Evaluation of a Three-Parameter Gearshift Strategy for a Two-Speed Transmission System in Electric Vehicles
Abstract
:1. Introduction
2. Gearshift Strategy for Two-Speed EV
2.1. EV Powertrain Components
2.2. Developing Gearshift Schedule
2.2.1. Analyzing Motor Output Requirements during Vehicle Acceleration
2.2.2. Analyzing Motor Output Requirements on a Hilly Road
- All the four charts show almost similar motor torque requirements on each gear; however, at a lower road grade up to 8 degrees, the torque demand in gear 2 seems closer to the rated motor torque compared to that required in gear 1. On the other hand, during increasing uphill driving conditions, the torque requirement in gear 1 moves closer to the rated motor torque as opposed to that in gear 2. This reflects that the lower gear should be preferred on a higher road elevation while a higher gear could be selected on a road with a lower gradeability.
- With increasing the vehicle speed on elevated road conditions, the motor power demand soars rapidly. While the motor power demand at a vehicle speed of 15 km/h in both gears remained below the rated motor power capacity, it crossed the rated power line at 16 degrees or earlier when increasing the vehicle speed.
2.2.3. Primary Gearshift Schedule
3. Simulation and Experimental Results
3.1. Optimization in Simulation Environment
3.1.1. Optimized Gear Ratios and Gearshift Schedule for Acceleration
- Figure 16 has been plotted based on the lowest energy consumption for each driving cycle as noted from the data in Table 6, Table 7, Table 8 and Table 9. Apart from the economic performance behavior, the bar charts in Figure 16 indicate that the EV powertrain with a higher motor torque capacity, i.e., EV powertrain 02 and EV powertrain 04, show more potential for saving energy during vehicle operation compared to the EV powertrain with a lower motor torque capacity. This is an indication that through having different efficiency maps, the traction motor EM-B was more efficient than EM-A.
- Both optimization methods pushed the gear ratios towards the lower bound of each gear, which means that a lower value of the gear ratio is associated with energy saving during vehicle operation. Unlike the case with the NEDC drive cycle, some improvement could be noticed when the vehicle was operating on the UDDS drive cycle. Here, for the large size vehicle, a 20% upward move for both the upshift and downshift lines could be marked under the GD method without affecting the buffer zone in the primary gearshift schedule. On the other hand, the gearshift lines were lifted approximately 60% for the small size vehicle under the same optimization method, allowing more room for the 2nd gear operating area. The outcome of the PS method, however, could be set aside because of having less impact on the economy performance compared to that with the GD method.
3.1.2. Optimized Gearshift Schedule for a Hilly Road
3.1.3. Comparison of Results with a Conventional Approach
3.2. Experimental Results
4. Data Analysis and Discussion
- Being that the NEDC and UDDS driving cycles were based on flat road conditions, the performance of these two driving scenarios can be compared. In Figure 31, the energy consumption through the proposed gearshift strategy is 3.643% and 4.237% more than that with the convention gearshift strategies 01 and 02 over the NEDC, while it is 4.672% and 5.490% more energy consumption over the UDDS driving cycles, respectively. Similar behavior can be noted in Figure 33. It is understandable that the total energy consumption as found in Figure 31 and Figure 33 could not be directly compared to the findings in Figure 22 and Figure 23, because of the different vehicle mass, gear ratios and traction motor; however, the behavioral pattern and percentage increase in the energy consumption through the proposed gearshift strategy was found to be similar. On the other hand, in Figure 32 and Figure 34 as drawn using the experimental data, although a lower percentage increase in the energy consumption through the proposed gearshift approach can be observed, the behavioral pattern is similar to those in Figure 22 and Figure 23.
- The second observation is about the energy consumption over the ECE Extra Urban Driving Cycle associated with the road grade conditions. In Figure 31 and Figure 33, 0.5–5.1% less energy consumption through the proposed gearshift strategy can be noted compared to that with the conventional strategies 01 and 02, respectively. On the other hand, based on the experimental data, in Figure 32 and Figure 34, 0.02–0.53% less energy consumption can be estimated through the proposed strategy compared to that with the two conventional approaches. As in Figure 23, the potential scope of energy saving on a hilly road through the proposed gearshift strategy is around 16–17% over the conventional approaches. While the findings in Figure 31 and Figure 33 based on the unit energy consumption from the simulation results show a trend towards the findings in Figure 23, the experimental-based findings as in Figure 32 and Figure 34 remain significantly away from that shown in Figure 23.
- The efficiency map of the traction motor EM-A is not available in the company website. Based on the information received from the manufacturer, several efficiency points could be identified in the motor torque-speed curve. Considering these efficiency points as a reference, an entire motor efficiency map was drawn. Acknowledging this fact, there might be some impact on the deviation between the simulation results and the experimental findings; however, it is believed that this issue would have a minor impact on the validation process.
- Another issue can be mentioned with the electrical connections within the powertrain. For example, the consistency of the cable diameter was not maintained at both terminals of the battery that needs to be maintained to comply with a standard requirement of connection.
- The quality of the individual battery cell was not so good. Moreover, the battery module was used without the battery management system. Because of a limited battery capacity, the duration of each test run was needed to be kept below two minutes. Moreover, the demand of the battery discharge current was noted as significantly high during the acceleration phase while the battery voltage was dropping rapidly, and that might have been associated with the poor battery discharge efficiency [35]. Considering these multiple issues with the battery, it can be assumed that the battery module would play a major role behind the gap in the validation process.
- This point is related the second observation. While estimating the distance travelled on each gear, a simulation over the ECE Extra Urban Driving Cycle was conducted considering the road grade conditions; however, the experimental driving profile on each gear was generated based on flat road conditions. Therefore, in the process of estimating the unit energy consumption based on both the simulation results and the experimental data, the road grade could not be associated with the experimental driving profile. Consequently, it is expected that there would be some gap in the validation of the proposed gearshift strategy in hilly road conditions.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
AMT | Automatic Manual Transmission |
ECE | Economic Commission for Europe |
EV | Electric Vehicle |
GD | Gradient Descent |
NED | New European Driving Cycle |
PS | Pattern Search |
UDDS | Urban Dynamometer Driving Schedule |
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Vehicle Parameter | Symbol | Small Vehicle | Large Vehicle | Unit |
---|---|---|---|---|
Vehicle Mass | 1288 | 1878 | kg | |
Frontal Area | 2.17 | 2.26 | m2 | |
Wheel Radius | 0.310 | 0.334 | m | |
Final Drive Ratio | 4.0 | - | ||
Wind Velocity | 0 | km/h | ||
Drag Coefficient | 0.28 | - | ||
Air Density | 1.27 | kg/m3 | ||
Rolling Coefficient | 0.016 | - | ||
Gravity | 9.81 | m/s2 | ||
Pi | 3.141592 | - | ||
Road Incline | 0 | deg | ||
0 | rad |
Traction Motor Parameter | Symbol | EM-A | EM-B [17] | Unit |
---|---|---|---|---|
Motor Type | - | AC Induction | - | - |
Rated Power | 52.81 | 40 | kW | |
Rated Torque | 157.6 | 127 | Nm | |
Base Speed | 3200 | 3000 | rpm | |
Maximum Power | 57.97 | 80 | kW | |
Maximum Torque | 173 | 255 | Nm | |
Maximum Speed | 8000 | 9000 | rpm |
Vehicle Performances | Symbol | Target | Unit | |
---|---|---|---|---|
Maximum Gradeability | 23 | deg | ||
0.401587302 | rad | |||
Velocity at Maximum Grade | 15 | km/h | ||
Maximum Vehicle Velocity | 150 | km/h | ||
Acceleration Time | 0–60 km/h | 5.5 | s | |
60–80 km/h | 3.5 | |||
0–100 km/h | 13 |
Simulation Model | Vehicle Size | Electric Motor |
---|---|---|
EV Powertrain 01 | Large | EM-A |
EV Powertrain 02 | Large | EM-B |
EV Powertrain 03 | Small | EM-A |
EV Powertrain 04 | Small | EM-B |
Simulation Model | |
---|---|
EV Powertrain 01 | |
EV Powertrain 02 | |
EV Powertrain 03 | |
EV Powertrain 04 | |
Drive Cycle | Optimization Method | Control Variables and Objective Function before/after Optimization | ||||||
---|---|---|---|---|---|---|---|---|
Gear Ratios | Shift Factor for Acceleration (Down/Up) | Energy Consumption, Wh | ||||||
Before | After | Before | After | Before | After | Improvement | ||
NEDC | Gradient Decent | 14.00/5.00 | 9.04/5.35 | 1.0/1.0 | - | 884.64 | 858.39 | 2.9673% |
Pattern Search | 9.04/5.35 | - | 858.42 | 2.9642% | ||||
Gradient Decent | 14.00/5.00 | 9.04/5.35 | 1.0/1.0 | 1.1015/1.0623 | 884.64 | 858.39 | 2.9673% | |
Pattern Search | 9.04/5.35 | - | 1.2/0.8 | 858.39 | 858.39 | 0.0000% | ||
UDDS | Gradient Decent | 14.00/5.00 | 9.04/5.35 | 1.0/1.0 | - | 1209.83 | 1123.36 | 7.1474% |
Pattern Search | 9.04/5.35 | - | 1123.33 | 7.1497% | ||||
Gradient Decent | 14.00/5.00 | 9.04/5.35 | 1.0/1.0 | 1.2/1.2 | 1209.83 | 1122.22 | 7.2416% | |
Pattern Search | 9.04/5.35 | - | 1.1377/1.1328 | 1123.36 | 1122.53 | 0.0742% |
Drive Cycle | Optimization Method | Control Variables and Objective Function before/after Optimization | ||||||
---|---|---|---|---|---|---|---|---|
Gear Ratios | Shift Factor for Acceleration (Down/Up) | Energy Consumption, Wh | ||||||
Before | After | Before | After | Before | After | Improvement | ||
NEDC | Gradient Decent | 14.00/5.00 | 8.16/4.7896 | 1.0/1.0 | - | 843.64 | 795.56 | 5.6995% |
Pattern Search | 8.1664/4.7948 | - | 795.89 | 5.6600% | ||||
Gradient Decent | 14.00/5.00 | 8.16/4.7896 | 1.0/1.0 | 1.1393/1.1337 | 843.64 | 795.56 | 5.6995% | |
Pattern Search | 8.16/4.7896 | - | 1.2/0.8 | 795.56 | 795.56 | 0.0000% | ||
UDDS | Gradient Decent | 14.00/5.00 | 8.16/4.7896 | 1.0/1.0 | - | 1168.33 | 1066.03 | 8.7565% |
Pattern Search | 8.796/5.2536 | - | 1075.75 | 7.9244% | ||||
Gradient Decent | 14.00/5.00 | 8.16/4.7896 | 1.0/1.0 | 1.2/1.2 | 1168.33 | 1065.47 | 8.8041% | |
Pattern Search | 8.16/4.7896 | - | 1.0674/1.0665 | 1066.06 | 1065.83 | 0.0208% |
Drive Cycle | Optimization Method | Control Variables and Objective Function before/after Optimization | ||||||
---|---|---|---|---|---|---|---|---|
Gear Ratios | Shift Factor for Acceleration (Down/Up) | Energy Consumption, Wh | ||||||
Before | After | Before | After | Before | After | Improvement | ||
NEDC | Gradient Decent | 14.00/5.00 | 7.68/4.5128 | 1.0/1.0 | - | 730.36 | 667.91 | 8.5506% |
Pattern Search | 7.6808/4.5212 | - | 668.26 | 8.5032% | ||||
Gradient Decent | 14.00/5.00 | 7.68/4.5128 | 1.0/1.0 | 1.1974/1.1964 | 730.36 | 667.90 | 8.5515% | |
Pattern Search | 7.68/4.5128 | - | 0.8107/0.7980 | 667.91 | 667.91 | 0.0000% | ||
UDDS | Gradient Decent | 14.00/5.00 | 7.68/4.5124 | 1.0/1.0 | - | 935.97 | 837.60 | 10.5096% |
Pattern Search | 8.43/4.992 | - | 850.03 | 9.1825% | ||||
Gradient Decent | 14.00/5.00 | 7.68/4.5124 | 1.0/1.0 | 1.6/1.6 | 936.06 | 835.65 | 10.7185% | |
Pattern Search | 7.68/4.5124 | - | 1.3888/1.3840 | 837.58 | 836.40 | 0.1414% |
Drive Cycle | Optimization Method | Control Variables and Objective Function before/after Optimization | ||||||
---|---|---|---|---|---|---|---|---|
Gear Ratios | Shift Factor for Acceleration (Down/Up) | Energy Consumption, Wh | ||||||
Before | After | Before | After | Before | After | Improvement | ||
NEDC | Gradient Decent | 14.00/5.00 | 6.92/4.0352 | 1.0/1.0 | - | 686.67 | 602.78 | 12.2168% |
Pattern Search | 6.9268/4.0476 | - | 603.42 | 12.1238% | ||||
Gradient Decent | 14.00/5.00 | 6.92/4.0352 | 1.0/1.0 | 1.1803/1.1653 | 686.67 | 602.78 | 12.2168% | |
Pattern Search | 6.92/4.0352 | - | 0.8108/0.7980 | 602.78 | 602.78 | 0.0000% | ||
UDDS | Gradient Decent | 14.00/5.00 | 6.92/4.0352 | 1.0/1.0 | - | 889.33 | 777.94 | 12.5250% |
Pattern Search | 7.0128/4.0984 | - | 777.17 | 12.6124% | ||||
Gradient Decent | 14.00/5.00 | 6.92/4.0352 | 1.0/1.0 | 1.5976/1.5976 | 889.33 | 777.30 | 12.5976% | |
Pattern Search | 6.92/4.0352 | - | 1.3888/1.3137 | 778 | 777.31 | 0.0893% |
EV Powertrain | Optimization Method | Control Variables and Objective Functions before/after Optimization | ||||||
---|---|---|---|---|---|---|---|---|
Gear Ratios | Shift Factor for Grade (Down/Up) | Energy Consumption, Wh | ||||||
Before | After | Before | After | Before | After | Improvement | ||
EV Powertrain 02 | Gradient Descent | 14.00/5.00 | 8.16/4.7896 | 1.0/1.0 | 1.2/1.2 | 3895.39 | 3500.53 | 10.1366% |
Gradient Descent | 8.16/4.7896 | - | 1.0/1.0 | 1.2/1.2 | 3664.03 | 3500.53 | 4.4623% | |
Pattern Search | - | 1.1273/0.9658 | 3499.64 | 4.4866% | ||||
EV Powertrain 03 | Gradient Descent | 14.00/5.00 | 7.68/4.5124 | 1.0/1.0 | 1.6/1.6 | 2767.14 | 2425.67 | 12.3402% |
Gradient Descent | 7.68/4.5124 | - | 1.0/1.0 | 1.6/1.6 | 2537.08 | 2425.67 | 4.3915% | |
Pattern Search | - | 1.1661/0.9739 | 2432.53 | 4.1209% | ||||
EV Powertrain 04 | Gradient Descent | 14.00/5.00 | 6.92/4.0352 | 1.0/1.0 | 1.6/1.6 | 2767.86 | 2272.97 | 17.8798% |
Gradient Descent | 6.92/4.0352 | - | 1.0/1.0 | 1.6/1.6 | 2394.86 | 2273.00 | 5.0884% | |
Pattern Search | - | 1.4786/1.4660 | 2278.42 | 4.8623% |
Vehicle Component | Estimated Mass, kg |
---|---|
Estimated test vehicle mass | 682 |
Estimated test vehicle load on dyno platform (55% of estimated vehicle mass) | 375 |
Gear Number | Gear Ratio |
---|---|
Gear 1 | 17.044 |
Gear 2 | 9.227 |
Gear 3 | 5.696 |
Gear 4 | 4.259 |
Battery Parameter | Symbol | Value | Unit |
---|---|---|---|
Voltage | 98 | Volt | |
Capacity | 32 | Ah |
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Share and Cite
Ahssan, M.R.; Ektesabi, M.; Gorji, S. Evaluation of a Three-Parameter Gearshift Strategy for a Two-Speed Transmission System in Electric Vehicles. Energies 2023, 16, 2496. https://doi.org/10.3390/en16052496
Ahssan MR, Ektesabi M, Gorji S. Evaluation of a Three-Parameter Gearshift Strategy for a Two-Speed Transmission System in Electric Vehicles. Energies. 2023; 16(5):2496. https://doi.org/10.3390/en16052496
Chicago/Turabian StyleAhssan, Md Ragib, Mehran Ektesabi, and Saman Gorji. 2023. "Evaluation of a Three-Parameter Gearshift Strategy for a Two-Speed Transmission System in Electric Vehicles" Energies 16, no. 5: 2496. https://doi.org/10.3390/en16052496