Modeling construction processes using artificial neural networks

被引:0
|
作者
Univ of Maryland, College Park, United States [1 ]
机构
来源
Autom Constr | / 4卷 / 307-320期
关键词
Computer simulation - Earthmoving machinery - Neural networks - Parallel processing systems - Random processes;
D O I
暂无
中图分类号
学科分类号
摘要
The paper evaluates a neural network approach to modeling the dynamics of construction processes that exhibit both discrete and stochastic behavior, providing an alternative to the more conventional method of discrete-event simulation. The incentive for developing the technique is its potential for (i) facilitating model development in situations where there is limited theory describing the dependence between component processes; and (ii) rapid execution of a simulation through parallel processing. The alternative ways in which neural networks can be used to model construction processes are reviewed and their relative merits are identified. The most promising approach, a recursive method of dynamic modeling, is examined in a series of experiments. These involve the application of the technique to two classes of earthmoving system, the first comprising a push-dozer and a fleet of scrapers, and the second a loader and fleet of haul trucks. The viability of the neural network approach is demonstrated in terms of its ability to model the discrete and stochastic behavior of these classes of construction processes. The paper concludes with an indication of some areas for further development of the technique.
引用
收藏
相关论文
共 50 条
  • [31] Fatigue Characterization of WMA and Modeling Using Artificial Neural Networks
    Abd, Duraid M.
    Al-Khalid, Hussain
    JOURNAL OF MATERIALS IN CIVIL ENGINEERING, 2022, 34 (03)
  • [32] In Silico Modeling of Pharmaceutical Formulation using Artificial Neural Networks
    Piriyaprasarth, S.
    Patomchaiviwat, V.
    Sriamonsak, P.
    2009 INTERNATIONAL CONFERENCE ON BIOMEDICAL AND PHARMACEUTICAL ENGINEERING, 2009, : 154 - 158
  • [33] Modeling of Heat Transfer in Cisterns Using Artificial Neural Networks
    Madoliat, R.
    Razavi, M.
    Dehghani, A. R.
    JOURNAL OF THERMOPHYSICS AND HEAT TRANSFER, 2009, 23 (02) : 411 - 416
  • [34] Modeling and Forecasting Cases of RSV Using Artificial Neural Networks
    Cogollo, Myladis R.
    Gonzalez-Parra, Gilberto
    Arenas, Abraham J.
    MATHEMATICS, 2021, 9 (22)
  • [35] Modeling Historical Traffic Data using Artificial Neural Networks
    Ghanim, Mohammad S.
    Abu-Lebdeh, Ghassan
    Ahmed, Kamran
    2013 5TH INTERNATIONAL CONFERENCE ON MODELING, SIMULATION AND APPLIED OPTIMIZATION (ICMSAO), 2013,
  • [36] Modeling and Simulation of Biomass Drying Using Artificial Neural Networks
    Francik, Slawomir
    Lapczynska-Kordon, Boguslawa
    Francik, Renata
    Wojcik, Artur
    RENEWABLE ENERGY SOURCES: ENGINEERING, TECHNOLOGY, INNOVATION, 2018, : 571 - 581
  • [37] Using the artificial neural networks for accurate RF devices modeling
    Pospísil, L
    Dobes, J
    Proceedings of the 4th WSEAS International Conference on Applications of Electrical Engineering, 2005, : 139 - 143
  • [38] Modeling of CO distribution in Istanbul using Artificial Neural Networks
    Sahin, U
    Ucan, ON
    Soyhan, B
    Bayat, C
    FRESENIUS ENVIRONMENTAL BULLETIN, 2004, 13 (09): : 839 - 845
  • [39] Modeling Lipase Production Process Using Artificial Neural Networks
    Sheta, Alaa F.
    Hiary, Rania
    2012 INTERNATIONAL CONFERENCE ON MULTIMEDIA COMPUTING AND SYSTEMS (ICMCS), 2012, : 1158 - 1163
  • [40] Static modeling of GMAW process using artificial neural networks
    Di, L
    Chandel, RS
    Srikanthan, T
    MATERIALS AND MANUFACTURING PROCESSES, 1999, 14 (01) : 13 - 35