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Guide for authors

ETS-Data

ETS-Data is jointly established by Tsinghua University Press and School of Vehicle and Mobility, Tsinghua University, China and is a publicly accessible database, providing indispensable materials for result replications (data, codes, scripts, simulations, experimental designs, etc.). ETS-Data has been indexed by DCI (Data Citation Index) and Google Dataset Search.

Latest Update

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  • Published on: 2025-09-19

    Multimodal Network Data for Privacy-Preserving Traffic Assignment

    Guoyang Qin, Shidi Deng, Qi Luo, Jian Sun
     

    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:

    • Network Link Data: Parameters (cost, capacity, travel time) for each network link.

    • Route Sets: Pre-defined sequences of links (routes) analyzed in the case studies.

     

    💻 Code

    Implementation: The full PPTA model, privacy mechanism, and evaluation framework.

    • Language: Python 3.8+

    • Dependencies: Install required libraries:

      pip install numpy pandas matplotlib scipy cvxpy

      Note: The Mosek solver requires a separate license and installation.

    • 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 assignmentTransportation network
    DOI: 10.26599/ETSD.2025.9190062
    CSTR: 32009.11.ETSD.2025.9190062
    North America, United States
  • Published on: 2025-09-19

    Traffic congestion data in Alameda County in the San Francisco Bay Area, California

    Dan Zhu, Chisin Ng, Litian Xie, Yang Liu

    ‘final_df.csv’ includes travel time index (TTI) and all potential  influential factors for pre-lockdown, lockdown, and post-lockdown periods.

    Traffic flowCity
    DOI: 10.26599/ETSD.2025.9190061
    CSTR: 32009.11.ETSD.2025.9190061
    North America, United States
  • Published on: 2025-09-16

    Machine learning-based real-time crash risk forecasting for

    pedestrians

    Fizza Hussain

    This package contains R codes and python code as well as model input data to conduct replication. An explanatory file has also been provided. 

    TrajectoryTraffic speed
    DOI: 10.26599/ETSD.2025.9190060
    CSTR: 32009.11.ETSD.2025.9190060
    Oceania, Australia, brisbane
  • Published on: 2025-09-16

    Replication Package for “What patterns contribute to autonomous vehicle crashes?” (L2 & L4, 2014–2024)

    Hongliang Ding, Sicong Wang, Yang Cao, Xiaowen Fu, Hanlong Fu, Quan Yuan, Tiantian Chen

    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

    Autonomous vehiclesDriving behavior
    DOI: 10.26599/ETSD.2025.9190059
    CSTR: 32009.11.ETSD.2025.9190059
    North America, United States, California (statewide) North America, United States, United States (nationwide, NHTSA SGO)
  • Published on: 2025-09-16

    Scalable and Reliable Multi-agent Reinforcement Learning for Traffic Assignment

    Leizhen Wang, Peibo Duan, Cheng Lyu, Zewen Wang, Zhiqiang He, Nan Zheng, Zhenliang Ma

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

    Traffic assignmentDemand
    DOI: 10.26599/ETSD.2025.9190058
    CSTR: 32009.11.ETSD.2025.9190058
    Global
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Journal
Overview

Communications in Transportation Research

Communications in Transportation Research was launched in 2021, with academic support provided by Tsinghua University and China Intelligent Transportation Systems Association. The Editors-in-Chief are Professor Xiaobo Qu, a member of the Academia Europaea from Tsinghua University and Professor Shuai’an Wang from Hong Kong Polytechnic University. The journal mainly publishes high-quality, original research and review articles that are of significant importance to emerging transportation systems, aiming to become an international platform and window for showcasing and exchanging innovative achievements in transportation and related fields, to promote the exchange and development of transportation research between China and the international academic community. It has been indexed in SCIE, SSCI, ESCI, Ei Compendex, Scopus, DOAJ, TRID and other databases. On June 20, 2024, Communications in Transportation Research achieved its first Impact Factor of 12.5, ranking it top in the "TRANSPORTATION" category (1/58, Q1), and its 2023 CiteScore of 15.2 places it in the top 5% of journals in the Scopus database.

Indexed by international databases