Optimization of railway operations using neural networks

被引:44
|
作者
Martinelli, DR
Teng, HL
机构
[1] Dept. of Civ. and Environ. Eng., West Virginia University, Morgantown
关键词
Algorithms - Artificial intelligence - Decision making - Mathematical programming - Neural networks - Problem solving - Scheduling;
D O I
10.1016/0968-090X(95)00019-F
中图分类号
U [交通运输];
学科分类号
08 ; 0823 ;
摘要
Railroad operations involve complex switching and classification decisions that must be made in short periods of time. Optimization with respect to these decisions can be quite difficult due to the discrete and non-linear characteristics of the problem. The train formation plan is one of the important elements of railroad system operations. While mathematical programming formulations and algorithms are available for solving the train formation problem, the CPU time required for their convergence is excessive. At the same time, shorter decision intervals are becoming necessary given the highly competitive operating climates of the railroad industry. The field of Artificial Intelligence (Al) offers promising alternatives to conventional optimization approaches. In this paper, neural networks (an empirically-based AI approach) are examined for obtaining good solutions in short time periods for the train formation problem (TFP). Following an overview, and formulation of railroad operations, a neural network formulation and solution to the problem are presented. First a training process for neural network development is conducted followed by a testing process that indicates that the neural network model will probably be both sufficiently fast, and accurate, in producing train formation plans. Copyright (C) 1996 Elsevier Science Ltd
引用
收藏
页码:33 / 49
页数:17
相关论文
共 50 条
  • [41] Sensitivity analysis on a construction operations simulation model using neural networks
    Lu, M
    Chan, WH
    Yeung, DS
    Proceedings of 2005 International Conference on Machine Learning and Cybernetics, Vols 1-9, 2005, : 4173 - 4178
  • [42] Automation of some operations of a wind tunnel using artificial neural networks
    Decker, AJ
    Buggele, AE
    AIAA JOURNAL, 1996, 34 (02) : 421 - 423
  • [43] Image Classification Using Convolutional Neural Networks with Different Convolution Operations
    Hsu, Chi-Yi
    Tseng, Chien-Cheng
    Lee, Su-Ling
    Xiao, Bing-Yu
    2020 IEEE INTERNATIONAL CONFERENCE ON CONSUMER ELECTRONICS - TAIWAN (ICCE-TAIWAN), 2020,
  • [44] Efficient Optimization of Convolutional Neural Networks using Particle Swarm Optimization
    Yamasaki, Toshihiko
    Honma, Takuto
    Aizawa, Kiyoharu
    2017 IEEE THIRD INTERNATIONAL CONFERENCE ON MULTIMEDIA BIG DATA (BIGMM 2017), 2017, : 70 - 73
  • [45] Polymer property prediction and optimization using neural networks
    Roy, Nilay K.
    Potter, Walter D.
    Landau, David P.
    IEEE TRANSACTIONS ON NEURAL NETWORKS, 2006, 17 (04): : 1001 - 1014
  • [46] Multiobjective optimization of complex structure using neural networks
    Zhu, Xue-jun
    Xue, Liang
    Wang, An-lin
    Zhang, Hui-qiao
    Ye, Qing-tai
    Jixie Kexue Yu Jishu/Mechanical Science and Technology, 2000, 19 (03): : 368 - 370
  • [47] Using Neural Networks for Fast Numerical Integration and Optimization
    Lloyd, Steffan
    Irani, Rishad A.
    Ahmadi, Mojtaba
    IEEE ACCESS, 2020, 8 : 84519 - 84531
  • [48] Optimization of Artificial Neural Networks using Wavelet Transforms
    N. Vershkov
    M. Babenko
    A. Tchernykh
    V. Kuchukov
    N. Kucherov
    N. Kuchukova
    A. Yu. Drozdov
    Programming and Computer Software, 2022, 48 : 376 - 384
  • [49] Gradientless shape optimization using artificial neural networks
    Pathak, Krishna K.
    Sehgal, D. K.
    STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2010, 41 (05) : 699 - 709
  • [50] Portfolio Construction Using Neural Networks and Multiobjective Optimization
    Tsonev, Tsvetelin
    Georgiev, Slavi
    Georgiev, Ivan
    Mihova, Vesela
    Pavlov, Velizar
    NEW TRENDS IN THE APPLICATIONS OF DIFFERENTIAL EQUATIONS IN SCIENCES, NTADES 2023, 2024, 449 : 359 - 370