Traffic Simulation of Future Intelligent Vehicles in Duisburg City Inner Ring
Abstract
:Featured Application
Abstract
1. Introduction
2. Methodology
2.1. Simulation Scenario
2.2. Traffic Demand
2.3. Vehicle Models with Different Levels of Automation
3. Establishment of Simulation
3.1. OD Matrix Traffic Demand
- Areas described by the OD matrix transfer into polygons in SUMO: The areas described by the OD matrix data source are saved in shapefiles (a data format for geometric location information); they are also described by geometric information (longitude and latitude). The most similar data format in SUMO is polygons. The boundary lines can be also described by geometric points in order. In this step, polyconvert in SUMO is used to transfer shapefiles into polygons.
- Polygons to TAZ: The Traffic Assignment Zone (TAZ) is a district defined in SUMO and the vehicles can be coded to drive from one TAZ to another within a certain period. The TAZ also comprises districts constituted by points; for better visualization, the geometric coordinate format is transferred to the XY coordinate in SUMO. Figure 4 shows the TAZ distribution of the studied area; all the areas in OD matrix are marked with red boxes.
- TAZ to edges/roads: To distribute the traffic demand from the whole zone into edges/roads, a python program called edgesInDistricts.py is used. Depending on the length of the roads, the traffic demand is distributed with different weights.
- OD matrix to trips: After the scope-related work is done, the traffic volume is processed. A function called od2trips has been used. The timeline has been used here to assign traffic into hours. Trucks and passenger cars are processed separately.
- Trips to routes: At last, through the network file and trip files in the last step, duarouter is used to generate the route file. The route file describes when and where each vehicle starts on the map, and through which edges/roads it arrives at the destination.
3.2. Induction Loops Traffic Demand
- Loop position and type: There are three types of induction loops in SUMO; “source” loops are the ones where vehicles start, “between” loops are in the middle position, and “sink” loops are the loops where vehicles vanish from the simulation. In this paper, the roads outside the ring in the entering directions are selected to be the source loops. In total, induction loops on 8 roads marked with green arrows in Figure 2b are set as the source loops.
- Traffic flow: In order to be recognized by the program, the flow file in SUMO should be in csv format with fixed form. However, the vehicle amount of each induction loop is saved by intersection names. MATLAB is used here to transform the data into the SUMO-required format.
- Generate route files and vehicles: Using the network file and flow file, the route file and vehicle file required in the simulation are generated by a sub-program in SUMO called flowrouter. In this step, the departure lanes are also modified to avoid conflicts by generating routes.
- Change source loops position: The positions of induction loops are always close to an intersection. Sometimes the distance between the induction loops is less than the length of a vehicle. This causes unwanted traffic jams upon vehicle insertion, which in turn affects the entire simulation. Therefore, all the positions of source loops are moved to the side, far from the intersection.
3.3. Verification Data
4. Results and Discussion
4.1. Comparison of Different Traffic Demand Sources
4.2. Comparison of Different Degrees of Automation
5. Conclusions and Discussions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Ma, X.; Hu, X.; Weber, T.; Schramm, D. Traffic Simulation of Future Intelligent Vehicles in Duisburg City Inner Ring. Appl. Sci. 2021, 11, 29. https://doi.org/10.3390/app11010029
Ma X, Hu X, Weber T, Schramm D. Traffic Simulation of Future Intelligent Vehicles in Duisburg City Inner Ring. Applied Sciences. 2021; 11(1):29. https://doi.org/10.3390/app11010029
Chicago/Turabian StyleMa, Xiaoyi, Xiaowei Hu, Thomas Weber, and Dieter Schramm. 2021. "Traffic Simulation of Future Intelligent Vehicles in Duisburg City Inner Ring" Applied Sciences 11, no. 1: 29. https://doi.org/10.3390/app11010029
APA StyleMa, X., Hu, X., Weber, T., & Schramm, D. (2021). Traffic Simulation of Future Intelligent Vehicles in Duisburg City Inner Ring. Applied Sciences, 11(1), 29. https://doi.org/10.3390/app11010029