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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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List

  • Published on: 2026-03-03

    STPredictor: Ship Trajectory Prediction with Instruction-Aligned Large Language Models

    Siyu Teng

    STPredictor is an explainable ship trajectory prediction framework powered by large language models. It reformulates trajectory prediction as a language modeling task using natural-language prompts and integrates Chain-of-Thought reasoning for more transparent and reliable predictions. Experiments on two large-scale AIS datasets show strong performance and improved interpretability over existing baselines.

    Marintime transportationTrajectory prediction
    DOI: 10.26599/ETSD.2026.9190006
    CSTR: 32009.11.ETSD.2026.9190006
    Global
  • Published on: 2026-03-02

    Replication Package for CogDrive:  Cognition-Driven Multimodal Prediction-Planning Fusion for Safe Autonomy 

    Heye Huang, Yibin Yang, Mingfeng Fan, Haoran Wang, Xiaocong Zhao, Jianqiang Wang

    This replication package provides the complete source code and configuration files used in the study “CogDrive: Cognition-Driven Multimodal Prediction-Planning Fusion for Safe Autonomy.”

    The package enables full reproduction of the proposed cognition-driven multimodal trajectory prediction and safety-aware planning framework, including model architecture implementation, training procedures, evaluation scripts, and planning modules.

    The provided code supports both open-loop prediction evaluation and closed-loop planning simulations as reported in the manuscript. All scripts are organized to facilitate reproducibility of the main experimental results on public autonomous driving benchmarks.

    Automated vehicleHuman-like decision
    DOI: 10.26599/ETSD.2026.9190005
    CSTR: 32009.11.ETSD.2026.9190005
    Global
  • Published on: 2026-01-26

    Towards zero-forget continual learning for interactive trajectory prediction: a dynamically expandable approach

    Huiqian Li, Xiaozhou Wu, Jin Huang, Zhihua Zhong

    This paper identifies, analyzes, and addresses case-level forgetting in continual learning for trajectory prediction. We propose the Dynamically Expandable Interactive Trajectory Predictor (DEITP), a novel framework that preserves previously learned knowledge through a dynamic model expansion mechanism. The mechanism regulates expansion timing by assessing model similarity, thereby controlling model growth while preventing catastrophic forgetting. Furthermore, to operate in realistic task-free settings where task identity is unavailable at test time, we introduce a task identification strategy based on a familiarity autoencoder that selects the most appropriate expert for prediction. Extensive experiments on real-world datasets demonstrate that DEITP substantially mitigates forgetting and achieves zero-forgetting performance when task identities are known.

    Autonomous vehiclesDriving behavior
    DOI: 10.26599/ETSD.2026.9190004
    CSTR: 32009.11.ETSD.2026.9190004
    Global
  • Published on: 2026-01-19

    Prior-knowledge-guided Model-based Reinforcement Learning for Integrated Longitudinal-Lateral Control of Vehicular Platoons

    xia wu, haigen min, zihao mao, yanbing yan, yang liu, guoyan wu

    The entire project package is uploaded. Simply unzip it and run the train and test functions separately; the data have already been preprocessed.

    Automated vehicleFleet managementDeep reinforcement learningModel-based reinforcement learning
    DOI: 10.26599/ETSD.2026.9190003
    CSTR: 32009.11.ETSD.2026.9190003
    North America, United States
  • Published on: 2026-01-19

    A Federated Meta-Learning Method for Explainable, Privacy-Preserving and Customizable Behavior Analysis

    Linlin You, Kunxu Chen, Baichuan Mo, Jiemin Xie, Juanjuan Zhao, Jinhua Zhao

    Two standard datasets on travel mode choice are used, namely LPMC and Swissmetro (SM). The LPMC dataset consists of single-day travel diary data obtained by the London Travel Demand Survey from 2012 to 2015. The dataset includes 81,096 samples, each of which corresponds to a trip taken by a person in one of the 17,616 households participating in the survey. The dataset contains four travel modes, namely walking, cycling, public transportation (PT), and car. Moreover, the SM dataset comprises passenger survey data gathered in Switzerland. It includes samples from 1291 passengers across nine travel scenarios designed with three kinds of modes, i.e., train, SM, and car. In the materials, we make separate divisions based on the datasets. Among them, the "data" file contains the original data, the processed data, and the data processing code. The configuration details are described in the "conf" folder. The analysis code is included in the "utilities" file. Then, the codes for the centralized, federated learning framework and the federated meta-learning framework are also attached.

    Mode choice behaviorUrban mobility dynamicsDemand
    DOI: 10.26599/ETSD.2026.9190002
    CSTR: 32009.11.ETSD.2026.9190002
    Europe, United Kingdom, London Europe, Swaziland, St. Gallen and Geneva
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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