will be stopped by an upcoming traffic light. This requires the driver to coast and then stop at the intersection.
3.2. Adaptive Equivalent Consumption Minimization Strategy with Target SOC
3.2.1. Target SOC Decision with Road Information
3.2.2. Adaptive ECMS
4. Test Results Using the IDHIL Simulator
4.1. Comparison of Engine Operating Points between Connected and Normal PHEVs
4.2. Differences due to Target SOC in the A-ECMS
4.3. Differences due to Cooperative Eco-Driving Guidance
5. Discussion
- By driving with CED guidance using V2X communication and road information, brake and acceleration pedal usage is reduced, which can be seen through regenerative braking energies and engine operating points. This in turn reduces energy loss and the usage of vehicle systems.
- We can see the change in engine behavior by applying an A-ECMS using road information. Based on the road information, the target SOC was determined and reflected in the equivalent factor. As a result, the engine operated more often in areas with lower BSFC (higher efficiency).
- CED guidance encourages drivers to drive more efficiently, and the A-ECMS enables engines to operate more efficiently. We have found that the integration of CED guidance and the A-ECMS can be synergistic in terms of improving fuel efficiency.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Parameters | Values |
---|---|
Vehicle mass | 1725 [kg] |
Engine max. power | 108 [kW] |
Engine max. torque | 180 [Nm] |
MG1 max. power | 50 [kW] |
MG1 max. torque | 205 [Nm] |
MG1 base RPM | 2330 [RPM] |
MG2 max. power | 8.5 [kW] |
MG2 max. torque | 43.2 [Nm] |
MG2 base RPM | 1870 [RPM] |
Battery voltage | 360 [V] |
Battery capacity | 31.9 [Ah] |
Case | Total Distance | Final SOC | Fuel Consumption | Equivalent Fuel Consumption | Total Fuel Consumption | Fuel Economy |
---|---|---|---|---|---|---|
Connected | 12.099 [km] | 0.6856 [-] | 0.1801 [L] | 0.1754 [L] | 0.3555 [L] | 34.03 [km/L] |
PHEV #1 | ||||||
Connected | 12.091 [km] | 0.7069 [-] | 0.3646 [L] | 0.1427 [L] | 0.5073 [L] | 23.83 [km/L] |
PHEV #2 | ||||||
Connected | 12.1 [km] | 0.6935 [-] | 0.2655 [L] | 0.1633 [L] | 0.4288 [L] | 28.22 [km/L] |
PHEV #3 | ||||||
Connected | 12.101 [km] | 0.684 [-] | 0.2108 [L] | 0.1778 [L] | 0.3886 [L] | 31.14 [km/L] |
PHEV #4 | ||||||
Normal | 12.102 [km] | 0.7235 [-] | 0.5681 [L] | 0.1173 [L] | 0.6854 [L] | 17.66 [km/L] |
PHEV #1 | ||||||
Normal | 12.104 [km] | 0.7212 [-] | 0.5413 [L] | 0.1208 [L] | 0.6621 [L] | 18.28 [km/L] |
PHEV #2 | ||||||
Normal | 12.1 [km] | 0.719 [-] | 0.531 [L] | 0.1242 [L] | 0.6552 [L] | 18.47 [km/L] |
PHEV #3 | ||||||
Normal | 12.106 [km] | 0.7196 [-] | 0.5229 [L] | 0.1233 [L] | 0.6462 [L] | 18.73 [km/L] |
PHEV #4 |
Case | Connected PHEV | Normal PHEV |
---|---|---|
#1 | 24,183.69 [J] | 145,252.51 [J] |
#2 | 52,978.61 [J] | 144,172.89 [J] |
#3 | 48,528.40 [J] | 130,616.57 [J] |
#4 | 34,439.04 [J] | 141,808.66 [J] |
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Ha, S.; Lee, H. Energy Management Strategy Based on V2X Communications and Road Information for a Connected PHEV and Its Evaluation Using an IDHIL Simulator. Appl. Sci. 2023, 13, 9208. https://doi.org/10.3390/app13169208
Ha S, Lee H. Energy Management Strategy Based on V2X Communications and Road Information for a Connected PHEV and Its Evaluation Using an IDHIL Simulator. Applied Sciences. 2023; 13(16):9208. https://doi.org/10.3390/app13169208
Chicago/Turabian StyleHa, Seongmin, and Hyeongcheol Lee. 2023. "Energy Management Strategy Based on V2X Communications and Road Information for a Connected PHEV and Its Evaluation Using an IDHIL Simulator" Applied Sciences 13, no. 16: 9208. https://doi.org/10.3390/app13169208
APA StyleHa, S., & Lee, H. (2023). Energy Management Strategy Based on V2X Communications and Road Information for a Connected PHEV and Its Evaluation Using an IDHIL Simulator. Applied Sciences, 13(16), 9208. https://doi.org/10.3390/app13169208