Designing and Evaluating a Neural Network-Based Control Strategy for a PMSM-Driven Electric Vehicle Under Various Driving Cycles
Highlights
- Development of an ANN-based controller capable of handling system nonlinearities and reducing the sensitivity to motor parameter variations.
- Improvement of speed tracking performance and stator current quality while maintaining satisfactory operation under various operating conditions.
- The proposed controller, based on artificial neural networks, improves the dynamic response and robustness of the PMSM drive system.
- The results obtained demonstrate superior performance and greater energy efficiency compared to conventional control strategies.
- Improved control system efficiency causes reduced energy consumption and increased autonomy for electric vehicles.
- These research findings bring new prospects for integrating AI approaches into advanced control systems for electric motors.
Abstract
1. Introduction
2. System Architecture
3. Design of the Control System
3.1. Dimensioning the Power Required to Propel an Electric Vehicle
3.2. Parametric Modeling of Synchronous Motors
3.3. ANN Controller Design
4. Results and Discussion
4.1. Analysis of the Training Results of a Multilayer Perceptron
4.2. Discussion of the Findings
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
| AC | Alternating Current |
| AI | Artificial Intelligence |
| ANN | Artificial Neural Network |
| DC | Direct Current |
| EV | Electric Vehicle |
| MLP | Multilayer Neural Network |
| MPC | Model Predictive Control |
| MSE | Mean Squared Error |
| RMSE | Root Mean Squared Error |
| PI | Proportional–Integral |
| PMSMs | Permanent Magnet Synchronous Motors |
| PWM | Pulse Width Modulation |
| DTC | Direct Torque Control |
| FLC | Fuzzy logic control |
| MFPCC | Model-Free Predictive Current Control |
| NLC | Nearest Level Control |
| FOC | Field-Oriented Control |
| THD | Total Harmonic Distortion |
Appendix A. List of Nomenclature
| Symbol | Description | Unit |
|---|---|---|
| Traction or propulsion force | Newton (N) | |
| Aerodynamic force | Newton (N) | |
| Tire–road friction force | Newton (N) | |
| Grade (slope) force | Newton (N) | |
| M | Total vehicle mass | kilogram (kg) |
| a | Acceleration | meter per second squared (m/s2) |
| g | Gravitational acceleration | meter per second squared (m/s2) |
| α | Vehicle inclination angle | degree (°) |
| Tire rolling resistance coefficient | dimensionless | |
| ρ | Air density | kilogram per cubic meter (kg/m3) |
| v | Relative air speed | meter per second (m/s) |
| Aerodynamic drag coefficient | dimensionless | |
| A | Vehicle frontal area | square meter (m2) |
| Wheel radius | meter (m) | |
| Gear ratio | dimensionless | |
| Traction power | Watt (W) | |
| Torque load | Newton (N) | |
| d-axis and q-axis voltages | Volt (V) | |
| d-axis and q-axis currents | Ampere (A) | |
| Stator resistance | Ohm (Ω) | |
| Inductances (d-axis and q-axis) | Henry (H) | |
| Electrical angular speed | radian per second (rad/s) | |
| Mechanical angular speed | radian per second (rad/s) | |
| Permanent magnet flux linkage | Weber (Wb) | |
| magnetic flux (d-axis and q-axis) | Weber (Wb) | |
| P | Number of poles | dimensionless |
| Electromagnetic torque | Newton (N) | |
| Weight connecting input (i) to hidden Neuron (j) | dimensionless | |
| Bias of neuron | dimensionless | |
| f | Activation function | dimensionless |
| J | Jacobian matrix | dimensionless |
| H | Approximation of the Hessian matrix | dimensionless |
| N | Number of samples | dimensionless |
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| Road Holding | Aerodynamic Characteristics | Dimensions (mm) and Weights (kg) | |||
|---|---|---|---|---|---|
| RRC | 7.7 N/kN | S.Cd | 0.75 m2 | MTC | 1900 kg |
| Rw | 0.3105 m | ρ | 1.184 kg/m3 | Empty weight | 1580 kg |
| Rtrs | 1/9 | ||||
| Ref. | Control Strategy | Inverter Type | Switching Frequency | THD (%) | Advantages | Disadvantages |
|---|---|---|---|---|---|---|
| [38] | DTC | Multilevel NPC | 6 kHz | 43.25 |
|
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| [39] | FLC | Three phases Four legs | Not specified | 18.96 |
|
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| [40] | MFPCC | Three phases Two levels | 25 kHz | 6.07 |
|
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| [41] | NLC | Three phases TCHB | 10 kHz | 4.73 |
|
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| [42] | FOC | Three phases Two levels | 8 kHz | 3.84 |
|
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| This work | FOC enhances | Three phases Two levels | 5 kHz | 3.61 | - | - |
| ANNC | Three phases Two levels | 5 kHz | 2.92 |
|
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© 2026 by the authors. Published by MDPI on behalf of the World Electric Vehicle Association. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
Share and Cite
Ennajih, E.; Allali, H.; Ennajih, A.; Jarmouni, E.; Tarout, H. Designing and Evaluating a Neural Network-Based Control Strategy for a PMSM-Driven Electric Vehicle Under Various Driving Cycles. World Electr. Veh. J. 2026, 17, 327. https://doi.org/10.3390/wevj17070327
Ennajih E, Allali H, Ennajih A, Jarmouni E, Tarout H. Designing and Evaluating a Neural Network-Based Control Strategy for a PMSM-Driven Electric Vehicle Under Various Driving Cycles. World Electric Vehicle Journal. 2026; 17(7):327. https://doi.org/10.3390/wevj17070327
Chicago/Turabian StyleEnnajih, Elmehdi, Hakim Allali, Abdelhadi Ennajih, Ezzitouni Jarmouni, and Hind Tarout. 2026. "Designing and Evaluating a Neural Network-Based Control Strategy for a PMSM-Driven Electric Vehicle Under Various Driving Cycles" World Electric Vehicle Journal 17, no. 7: 327. https://doi.org/10.3390/wevj17070327
APA StyleEnnajih, E., Allali, H., Ennajih, A., Jarmouni, E., & Tarout, H. (2026). Designing and Evaluating a Neural Network-Based Control Strategy for a PMSM-Driven Electric Vehicle Under Various Driving Cycles. World Electric Vehicle Journal, 17(7), 327. https://doi.org/10.3390/wevj17070327

