UXsim
Vehicular traffic flow simulator in road network, written in pure Python
Install / Use
/learn @toruseo/UXsimREADME
UXsim: Network traffic flow simulator in pure Python
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UXsim is a free, open-source macroscopic and mesoscopic network traffic flow simulator written in Python. It simulates the movements of car travelers and traffic congestion in road networks. It is suitable for simulating large-scale (e.g., city-scale) traffic phenomena. UXsim is especially useful for scientific and educational purposes because of its simple, lightweight, and customizable features, but users are free to use UXsim for any purpose.
If you are interested, please see:
- Jupyter Notebook or Google Colab: Interactive demonstrations and tutorials
- Technical Documentation: Detailed documents on tutorials, simulation mechanism, and specifications of modules/functions
Main Features
- Simple, lightweight, and easy-to-use Python implementation of modern standard models of dynamic network traffic flow
- Macroscopic and mesoscopic traffic simulation: Simulating over 60000 vehicles in a city in 30 seconds, or even 1 million vehicles in a metropolitan area in 40 seconds depending on the simulation setting
- Dynamic traffic assignment: Traffic flow simulation with a given network and time-dependent OD demand
- Approximate solvers for Dynamic User Equilibrium and Dynamic System Optimum are also available
- Theoretically valid models commonly used in academic and professional transportation research
- Implementation of traffic control and management schemes such as taxi/shared-mobility, traffic signals, road pricing, and so on
- Flexible and customizable thanks to pure Python implementation
- Basic analysis of simulation results and their export to
pandas.DataFrameand CSV files - Visualization of simulation results using
Matplotlib; interactive GUI is also available - Can also be directly integrated with other Python-based frameworks, such as
PyTorchfor deep reinforcement learning traffic control - The main code
uxsim.pyis only about 1200 lines of code. Users may easily understand and customize it - Dependency-free: you can use the simulator by doing
pip install uxsimonly
- Basic analysis of simulation results and their export to
- Provides a seamless user experience by integrating scenario construction, simulation, and data analysis into a unified, transparent Python workflow
Simulation Examples
Large-scale scenario
Below are simulation results where approximately 60000 vehicles pass through a 10km x 10km grid network in 2 hours. The computation time was about 30 seconds on a standard desktop PC.
Visualization of link traffic states (thicker lines mean more vehicles, darker colors mean slower speeds) and some vehicle trajectories:
<p float="left"> <img src="https://github.com/toruseo/UXsim/blob/images/gridnetwork_macro.gif" width="400"/> <img src="https://github.com/toruseo/UXsim/blob/images/gridnetwork_fancy.gif" width="400"/> </p>Vehicle trajectory diagram on a corridor of the above network: <img src="https://github.com/toruseo/UXsim/blob/images/tsd_traj_links_grid.png" width="600">
Deep reinforcement learning signal control using PyTorch
A traffic signal controller is trained by deep reinforcement learning (DRL) using PyTorch. The left (or upper) scenario shows no control with fixed signal timing; the traffic demand exceeds the network capacity with the naive signal setting, and a gridlock occurs. The right (or bottom) scenario shows DRL control, where the traffic signal can be changed by observing queue length; although the demand level is the same, traffic flows smoothly. A Jupyter Notebook of this example is available.
<p float="left"> <img src="https://github.com/toruseo/UXsim/blob/images/anim_network1_0.22_nocontrol.gif" width="400"/> <img src="https://github.com/toruseo/UXsim/blob/images/anim_network1_0.22_DQL.gif" width="400"/> </p> <!-- ### Interactive GUI for exploring a simulation result https://github.com/toruseo/UXsim/assets/34780089/ec780a33-d9ba-4068-a005-0b06127196d9 -->Install
UXsim is available for Python version 3.10 or later.
Using pip
The simplest way is to use pip to install from PyPI:
pip install uxsim
<details>
<summary>Alternative methods for advanced users (click to see)</summary>
Using conda
You can also install with conda from conda-forge channel:
conda install uxsim
For the details, please see here.
Using pip with custom configuration
You can also use pip to install the GitHub version:
pip install -U -e git+https://github.com/toruseo/uxsim@main#egg=uxsim
Or any other (development) branch on this repo or your own fork:
pip install -U -e git+https://github.com/YOUR_FORK/uxsim@YOUR_BRANCH#egg=uxsim
Manual install
Download the uxsim directory from this Github repo or the latest release and place it in your local directory as follows:
your_project_directory/
├── uxsim/ # The uxsim directory
│ ├── uxsim.py # The main code of UXsim. You can customize this as you wish
│ └── ... # Other files and directories in uxsim
├── your_simulation_code.py # Your code if necessary
├── your_simulation_notebook.ipynb # Your Jupyter notebook if necessary
├── ... # Other files if necessary
This way, you can flexibly customize UXsim on your own.
</details>Getting Started
As a simple example, the following code will simulate traffic flow in a Y-shaped network.
from uxsim import World
# Define the main simulation
# Units are standardized to seconds (s) and meters (m)
W = World(
name="", # Scenario name
deltan=5, # Simulation aggregation unit delta n
tmax=1200, # Total simulation time (s)
print_mode=1, save_mode=1, show_mode=1, # Various options
random_seed=0 # Set the random seed
)
# Define the scenario
# Create nodes
W.addNode(name="orig1", x=0, y=0) #xy coords are for visualization
W.addNode(name="orig2", x=0, y=2)
W.addNode(name="merge", x=1, y=1)
W.addNode(name="dest", x=2, y=1)
# Create links between nodes
W.addLink(name="link1", start_node="orig1", end_node="merge", length=1000, free_flow_speed=20, number_of_lanes=1)
W.addLink(name="link2", start_node="orig2", end_node="merge", length=1000, free_flow_speed=20, number_of_lanes=1)
W.addLink(name="link3", start_node="merge", end_node="dest", length=1000, free_flow_speed=20, number_of_lanes=1)
# Create OD traffic demand between nodes
W.adddemand(orig="orig1", dest="dest", t_start=0, t_end=1000, flow=0.45)
W.adddemand(orig="orig2", dest="dest", t_start=400, t_end=1000, flow=0.6)
# Run the simulation to the end
W.exec_simulation()
# Print summary of simulation result
W.analyzer.print_simple_stats()
# Visualize snapshots of network traffic state for several timesteps
W.analyzer.network(t=100, detailed=1, network_font_size=12)
W.analyzer.network(t=600, detailed=1, network_font_size=12)
W.analyzer.network(t=800, detailed=1, network_font_size=12)
It will output text to the terminal and images to the out directory like below:
simulation setting:
scenario name:
simulation duration: 1200 s
number of vehicles: 810 veh
total road length: 3000 m
time discret. width: 5 s
platoon size: 5 veh
number of timesteps: 240
number of platoons: 162
number of links: 3
number of nodes: 4
setup time: 0.00 s
simulating...
time| # of vehicles| ave speed| computation time
0 s| 0 vehs| 0.0 m/s| 0.00 s
600 s| 130 vehs| 13.7 m/s| 0.03 s
1195 s| 75 vehs| 12.3 m/s| 0.06 s
simulation finished
results:
average speed: 11.6 m/s
number of completed trips: 735 / 810
average travel time of trips: 162.6 s
average delay of trips: 62.6 s
delay ratio: 0.385
<p float="left">
<img src="https://github.com/toruseo/UXsim/blob/images/network1_100.png" width="250"/>
<img src="https://github.com/toruseo/UXsim/blob/images/network1_600.png" width="250"/>
<img src="https://github.com/toruseo/UXsim/blob/images/network1_800.png" width="250"/>
</p>
Further Reading
To learn more about UXsim, please see:
- [Simple demo in Jupyter Notebook](https://github.co
