Rapid Evaluation of Off-Highway Powertrain Architectures
Abstract
1. Introduction
1.1. Background
1.2. Objectives of This Study
2. Literature Review
2.1. Custom Analysis with General-Purpose Math Tools
2.2. ADVISOR
2.3. ALPHA
2.4. AMESIM
2.5. AUTONOMIE
2.6. AVL Cruise M
2.7. GT Suite
2.8. FASTSIM
2.9. Summary of Simulation Tools
3. Methods
3.1. Allam and Linjama Method (Benchmark)
3.2. Dedicated Software Tools
3.3. ePOP Concept
3.3.1. Efficiency Assumption—Inverters
3.3.2. Efficiency Assumption—eMotors
3.3.3. Efficiency Assumption—Batteries
3.3.4. Efficiency Assumption—ICE (Internal Combustion Engine)
3.3.5. Efficiency Assumption—Cooling
3.3.6. Efficiency Assumption—Transmission
3.3.7. Efficiency Assumption—Hydraulic Pumps and Motors
3.3.8. Proposed Improvement—BSFC Adjustment for Load
| BSFC | = | Brake-specific fuel consumption (kg/kWh). |
| BSFCmin | = | Minimum BSFC at optimal operating point (kg/kWh). |
| BSFCop | = | BSFC at the operating point (kg/kWh). |
| ISFC | = | Indicated specific fuel consumption (kg/kWh). |
| IMEP | = | Indicated mean effective pressure (bar). |
| BMEP | = | Brake mean effective pressure (bar). |
| BMEPmax | = | Maximum BMEP at rated power (bar). |
| BMEPop | = | BMEP at the operating point (bar) |
| FMEP | = | Friction mean effective pressure (bar). |
| Pop | = | Power at the operating point (kW). |
| Prated | = | Rated (maximum) power (kW). |
| IMEPmax | = | Maximum IMEP at rated power (bar). |
| IMEPop | = | IMEP at the operating point (bar). |
3.3.9. Efficiency Assumptions—Summary
3.4. Case Studies
3.4.1. Wheel Loader Analysis
3.4.2. Tractor Analysis
4. Results
4.1. Wheel Loader Analysis—ePOP Concept
4.2. Tractor Analysis—ePOP Concept
4.3. BSFC Correction
5. Discussion
5.1. Accuracy of Fuel Prediction
5.2. Causes of Fuel Prediction Errors
5.3. Methods to Reduce Fuel Prediction Errors
5.4. Evaluation of Hybridization Benefits
5.5. Comparison with Alternative Methods
- The use of engine efficiency maps enables the benefits of operating-point modification to be included, whereas ePOP Concept assumes constant efficiency. It also introduces engine-specific BSFC data, which reduces error significantly.
- The control strategy can be defined, e.g., when to switch off the engine of a hybrid and run from battery power only.
- As well as engine data, other component-specific characterization data can be used, reducing errors, but at the cost of some effort in data collection.
5.6. Future Development Work
- Scaling algorithms to account automatically for engine scale effects, improving the generic assumptions for engine BSFC.
- Simple 1-dimensional engine BSFC modeling to account for load dependency
- Similar efficiency modeling approaches applied to other components, including inverters, e-motors, hydraulics, transmissions and engine accessories.
- Automatic elimination of infeasible conditions, e.g., electrical or ICE components tending to zero size.
6. Conclusions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| BEV | Battery Electric Vehicle. |
| BMEP | Brake Mean Effective Pressure. |
| BSFC | Brake-Specific Fuel Consumption. |
| BTE | Brake Thermal Efficiency. |
| CAN-BUS | Controller Area Network Bus. |
| CNG | Compressed Natural Gas. |
| CVT | Continuously Variable Transmission. |
| EGR | Exhaust Gas Recirculation. |
| FMEP | Friction Mean Effective Pressure. |
| GaN | Gallium Nitride. |
| GNSS | Global Navigation Satellite System. |
| HEV | Hybrid Electric Vehicle. |
| HST | Hydrostatic Transmission. |
| ICE | Internal Combustion Engine. |
| IGBT | Insulated-Gate Bipolar Transistor. |
| IMEP | Indicated Mean Effective Pressure. |
| ISFC | Indicated Specific Fuel Consumption. |
| NREL | National Renewable Energy Laboratory. |
| OEM | Original Equipment Manufacturer. |
| PHEV | Plug-in Hybrid Electric Vehicle. |
| PTO | Power Take-Off. |
| RMS | Root Mean Square. |
| SiC | Silicon Carbide. |
| TCO | Total Cost of Ownership. |
Appendix A
| Parameter | Units |
| time | s |
| Machine_Speed | m/s |
| Machine_Direction | – |
| Diesel_w | rad/s |
| Diesel_TorqueEstimate | Nm |
| Diesel_FuelRate | L/h |
| Diesel_PowerEstimate | W |
| LiftCylinder_x | m |
| LiftCylinder_v | m/s |
| LiftCylinder_pA | Pa |
| LiftCylinder_pB | Pa |
| LiftCylinder_F | N |
| LiftCylinder_Q_A | m3/s |
| LiftCylinder_Q_B | m3/s |
| TiltCylinder_x | m |
| TiltCylinder_v | m/s |
| TiltCylinder_pA | Pa |
| TiltCylinder_pB | Pa |
| TiltCylinder_F | N |
| TiltCylinder_Q_A | m3/s |
| TiltCylinder_Q_B | m3/s |
| StabilizerCylinder_x | m |
| StabilizerCylinder_v | m/s |
| StabilizerCylinder_Q_A | m3/s |
| StabilizerCylinder_Q_B | m3/s |
| StabilizerCylinder_pA | Pa |
| StabilizerCylinder_pB | Pa |
| StabilizerCylinder_F | N |
| LiftValve_Q_PA | m3/s |
| LiftValve_Q_BT | m3/s |
| LiftValve_Q_PB | m3/s |
| LiftValve_Q_AT | m3/s |
| TiltValve_Q_PA | m3/s |
| TiltValve_Q_BT | m3/s |
| TiltValve_Q_PB | m3/s |
| TiltValve_Q_AT | m3/s |
| WorkPump_w | rad/s |
| WorkPump_pP | Pa |
| WorkPump_FlowEstimate | m3/s |
| WorkPump_TorqueEstimate | Nm |
| WorkPump_AngleEstimate | – |
| WorkPump_ShaftPowerEst | W |
| WorkPump_HydraulicPowerEst | W |
| WorkPump_ErrorFlag | – |
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| Method/Tool | User Expertise | Software Cost | Outputs | Data Gathering/ Setup Effort | Reported Accuracy |
|---|---|---|---|---|---|
| Custom analysis | Expert | MATLAB | Custom | High (weeks–months) | 2–5% |
| ADVISOR | Skilled | MATLAB + License | Efficiency | Moderate (days–weeks) | ~5% |
| ALPHA | Skilled | MATLAB + License | Efficiency | Moderate (days–weeks) | Within 5% |
| AMESIM | Expert | High (commercial) | Efficiency | High (weeks) | Not reported |
| Autonomie | Skilled | MATLAB + License | Efficiency | Moderate (days–weeks) | Within 2% |
| AVL Cruise M | Expert | Very High | Efficiency | High (weeks) | Within 5.5% |
| GT-Suite | Expert | Very High | Efficiency | High (weeks) | Not reported |
| FASTSIM | Moderate | Free | Efficiency | Low–Moderate (days) | Within 10.5% |
| Potential Gap: | Low | Low | Efficiency + Cost, Weight and Package | Minimal | Within 10% |
| Component Type | Typical Throughput Efficiency Range (%) | Primary Cause of Variation | Main Physical Sources of Loss |
|---|---|---|---|
| Bent-axis axial piston motor | 75–92% | Mostly pressure-dependent | Leakage; friction; torque losses |
| Swash-plate axial piston pump | 80–93% | Mostly pressure-dependent | Leakage; friction; viscous drag |
| External gear pump | 70–88% | Mostly pressure-dependent | Gap leakage; viscous drag; gear/bearing losses |
| Balanced vane pump | 65–85% | Speed- and pressure-dependent | Leakage; viscous drag; cavitation |
| Hydraulic cylinder | 75–95% | Strongly speed-dependent | Seal friction; mixed lubrication |
| Component Type | Typical Losses (% of Power) | Primary Cause of Variation | Main Physical Sources of Loss |
|---|---|---|---|
| Inverter | 1–25% | Current dependent; efficiency decreases at low current and near high-current limits | Switching losses; conduction losses; gate drive losses |
| Electric Motor | 4–20% | Load dependent; mild speed dependency | Copper losses; iron losses; inverter-induced harmonics; mechanical friction |
| Battery Pack (Round Trip Efficiency) | 12–27% | Current (power) dependent | Internal resistance (I2R losses); charge-transfer losses; thermal effects |
| Internal Combustion Engine (ICE) | 61–79% | Load dependent; mild speed dependency. | Combustion losses; heat transfer; pumping loss; friction; accessory loads. |
| Cooling/Accessories | 2–15% (heavy truck) | Power dependent | Cooling fan, steering, brakes |
| Mechanical Transmission | 4–16% | Torque dependent; mild speed dependency | Gear mesh losses; bearing friction; oil churning and windage |
| Hydraulic Components (Pumps, Motors, Cylinders) | 5–35% | Load dependent | Leakage; seal friction; viscous drag; cavitation at high speed |
| “A” Component | Size | Cost (USD) | “B” Component | Size | Cost $ |
|---|---|---|---|---|---|
| Hydraulic System | 20,188 | Electrical System | 29,963 | ||
| ICE | 91.7 kW | 8201 | ICE | 41 kW | 4949 |
| Cooler 1 | 2.1 kW | 82 | Cooler 1 | 1 kW | 50 |
| Fuel Tank | 368 | Fuel Tank | 293 | ||
| Total Initial Cost USD | 28,839 | 35,255 | |||
| Fuel Cost (10 yr) USD | 154,914 | 123,436 | |||
| Total TCO (10 yr) USD | 183,753 | 158,681 |
| Cycle Average Power (Measured), kW | Fuel Usage (Measured), L | Fuel Usage (Predicted), L | BSFC (Measured), g/kWh | BSFC (Predicted), g/kWh |
|---|---|---|---|---|
| 15.74 kW | 61.2 | 59.6 | 406 | 395.2 |
| Engine Model | Vehicle Model | Minimum BSFC kg/kWh Engine Only/PTO |
|---|---|---|
| AGCO 3.3 L I3 Stage V | Fendt 211 | 0.212/0.293 |
| AGCO 4.4 L I4 Stage V | Fendt 314 | 0.226/0.277–0.303 |
| Deutz 6.1 L I6 Stage IIIA | Fendt 820 | 0.195/0.240 |
| Deutz 6.1 L I6 Stage V | Fendt 722 | 0.198/0.244 |
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Tull de Salis, R. Rapid Evaluation of Off-Highway Powertrain Architectures. World Electr. Veh. J. 2025, 16, 671. https://doi.org/10.3390/wevj16120671
Tull de Salis R. Rapid Evaluation of Off-Highway Powertrain Architectures. World Electric Vehicle Journal. 2025; 16(12):671. https://doi.org/10.3390/wevj16120671
Chicago/Turabian StyleTull de Salis, Rupert. 2025. "Rapid Evaluation of Off-Highway Powertrain Architectures" World Electric Vehicle Journal 16, no. 12: 671. https://doi.org/10.3390/wevj16120671
APA StyleTull de Salis, R. (2025). Rapid Evaluation of Off-Highway Powertrain Architectures. World Electric Vehicle Journal, 16(12), 671. https://doi.org/10.3390/wevj16120671