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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.

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  • Published on: 2026-06-26

    Autonomous vehicle decision-making and safety evaluation based on physics-aware graphs and hybrid policy optimization

    lei he

    This replication package is associated with the manuscript “Autonomous vehicle decision-making and safety evaluation based on physics-aware graphs and hybrid policy optimization” submitted to the Journal of Intelligent and Connected Vehicles under manuscript ID JICV-2026-0020. The package includes source code, configuration files, simulation scripts, processed sample data, training logs, evaluation results, generated tables, figure-generation scripts, and a Replication Explanatory File for Journal-Associated Data. These materials support reproduction of the main experiments, including online reinforcement learning in highway-v0, comparisons among PPO-MLP, Ladm-PPO, and Ladm-HPO, offline safety evaluation using LadmCritic, TTC correlation analysis, and risk-energy field visualization. External datasets are not redistributed if restricted by their original data-use policies; instead, source information and preprocessing instructions are provided.

    Automated vehicleAutonomous driving
    DOI: 10.26599/ETSD.2026.9190025
    CSTR: 32009.11.ETSD.2026.9190025
    Asia, China, Changchun
  • Published on: 2026-06-26

    MILD: Mediator Agentic System with Bidirectional Perception and Multi-Layered Alignment for Human-Vehicle Collaboration

    Jiyao Wang, Yunbiao Wang, Yubo Jiao, Xiao Yang, Dengbo He, Sasan Jafarnejad, Luis Miranda-Moreno, Raphaël Frank, Jiangbo Yu

    The code and data for MILD. To access the original video of AIDE, DMD, and DriveLM, please refer to their source papers.

    Automated vehicleLarge language models
    DOI: 10.26599/ETSD.2026.9190024
    CSTR: 32009.11.ETSD.2026.9190024
    Asia, China
  • Published on: 2026-06-21

    A Ship Weather Routing Framework Based on the Dual-Mode Deep Reinforcement Learning

    Yangyu Zhou, Yuanyuan Xu, Shuxiu Liang, Jia Li, Ran Yan

    Ship navigation is strongly influenced by the ocean environment. Adverse sea environment not only increases fuel consumption but can also endanger navigation safety. For the challenge, a ship weather routing framework based on Deep Reinforcement Learning (DRL) is proposed.

    Due to limitations on the amount of data that can be uploaded, the replication package only contains the key code.

    The complete key code and data will be attached as additional attachments.

    Path planningMarintime transportation
    DOI: 10.26599/ETSD.2026.9190023
    CSTR: 32009.11.ETSD.2026.9190023
    Global
  • Published on: 2026-06-10

    The Swarm Intelligence Freeway–Urban Trajectories (SWIFTraj) Dataset–Part II: A Graph-Based Approach for Trajectory Connection

    Xinkai Ji, Pan Liu, Ying Yang, Yu Han

    In Part I of this companion paper series, we introduced SWIFTraj, an open-source vehicle trajectory dataset collected by a UAV swarm. It provides long-distance continuous trajectories by connecting vehicle trajectories across consecutive UAV videos, with the longest trajectory exceeding 4.5 km, and covers an integrated network of freeways and connected urban roads. However, trajectory connection in UAV swarms is challenging because of video time-offset errors and irregular UAV layouts. To address these issues, this paper proposes a graph-based trajectory connection method. An undirected graph is used to represent flexible UAV layouts, an automatic time-alignment method is developed by minimizing trajectory matching costs, and cross-video vehicle association is performed using a Hungarian-algorithm-based matching table. Experiments on real-world and simulated data show that the proposed method achieves time alignment errors within three frames, about 0.1 s, and consistently high vehicle-matching F1-scores.

    Trajectory reconstructionVehicle trajectory datasetTime alignmentUnmanned aerial vehicle (uav) swarmUndirected graph
    DOI: 10.26599/ETSD.2026.9190022
    CSTR: 32009.11.ETSD.2026.9190022
    Asia, China, Nanjing
  • Published on: 2026-06-10

    The Swarm Intelligence Freeway-Urban Trajectories (SWIFTraj) Dataset - Part I: Dataset Description and Applications

    Yu Han, Xinkai Ji, Chen Qian, Le Zhang, Ying Yang, Pan Liu

    This paper presents a detailed description and characterization of a new open-source vehicle trajectory dataset, namely SWIFTraj, constructed from videos recorded by a swarm of 16 drones equipped with 5.4K-resolution cameras. The dataset is distinguished from existing open-source trajectory datasets in several aspects. First, it provides long-distance continuous trajectories of up to 4.5 km on a freeway, enabling in-depth investigation of traffic phenomena and their spatial and temporal evolution. Second, the data collection site covers an integrated network consisting of a long freeway corridor and parts of its connected urban network, facilitating traffic analysis and modeling from a network perspective. The dataset is publicly available at the SWIFTraj website (https://www.swiftraj.com). 

    Traffic flowVehicle trajectorySwarm of dronesOpen datasetTransportation science
    DOI: 10.26599/ETSD.2026.9190021
    CSTR: 32009.11.ETSD.2026.9190021
    Asia, China, Nanjing
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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