Research on Energy Consumption Generation Method of Fuel Cell Vehicles: Based on Naturalistic Driving Data Mining
Abstract
:1. Introduction
1.1. Literature Review
1.2. Motivations and Contributions
2. Research Methods
2.1. Methods Description
2.2. Collecting and Preprocessing of the Naturalistic Driving Data
2.3. Analysis and Dimension Reduction of Characteristic Parameters
2.4. Acquisition and Identification of Typical Driving Cycles
3. Energy Consumption Generation Method
3.1. Vehicle and Powertrain Model
3.1.1. Vehicle Dynamics Model
3.1.2. Motor Model
3.1.3. Fuel Cell System Model
3.1.4. Battery Model
3.2. Energy Consumption Correlation Analysis
3.3. Energy Consumption Generation Method
3.4. Simulation and Results
4. Discussion
- We have analyzed the three steps of naturalistic driving data mining (i.e., collecting and preprocessing of the naturalistic driving data, analysis and dimension reduction of characteristic parameters, and acquisition and identification of typical driving cycles), and four typical driving cycles representing driver driving are obtained, which, respectively, represented the congested roads in urban areas, relatively unobstructed roads in urban areas, unobstructed roads in urban areas, and expressways in urban areas.
- Characteristic parameters of various typical driving cycles are found to be related to the energy consumption of FCVs by means of a regression analysis. The parameter of maximum acceleration is not related to the energy consumption under any typical driving cycles, which is similar in nature to the eco-driving rules stipulated in previous studies [45,46]. Based on the related driving cycle characteristic parameters, an energy consumption generation method is designed and proposed to estimate the energy consumption of FCVs, which can provide a reference for the subsequent design of eco-driving rules.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
FCV | Fuel Cell Vehicle |
PHEV | Plug-in Hybrid Electric Vehicle |
BEV | Battery Electric Vehicle |
ICEV | Internal Combustion Engine Vehicle |
GPS | Global Positioning System |
ITS | Intelligent transportation system |
PCA | Principal Component Analysis |
LVQ | Learning Vector Quantization |
SOC | State of Charge |
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Categories | No. | Characteristic Parameters | Symbol | Unit |
---|---|---|---|---|
Speed-type parameters | 1 | Average speed | km/h | |
2 | Average driving speed | km/h | ||
3 | Maximum speed | km/h | ||
4 | Standard deviation of vehicle speed | km/h | ||
Acceleration-type parameters | 5 | Average acceleration | m/s2 | |
6 | Average deceleration | m/s2 | ||
7 | Maximum acceleration | m/s2 | ||
8 | Maximum deceleration | m/s2 | ||
9 | Standard deviation of acceleration | m/s2 | ||
10 | Standard deviation of deceleration | m/s2 | ||
Statistics-type parameters | 11 | Parking time ratio | % | |
12 | Acceleration time ratio | % | ||
13 | Deceleration time ratio | % | ||
14 | Constant speed time ratio | % |
Description | Parameters | Value |
---|---|---|
Basic parameters of the vehicle | Vehicle mass/kg | 1500 |
Frontal area/m2 | 2.27 | |
Air resistance coefficient | 0.28 | |
Rolling radius/m | 0.327 | |
Power battery | Capacity/A·h | 40 |
Rated voltage/V | 320 | |
Fuel cell | Peak output power/kW | 15 |
Typical Driving Cycles | Characteristic Parameters |
---|---|
1 | , , , |
2 | , , , |
3 | , , , |
4 | , , , , |
FCV Energy Consumption Generation Method under Real Driving Cycle | |
---|---|
1 | Identifying the driving segments belonging to typical driving cycle 1; Calculating the characteristic parameters and the corresponding mileage . |
2 | The actual energy consumption of typical driving cycle 1 can be calculated by: . |
3 | Identifying the driving segments belonging to typical driving cycle 2; Calculating the characteristic parameters . |
4 | The actual energy consumption of typical driving cycle 2 can be calculated by: . |
5 | Identifying the driving segments belonging to typical driving cycle 3; Calculating the characteristic parameters . |
6 | The actual energy consumption of typical driving cycle 3 can be calculated by: . |
7 | Identifying the driving segments belonging to typical driving cycle 4; Calculating the characteristic parameters . |
8 | The actual energy consumption of typical driving cycle 4 can be calculated by: . |
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Ma, Y.; Wang, P.; Li, B.; Li, J. Research on Energy Consumption Generation Method of Fuel Cell Vehicles: Based on Naturalistic Driving Data Mining. Machines 2022, 10, 1047. https://doi.org/10.3390/machines10111047
Ma Y, Wang P, Li B, Li J. Research on Energy Consumption Generation Method of Fuel Cell Vehicles: Based on Naturalistic Driving Data Mining. Machines. 2022; 10(11):1047. https://doi.org/10.3390/machines10111047
Chicago/Turabian StyleMa, Yangyang, Pengyu Wang, Bin Li, and Jianhua Li. 2022. "Research on Energy Consumption Generation Method of Fuel Cell Vehicles: Based on Naturalistic Driving Data Mining" Machines 10, no. 11: 1047. https://doi.org/10.3390/machines10111047
APA StyleMa, Y., Wang, P., Li, B., & Li, J. (2022). Research on Energy Consumption Generation Method of Fuel Cell Vehicles: Based on Naturalistic Driving Data Mining. Machines, 10(11), 1047. https://doi.org/10.3390/machines10111047