Efficient Traffic Flow Guidance Feedback Strategy Considering Drivers’ Disobedience in ITS
Abstract
:1. Introduction
- (1)
- A procedure based on machine learning algorithms, namely the k-means and SVM methods, is used to classify drivers according to their behavior.
- (2)
- A new traffic flow guidance algorithm, the dynamic weighted vehicle density feedback strategy (DWVDFS), is proposed. This latter is based on WVDFS [12] suggested by Dong and Ma. In WVDFS, the vehicle velocity is not taken into account when calculating the vehicle density. In this work, vehicle velocity is considered as an important factor for determining whether traffic congestion happens or not. The adapted DWVDFS therefore takes into account the vehicle velocity when calculating the vehicle density.
- (3)
- A performance evaluation, to assess the added value of both DWVDFS and the pre-filtering technique, is carried out within different configurations. Our solution has been validated through a series of experiments.
2. Related Literature
- (A)
- Driving behavior
- (B)
- Traffic Flow Guidance Feedback Strategy WVDFS
3. Proposed Approach
3.1. Classification Setup
- The distance from home: Usually, drivers tend to follow the instructions of the vehicular system when they are not familiar with the routes. However, when they know the routes very well, there is a higher possibility for them to disobey the instructions. Thus, the distance between the vehicle’s current location and the driver’s home (or daily activity radius) is one of the factors that determines the driver’s next action.
- The age of the driver: Generally, a driver who is older tends to know more routes than young drivers (i.e., the drivers usually become more stubborn when they are young). We may conclude that the drivers who are older may have a higher possibility of disobeying the driving instructions.
- The gender of the driver: Male drivers are usually more confident about themselves; sometimes this kind of confidence is closer to arrogance, which leads to the disregard of the driving instructions.
- The ratio of current velocity/max velocity of the route: Generally, a driver drives faster when he is in a hurry, which leads to a higher ratio. The ratio thus mainly represents the mood of the driver. If the driver is in a hurry, we believe he will tend to follow the instructions.
- The rate of obedience at past times: Although the four factors above have certain influences when the driver makes a decision, the driver’s obedience rate is always important. This rate reflects the driver’s habits to some extent. If the driver has tended to follow the driving instructions in the past, he will tend to follow the instructions in the near future.
3.2. Labeling of Input Datasets
- (1)
- Choose the centers of classes ;
- (2)
- Given the centers () by selecting the closest center, assign all the points (input vector) to class
- (3)
- Given the points in classes (), calculate the new centers
- (4)
- Repeat steps (2) and (3) until convergence:
3.3. SVM Kernel Selection
3.4. New Traffic Flow Guidance Feedback Strategy DWVDFS
4. Simulation Results and Discussion
4.1. Experimental Design
4.2. Simulation Scenario and Performance Evaluation
4.3. Simulation Results and Analysis
Analysis of Different Scenes
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Hu, Z.; Labadie, N.; Khoukhi, L. Efficient Traffic Flow Guidance Feedback Strategy Considering Drivers’ Disobedience in ITS. Appl. Sci. 2023, 13, 5788. https://doi.org/10.3390/app13095788
Hu Z, Labadie N, Khoukhi L. Efficient Traffic Flow Guidance Feedback Strategy Considering Drivers’ Disobedience in ITS. Applied Sciences. 2023; 13(9):5788. https://doi.org/10.3390/app13095788
Chicago/Turabian StyleHu, Zhengyan, Nacima Labadie, and Lyes Khoukhi. 2023. "Efficient Traffic Flow Guidance Feedback Strategy Considering Drivers’ Disobedience in ITS" Applied Sciences 13, no. 9: 5788. https://doi.org/10.3390/app13095788
APA StyleHu, Z., Labadie, N., & Khoukhi, L. (2023). Efficient Traffic Flow Guidance Feedback Strategy Considering Drivers’ Disobedience in ITS. Applied Sciences, 13(9), 5788. https://doi.org/10.3390/app13095788