Category
Data type
Tag
Region
Multimodal Network Data for Privacy-Preserving Traffic Assignment
This repository contains all necessary assets to replicate the study "Multimodal traffic assignment from privacy-protected OD data."
📁 Data
Location: /data
The dataset includes the following components:
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Network Link Data: Parameters (cost, capacity, travel time) for each network link.
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Route Sets: Pre-defined sequences of links (routes) analyzed in the case studies.
💻 Code
Implementation: The full PPTA model, privacy mechanism, and evaluation framework.
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Language: Python 3.8+
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Dependencies: Install required libraries:
pip install numpy pandas matplotlib scipy cvxpy
Note: The Mosek solver requires a separate license and installation.
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Execution: Navigate to the
PrivacyPreservingTrafficAssignment
directory and run:python main_ppta_new.py
This will execute the main script and reproduce the key results from the paper.
📄 Documentation
For a detailed explanation of the methodology, file descriptions, and step-by-step instructions, refer to:replication-explanatory-file-commtr-PPTA.docx

Traffic congestion data in Alameda County in the San Francisco Bay Area, California
‘final_df.csv’ includes travel time index (TTI) and all potential influential factors for pre-lockdown, lockdown, and post-lockdown periods.

Machine learning-based real-time crash risk forecasting for
pedestrians
This package contains R codes and python code as well as model input data to conduct replication. An explanatory file has also been provided.

Replication Package for “What patterns contribute to autonomous vehicle crashes?” (L2 & L4, 2014–2024)
This replication package accompanies the manuscript “What patterns contribute to autonomous vehicle crashes? A study of Levels 2 and 4 automation using association rule analysis.”
It provides: (i) code to harmonize California DMV AV crash reports and NHTSA SGO crash reports into a unified, analysis-ready table; and (ii) scripts to run Apriori association rule mining with support/confidence/lift threshold


Scalable and Reliable Multi-agent Reinforcement Learning for Traffic Assignment
This is the code and datasets for the potential publication "Scalable and Reliable Multi-agent Reinforcement Learning for Traffic Assignment".

Efficient and Stable Ride-Pooling through a Multi-Level Coalition Formation Game
This replication package contains the source code, configuration files, input data, and result samples for the paper “Efficient and stable ride-pooling through a multi-level coalition formation game”. The package allows users to reproduce all experiments reported in the article. Instructions for environment setup and execution are provided in the included README and configuration files.



Manuscript: Quantitative assessment of mid-air collision probability in urban air mobility: A safety barrier-based framework for integrated operations
This is the code and datasets for the paper "Quantitative assessment of mid-air collision probability in urban air mobility: A safety barrier-based framework for integrated operations". This research proposes a method to systematically quantify the mid-air collision (MAC) risk for different operation types in urban air mobility (UAM).

Humanoid Cognition-Based Approach: Lane-Changing Decision Making and Dynamic Trajectory Planning for Autonomous Driving
This study proposes a lane-changing decision and trajectory planning algorithm for intelligent vehicles on highways that takes driver behavior into consideration. A co-simulation model based on Prescan and Simulink was built to validate the designed trajectory planning algorithm. The code and data related to the proposed algorithm and its verification are also provided.

Manuscript: Deep Reinforcement Learning-Based Eco-Driving: Bridging Short-Term Energy-Efficient and Long-Term Battery-Health-Aware Strategy in Dynamic Driving Cycles
This is the code and datasets for the potential publication "Deep Reinforcement Learning-Based Eco-Driving: Bridging Short-Term Energy-Efficient and Long-Term Battery-Health-Aware Strategy in Dynamic Driving Cycles".



Towards fair lights: A multi-agent masked deep reinforcement learning for efficient corridor-level traffic signal control
The is the code for paper "Towards fair lights: A multi-agent masked deep reinforcement learning for efficient corridor-level traffic signal control". Run train.py for deep reinforcement learning model training. Run test.py for testing.

Beyond Conventional Vision: RGB-Event Fusion for Robust Object Detection in Dynamic Traffic Scenarios
The code is used in the paper:"Beyond Conventional Vision: RGB-Event Fusion for Robust Object Detection in Dynamic Traffic Scenarios"

Can combined virtual-real testing speed up autonomous vehicle testing? Findings from AEB field experiments
This replication package includes the complete code and dataset used in our study titled “Can Combined Virtual-Real Testing Speed Up Autonomous Vehicle Testing? Findings from AEB Field Experiments." The materials provided are essential for researchers and practitioners interested in replicating our experiments and validating the findings.

The dataset of the paper "MoTIF: An end-to-end Multimodal Road Traffic Scene Understanding Foundation Model"
该数据集包括 2023 年 10 月城市十字路口四个方向的监控视频。 这些视频的分辨率为 3840×2160,帧速率为每秒 30 帧 (fps),场景理解标注涵盖交通拥堵程度、行人和车辆数量、行为意图等正常场景。

The Fundamental Diagram of Autonomous Vehicles: Traffic State Estimation and Evidence from Vehicle Trajectories
This repository includes the replication code for utilizing the PFD method for traffic state estimation applications.


Optimal speed limit under multi-class user equilibrium: A prescriptive approach using mathematical programming
The replication package contains the matlab code and data to replicate the performed experiments described in the manuscript.

Original data used in the paper Privacy-preserving Personalized Pricing and Matching for Ride-hailing Platforms.
This dataset is the original data used in the paper Privacy-preserving Personalized Pricing and Matching for Ride-hailing Platforms. Based on the real demand information contained in this dataset, we generated the dataset used in our study. The generation process is detailed in the numerical experiments section of the paper.

Safety-critical scenario test for intelligent vehicles via hybrid participations of natural and adversarial agents
Safety-critical scenario test for intelligent vehicles via hybrid participations of natural and adversarial agents

A knowledge-informed deep learning paradigm for generalizable and stability-optimized car-following models
This repository contains the official code and datasets for A Knowledge-Informed Deep Learning Paradigm for Generalizable and Stability-Optimized Car-Following Models.

DBSCAN-Natural Break Hybrid Clustering for Traffic State Classification
This project implements a hybrid clustering approach combining DBSCAN (Density-Based Spatial Clustering of Applications with Noise) and Natural Breaks (Jenks) to classify traffic states. The algorithm is designed to extract meaningful traffic patterns from speed data across road segments by determining relative speed thresholds for various traffic states and analyzing the inter-segment relationships in traffic behavior.
The main functions include:
- Determining relative speed thresholds for traffic state classification using hybrid clustering.
- Computing statistical metrics (mean, standard deviation, etc.) of relative speeds in each cluster.
- Analyzing the correlation of traffic states between adjacent road segments, including:
- Linear regression slope and intercept.
- Pearson correlation coefficient (R).
- p-value of statistical significance.
- Standard error of regression coefficients.

code and data of A Bidirectional-Search-Based Hybrid A* Path Planning Method for Enhancing Passenger Comfort in Adjacent Vehicle Deviation Scenarios
The deviation of the FPS of adjacent vehicles will significantly reduce the CPBA of the target vehicle, and may even render it infeasible for passages to board or alight the vehicle. To mitigate this negative impact, this paper proposes a BHA* path planning method for non-standard FPS. In this method, the FPS optimization strikes a balance between the safety distance and the allowed OAVD to enhance the CPBA. Then, the BHA* algorithm rapidly generate paths for optimized FPS without FPS planning errors. The total time for FPS optimization and path planning is within 2.5 seconds, which meets the real - time requirements of practical applications. Simulation experiments based on the parameters of real vehicles and parking scenarios, as well as comparative experiments with the HA* algorithm, were conducted to verify the effectiveness and superiority of the proposed method. This research pioneers the integration of considerations regarding the CPBA into automatic parking path planning. This database contains the implementation code and supporting data for the proposed method
