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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

List

  • Published on: 2026-04-26

    Vehicle Platoon Trajectory Prediction Under Traffic Oscillation: A Causal Physics-Informed Deep Learning Approach

    Jipu Li

    In the data file, NGSIM refers to the NGSIM trajectory data mentioned in the paper.
    In the data file, WHUT contains the TVD trajectory data.
    All code is stored in the “code” folder.
    The filenames in the “code” folder correspond to the comparison model code and my complete model code, respectively.
    Code Execution Order:
    1. First, set up a virtual environment according to the requirements in `requirements.txt`.
    2. Use the code in the “Data Preprocessing” section to build a standard training dataset. Note that you must manually adjust the prediction step size in the dataset to match that of each code file to ensure consistency.
    3. Place the constructed data in a location accessible to all scripts, then run each script individually. To facilitate execution by readers, each .py file includes the model architecture, training code, testing code, validation code, and code for visualizing and saving results.

    Driver behaviourCar-following interaction
    DOI: 10.26599/ETSD.2026.9190014
    CSTR: 32009.11.ETSD.2026.9190014
    Asia, China, WUHAN
  • Published on: 2026-04-24

    EV Platoon Dataset for OPD/TPD Car-Following Experiments

    Tianle Zhu, Handong Yao, Wenjie Zhao, Qianwen Li

    This dataset provides field-collected data from an electric vehicle (EV) platoon, specifically curated to analyze car-following behavior across different driving modes and control types.

    By capturing data under both One-Pedal Driving (OPD) and Two-Pedal Driving (TPD)—and comparing Manual Driving against Adaptive Cruise Control (ACC)—the dataset offers a comprehensive look at how EV technology influences traffic flow.

    Key Dataset Features

    • Vehicle Composition: The data tracks a four-vehicle platoon consisting of one Internal Combustion Engine (ICE) lead vehicle followed by three EVs.

    • Data Resolution: All trajectories are recorded at a high-frequency 10 Hz sampling rate.

    • Sensor Integration: The dataset includes synchronized GPS trajectories for all four vehicles, ensuring precise spatial and temporal alignment.

    Electric vehicleCar-following interaction
    DOI: 10.26599/ETSD.2026.9190013
    CSTR: 32009.11.ETSD.2026.9190013
    North America, United States, Athens
  • Published on: 2026-04-24

    Can Large Language Models Capture Human Risk Preferences? A Cross-Cultural Study

    Jianing Liu, Bing Song, Vinayak Dixit, Chenyang Wu, Sisi Jian

    Due to privacy constraints, we have provided anonymized samples with randomly shuffled data distributions to illustrate the data structure used in our experiments.

    Human-like decisionSurvey
    DOI: 10.26599/ETSD.2026.9190012
    CSTR: 32009.11.ETSD.2026.9190012
    Asia, China Oceania, Australia
  • Published on: 2026-04-03

    Replication Package for COIN: Collaborative Interaction-Aware Multi-Agent Reinforcement Learning for Self-Driving Systems

    Yifeng Zhang, Jieming Chen, Tingguang Zhou, Tanishq Duhan, Jianghong Dong, Yuhong Cao, Guillaume Sartoretti

    This repository is the replication package for COIN: Collaborative Interaction-Aware Multi-Agent Reinforcement Learning for Self-Driving Systems. It provides the codebase, dependencies, and instructions needed to reproduce the training and evaluation results of COIN in multi-agent self-driving scenarios.

    Autonomous vehiclesMulti-agent reinforcement learning
    DOI: 10.26599/ETSD.2026.9190011
    CSTR: 32009.11.ETSD.2026.9190011
    Global
  • Published on: 2026-03-31Updated on: 2026-04-03 Associated article: https://doi.org/10.26599/JICV.2026.9210078

    Examining driving behaviors and trust in an in-vehicle warning system under uncertainty: A roundabout study

    Cong Zhang

    ABSTRACT: Advanced driver assistance systems (ADASs) can greatly enhance road safety by providing real-time warnings to drivers in imminent crash situations. However, the provided warning time may deviate from its designed time. There is limited research on how warning uncertainties influence drivers’ behavior, safety performance, and trust. This study conducted a driving simulator study to examine how uncertainties in warnings impact driving behaviors and trust using a roundabout driving scenario. Two warning error distributions were constructed to represent low and high warning uncertainty levels. Thirty-six participants were recruited and randomly divided into two groups under the two uncertainty levels in a driving simulator experiment. The betweengroup analysis shows that the lower warning uncertainty level group results in higher trust and that trust increases (or decreases) over time under low (or high) uncertainty levels. The within-group analysis shows that higher warning errors downgrade drivers’ trust and safety performance when the errors are high. 

    Connected vehicleDriving behavior
    DOI: 10.26599/ETSD.2026.9190010
    CSTR: 32009.11.ETSD.2026.9190010.V2
    North America, United States, West Lafayette
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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