A deep learning-assisted mathematical model for decongestion time prediction at railroad grade crossings

被引:4
|
作者
Jiang, Zhuocheng [1 ]
Guo, Feng [2 ]
Qian, Yu [2 ]
Wang, Yi [1 ]
Pan, W. David [3 ]
机构
[1] Univ South Carolina, Dept Mech Engn, Columbina, SC 29208 USA
[2] Univ South Carolina, Dept Civil & Environm Engn, Columbina, SC 29208 USA
[3] Univ Alabama, Dept Elect & Comp Engn, Huntsville, AL 35899 USA
来源
NEURAL COMPUTING & APPLICATIONS | 2022年 / 34卷 / 06期
关键词
Decongestion time prediction; Vehicle counting; Train passing time estimation; Convolution neural network; TRAFFIC CONGESTION DETECTION; DURATION MODELS;
D O I
10.1007/s00521-021-06625-z
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
This paper presents a deep learning-assisted framework to estimate the decongestion time at the grade crossing, and its key novelty lies in a differential approach to address the challenge associated with data deficiency of congestion events in grade crossings. A hypothesis of the traffic behavior during the congestion event caused by passing trains is proposed. A deep neural network-based vehicle crowd counting algorithm is developed to estimate the number of vehicles at the normal traffic condition. A running average-based motion detection algorithm is designed to estimate the time of the train passing through the grade crossing. A regression model is then constructed to relate the quantitative information with the decongestion time. In the experiments, 30 congestion events are video-recorded during a period of 200 h with different camera angles at a selected grade crossing, and then studied by the proposed method to learn the congestion pattern and predict the decongestion time, which to the best of our knowledge has not been attempted before. Analysis of the experimental results shows that the vehicle number at the normal traffic flow and the train passing time have significant influences on the traffic decongestion time. The relationship is captured by a quantitative model for rapid prediction. Our study also points out the direction for further improvement of the present development to meet the need for real-world applications.
引用
收藏
页码:4715 / 4732
页数:18
相关论文
共 50 条
  • [41] Deep learning-assisted radiomics facilitates multimodal prognostication for personalized treatment strategies in low-grade glioma
    P. Rauch
    H. Stefanits
    M. Aichholzer
    C. Serra
    D. Vorhauer
    H. Wagner
    P. Böhm
    S. Hartl
    I. Manakov
    M. Sonnberger
    E. Buckwar
    F. Ruiz-Navarro
    K. Heil
    M. Glöckel
    J. Oberndorfer
    S. Spiegl-Kreinecker
    K. Aufschnaiter-Hiessböck
    S. Weis
    A. Leibetseder
    W. Thomae
    T. Hauser
    C. Auer
    S. Katletz
    A. Gruber
    M. Gmeiner
    Scientific Reports, 13
  • [42] Deep learning-assisted IoMT framework for cerebral microbleed detection
    Ali, Zeeshan
    Naz, Sheneela
    Yasmin, Sadaf
    Bukhari, Maryam
    Kim, Mucheol
    HELIYON, 2023, 9 (12)
  • [43] Deep Learning-Assisted Jamming Mitigation with Movable Antenna Array
    Tang, Xiao
    Jiang, Yudan
    Liu, Jinxin
    Du, Qinghe
    Niyato, Dusit
    Han, Zhu
    arXiv,
  • [44] The Best of Two Worlds: Deep Learning-assisted Template Attack
    Wu L.
    Perin G.
    Picek S.
    IACR Transactions on Cryptographic Hardware and Embedded Systems, 2022, 2022 (03): : 413 - 437
  • [45] Deep learning-assisted literature mining for in vitro radiosensitivity data
    Komatsu, Shuichiro
    Oike, Takahiro
    Komatsu, Yuka
    Kubota, Yoshiki
    Sakai, Makoto
    Matsui, Toshiaki
    Nuryadi, Endang
    Permata, Tiara Bunga Mayang
    Sato, Hiro
    Kawamura, Hidemasa
    Okamoto, Masahiko
    Kaminuma, Takuya
    Murata, Kazutoshi
    Okano, Naoko
    Hirota, Yuka
    Ohno, Tatsuya
    Saitoh, Jun-ichi
    Shibata, Atsushi
    Nakano, Takashi
    RADIOTHERAPY AND ONCOLOGY, 2019, 139 : 87 - 93
  • [46] Vehicle Classification Using Deep Learning-Assisted Triboelectric Sensor
    Kinden, Seval
    Batmaz, Zeynep
    ARABIAN JOURNAL FOR SCIENCE AND ENGINEERING, 2023, 49 (5) : 6657 - 6673
  • [47] Deep learning-assisted comparative analysis of animal trajectories with DeepHL
    Takuya Maekawa
    Kazuya Ohara
    Yizhe Zhang
    Matasaburo Fukutomi
    Sakiko Matsumoto
    Kentarou Matsumura
    Hisashi Shidara
    Shuhei J. Yamazaki
    Ryusuke Fujisawa
    Kaoru Ide
    Naohisa Nagaya
    Koji Yamazaki
    Shinsuke Koike
    Takahisa Miyatake
    Koutarou D. Kimura
    Hiroto Ogawa
    Susumu Takahashi
    Ken Yoda
    Nature Communications, 11
  • [48] Deep learning-assisted elastic isotropy identification for architected materials
    Guo, Fenglin (flguo@sjtu.edu.cn), 1600, Elsevier Ltd (43):
  • [49] Cocrystal Prediction Tool (CCPT): A Web Server for Deep Learning-Assisted Cocrystal Screening and Density Evaluation
    Guo, Jiali
    Yang, Songran
    Wang, Chenghui
    Liu, Jing
    Guo, Yanzhi
    Yang, Zongwei
    Zhao, Xueyan
    Pu, Xuemei
    CRYSTAL GROWTH & DESIGN, 2024, 24 (20) : 8407 - 8414
  • [50] Machine learning-assisted macro simulation for yard arrival prediction
    Minbashi, Niloofar
    Sipila, Hans
    Palmqvist, Carl -William
    Bohlin, Markus
    Kordnejad, Behzad
    JOURNAL OF RAIL TRANSPORT PLANNING & MANAGEMENT, 2023, 25