Velocity Prediction Based on Vehicle Lateral Risk Assessment and Traffic Flow: A Brief Review and Application Examples
Abstract
:1. Introduction
1.1. The Relationship among Velocity Prediction, Traffic Environment, and Vehicle Handling Dynamics
1.2. Contributions and Paper Structure
- (1)
- Firstly, we reviewed the macroscopic-traffic-flow-model-based prediction method, which could help improve vehicle speed prediction. This mathematical model has a quick solving speed, and it is easy to integrate the advantages of the information from various traffic sensors and communication systems. This makes the amount of interference quickly back the forecast results in real-time traffic.
- (2)
- Secondly, we reviewed forecasting method based on traffic data, helping to facilitate the possible integration of multiple prediction algorithms. On combining model-based forecasting methods and data-based forecasting methods, the hybrid prediction method has high computing efficiency, covering more data, and updating online at the same time. This paper can help improve the prediction method’s instantaneity, accuracy, and robustness.
- (3)
- Thirdly, different from available studies, since the vehicle lateral dynamics and correlation control methods are emerging techniques for velocity prediction, we provide a list of studies for potential applications in velocity prediction in NEVs.
- (4)
- Fourthly, a questionnaire section about the influence of various traffic flow models and vehicle lateral dynamics is given, and the application field of speed prediction algorithms along with missing points provides deep insight for prospective designers.
- (5)
- Lastly, a set of application examples are given, wherein three applications are introduced considering various traffic flow models, vehicle lateral dynamics, and speed prediction methods.
2. Review of Vehicle Speed Prediction Methods for NEVs
2.1. Macroscopic Traffic Flow Model and Vehicle Velocity Prediction
- Submicroscopic models (describing in detail the equations of vehicle subunits and their interactions with surrounding vehicles).
- Micro model (describing the distinction and tracking of individual entities in detail).
- Mesoscopic model (medium detail description).
- Macro model (less description of individuals).
2.1.1. One-Dimensional Flow Model
2.1.2. Multi-Lane Models, Multi-Class Models, and Random Models
2.1.3. Development Trend
2.2. Data-Based Traffic Flow Model and Vehicle Velocity Prediction
2.2.1. Research Status of Traffic Flow Evolution Using History Traffic Data and Artificial Intelligence Methods
2.2.2. Research Status of Velocity Prediction Using Real-Time Traffic Data
2.2.3. Development Trend
- Multiple prediction algorithms integration.
- Online correction and update technique.
- Balance between running online and computing burdens.
- Driver model and driving style recognition.
- Multi-source information integration.
2.3. Influence of Vehicle Lateral Dynamic on Speed Prediction
2.3.1. Influence of Vehicle Stability Control Methods on Speed Prediction
2.3.2. Development Trend
2.4. The Relationship between Energy Management and Velocity Prediction of HEVs
2.4.1. The Accuracy of Velocity Prediction in the Effectiveness of Energy Management
2.4.2. The Time Length of Velocity Prediction
2.4.3. Development Trends
- The engine operates in an efficient range.
- Making the vehicle friction process (between the tire and the road, and friction braking) as little as possible.
- Increasing battery life. Battery SoC is not too high or too low (usually between 40% and 90%), and corresponds to saturated (90% to 100%) and insufficient (0% to 40%) states.
3. Questions Raised
3.1. Traffic Flow Model (Both Macro and Data-Based)
- What causes errors in the macro traffic flow model?
- What determines the magnitude of the error?
- How to improve the model to reduce the error?
- What is the cause of the error in the prediction delay in the time axis?
- How does the macroscopic traffic flow model and the data-based model affect the error of prediction results?
- How can combining the above two methods reduce prediction error?
- How can neural networks correct the prediction delay of macroscopic traffic flow models?
3.2. Influence of Vehicle Lateral Dynamic on Speed Prediction
- What are the vehicle handling stability factors causing the speed prediction error?
- How do traffic velocity and traffic density affect drivers’ decision-making with different handling characteristics?
- Energy, time, and safety are often conflicted. Their weights vary depending on the driver. What is the mechanism by which we get optimal path and speed?
- Planning the longitudinal speed of intelligent vehicles to improve traffic efficiency, traffic safety, and energy utilization efficiency is a key scientific problem.
4. The Application Field of Speed Prediction
4.1. Vehicle Handling Stability Criterion Model by Neural Network
4.2. Multi-Objective Optimization Path Planning for Hybrid Vehicles
4.2.1. Composite Index
4.2.2. Driving Safety Index
4.2.3. Travel Time Index
4.2.4. Energy Expenditure Index
4.2.5. Determination of Weighting Factors
4.3. Path Planning Application
5. Conclusions
Funding
Conflicts of Interest
References
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VPM | Advantages of VPM | Disadvantages of VPM | Suitable Application Scenarios | Ref. |
---|---|---|---|---|
Traffic Flow Model-based VPM. |
|
| It is suitable for predicting traffic flow that does not change rapidly, such as traffic parameters within expressways and urban trunk road. | [21,22,23,24,25,26,27,32,33,34,35,36,37] |
History data-based VPM. | Less time is devoted to model selection and calibration. |
| Suburban roads where the traffic situation is relatively simple and the traffic flow is small. | [43,44,45,46,47,48,49,50,51,52,53] |
Real-time data-based VPM. | It is robust to uncertain phenomena or to unpredictable accidents. | High requirements for traffic sensors and other infrastructure. | Forecast of traffic flow in urban road network. | [54] |
Traffic safety-based VPM. | It is convenient to integrate with path planning of autonomous vehicles. |
| Automatic driving condition. Advanced driving assistance. | [62,63,64,65,66,67,68,69,70,71] |
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Li, L.; Coskun, S.; Wang, J.; Fan, Y.; Zhang, F.; Langari, R. Velocity Prediction Based on Vehicle Lateral Risk Assessment and Traffic Flow: A Brief Review and Application Examples. Energies 2021, 14, 3431. https://doi.org/10.3390/en14123431
Li L, Coskun S, Wang J, Fan Y, Zhang F, Langari R. Velocity Prediction Based on Vehicle Lateral Risk Assessment and Traffic Flow: A Brief Review and Application Examples. Energies. 2021; 14(12):3431. https://doi.org/10.3390/en14123431
Chicago/Turabian StyleLi, Lin, Serdar Coskun, Jiaze Wang, Youming Fan, Fengqi Zhang, and Reza Langari. 2021. "Velocity Prediction Based on Vehicle Lateral Risk Assessment and Traffic Flow: A Brief Review and Application Examples" Energies 14, no. 12: 3431. https://doi.org/10.3390/en14123431
APA StyleLi, L., Coskun, S., Wang, J., Fan, Y., Zhang, F., & Langari, R. (2021). Velocity Prediction Based on Vehicle Lateral Risk Assessment and Traffic Flow: A Brief Review and Application Examples. Energies, 14(12), 3431. https://doi.org/10.3390/en14123431