Research on Intelligent Vehicle Tracking Control and Energy Consumption Optimization Based on Dilated Convolutional Model Predictive Control
Abstract
:1. Introduction
- A vehicle dynamics modeling method based on a dilated convolutional neural network is developed to more accurately capture complex vehicle dynamic behavior;
- A novel model-predictive control strategy (DCMPC) that integrates a DCNN is proposed, enabling joint optimization of trajectory tracking accuracy and energy consumption;
- Third-bullet system-level simulations are conducted under various scenarios, including high/low friction coefficient roads, different vehicle velocity, and double lane change/lane switching maneuvers. The results demonstrate that the DCMPC outperforms both neural network-based MPC (NNMPC) and traditional MPC in terms of tracking accuracy, control smoothness, and energy efficiency.
2. Vehicle System Modeling
2.1. Bicycle Model
2.2. Data-Driven Vehicle Model
2.2.1. Dilated Convolution Vehicle System Model
2.2.2. Tracking Error Model
2.2.3. Model Discretization
2.2.4. Dataset Composition
2.2.5. Data Processing
2.2.6. Model Training
2.2.7. Training Results Analysis
3. Design of Model Predictive Control Algorithm
3.1. Application of Dilated Convolution in Model Predictive Control
3.2. Tire-Slip Energy Consumption
4. Simulation Testing and Analysis
Double-Lane Change Maneuver Simulation Analysis
5. Conclusions
- This paper proposes an intelligent vehicle trajectory tracking and energy consumption optimization control framework that integrates dilated convolutional neural networks (DCNNs) with model predictive control (MPC). By introducing the dilated convolution structure, the method significantly improves path prediction accuracy, enhances feature extraction capabilities, and extends the perception range, providing more accurate trajectory information for subsequent model predictive control. This integration significantly improves trajectory tracking performance in complex dynamic environments.
- The proposed control strategy, combining the DCNN-based path prediction model with MPC, effectively achieves stable vehicle control without prior knowledge of the road surface friction coefficient. By coordinating control inputs with predicted trajectories, the system not only optimizes energy consumption but also maintains high trajectory tracking accuracy, demonstrating superior adaptability and robustness compared to traditional methods, especially in complex scenarios such as time-varying friction.
- In the simulation analysis, the proposed method was validated under different road surface friction coefficients and compared with traditional methods. The results show that the proposed method not only improves trajectory tracking accuracy but also demonstrates better energy consumption optimization, confirming its strong practical applicability in intelligent transportation and autonomous driving fields.
- In future research, the scope will be further expanded to focus on the robustness of the proposed method under extreme conditions and high noise environments as well as practical deployment challenges such as hardware constraints, real-time processing capabilities, and system scalability. The impact of the relaxation factor (ε) on the MPC framework will be studied in depth and compared with other stability enhancement methods. Additionally, testing scenarios will be extended to include more complex dynamic environments, such as consecutive S-curves and emergency obstacle avoidance, to comprehensively validate the robustness and adaptability of the proposed method. These efforts will contribute to the optimization of the control algorithm and enhance its practical application in intelligent vehicles.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Name/Unit | Symbolic | Unit |
---|---|---|
Travel distance | m | |
Vehicle heading angle | rad | |
Lateral error | M | |
Curvature | 1/m | |
Yaw rate | rad/s | |
Longitudinal velocity | m/s | |
Lateral velocity | m/s | |
Steering angle | rad | |
Longitudinal force of the front wheel | N | |
Front wheel slip angle | rad | |
Rear wheel slip angle | rad | |
Front/rear tire | / | |
The sideslip angle in the state of complete slip | rad | |
Sideslip angle | rad | |
Normal load | N | |
Vehicle friction coefficient | / | |
Vehicle cornering stiffness | N/rad | |
Distance from front axle to center of mass | M | |
Distance from rear axle to center of mass | M | |
Moment of inertia | Kg·m | |
Relaxation factor weighting coefficient | / | |
Minimum steering angle | rad | |
Maximum steering angle | rad | |
Minimum rate of change of steering angle | rad/s | |
Maximum rate of change of steering angle | rad/s | |
Longitudinal tire slip energy loss | J | |
Longitudinal tire slip force | N | |
Longitudinal tire slip speed | m/s |
Name/Unit | Symbolic | Value |
---|---|---|
Sampling time/s | T | 0.05 |
Relaxation factor weighting coefficient | 1000 | |
Vehicle mass/kg | m | 1732 |
Moment of inertia/(kg·m2) | Iz | 4175 |
Front wheel lateral cornering stiffness/(N/rad) | Ccf | 66,900 |
Rear wheel lateral cornering stiffness/(N/rad) | Ccr | 62,700 |
Front wheel longitudinal cornering stiffness/(N/rad) | Clf | 66,900 |
Rear wheel longitudinal cornering stiffness/(N/rad) | Clr | 62,700 |
Distance from front axle to center of mass/m | a | 1.232 |
Distance from rear axle to center of mass/m | b | 1.468 |
Prediction horizon/step | Np | 30 |
Control horizon/step | Nc | 3 |
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Li, L.; Pei, W.; Zhang, Q. Research on Intelligent Vehicle Tracking Control and Energy Consumption Optimization Based on Dilated Convolutional Model Predictive Control. Energies 2025, 18, 2588. https://doi.org/10.3390/en18102588
Li L, Pei W, Zhang Q. Research on Intelligent Vehicle Tracking Control and Energy Consumption Optimization Based on Dilated Convolutional Model Predictive Control. Energies. 2025; 18(10):2588. https://doi.org/10.3390/en18102588
Chicago/Turabian StyleLi, Lanxin, Wenhui Pei, and Qi Zhang. 2025. "Research on Intelligent Vehicle Tracking Control and Energy Consumption Optimization Based on Dilated Convolutional Model Predictive Control" Energies 18, no. 10: 2588. https://doi.org/10.3390/en18102588
APA StyleLi, L., Pei, W., & Zhang, Q. (2025). Research on Intelligent Vehicle Tracking Control and Energy Consumption Optimization Based on Dilated Convolutional Model Predictive Control. Energies, 18(10), 2588. https://doi.org/10.3390/en18102588