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Research on deformation prediction of tunnel surrounding rock using the model combining firefly algorithm and nonlinear auto-regressive dynamic neural network

机译:用模型结合萤火虫算法和非线性自回归动态神经网络模型隧道围岩变形预测研究

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摘要

Tunnel surrounding rock deformation is dynamic, sensitive to time and space, nonlinear, and highly complicated. By combining the firefly algorithm (FA) and nonlinear auto-regressive (NAR) dynamic neural network method, an algorithm model was proposed for predicting dynamic nonlinear surrounding rock deformation. The FA improved the prediction accuracy of the NAR dynamic neural network by determining the optimum values of two network parameters-delay order and number of units in the hidden layer; combined with the monitoring results of Beishan exploration tunnel (BET), this is demonstrated by a comparative analysis of predictions yielded by the FA-NAR dynamic neural network and by the least squares support vector machine (LS-SVM). In general, the comparation shows that the FA-NAR dynamic neural network model yielded predictions that are fundamentally consistent with measurements and exhibits higher prediction accuracy than the LS-SVM. Results also show that the surrounding rock deformation prediction of BET for March 4, 2020 was marginally smaller than 2.43 mm.
机译:隧道周围岩石变形是动态的,时间和空间,非线性,高度复杂。通过组合萤火虫算法(FA)和非线性自动回归(NAR)动态神经网络方法,提出了一种算法模型,用于预测动态非线性周围岩石变形。通过确定两个网络参数延迟顺序的最佳值和隐藏层中的单位数来改进了NAR动态神经网络的预测精度;结合北山勘探隧道的监测结果(BET),通过对FA-NAR动态神经网络的预测和由最小二乘支持向量机(LS-SVM)产生的预测的比较分析来证明这一点。通常,比较表明,FA-NAR动态神经网络模型产生了与测量结果基本一致的预测,并且表现出比LS-SVM更高的预测精度。结果还表明,3月4日,2020年3月4日的围岩变形预测略微小于2.43毫米。

著录项

  • 来源
    《Engineering with Computers》 |2021年第2期|1443-1453|共11页
  • 作者单位

    College of Defense Engineering Army Engineering University of PLA Nanjing 210007 Jiangsu China;

    CNNC Key Laboratory on Geological Disposal of High-Level Radioactive Waste Beijing Research Institute of Uranium Geology Beijing 100029 China;

    CNNC Key Laboratory on Geological Disposal of High-Level Radioactive Waste Beijing Research Institute of Uranium Geology Beijing 100029 China;

    CNNC Key Laboratory on Geological Disposal of High-Level Radioactive Waste Beijing Research Institute of Uranium Geology Beijing 100029 China;

    College of Defense Engineering Army Engineering University of PLA Nanjing 210007 Jiangsu China;

    College of Defense Engineering Army Engineering University of PLA Nanjing 210007 Jiangsu China;

    College of Defense Engineering Army Engineering University of PLA Nanjing 210007 Jiangsu China;

    College of Defense Engineering Army Engineering University of PLA Nanjing 210007 Jiangsu China;

    College of Defense Engineering Army Engineering University of PLA Nanjing 210007 Jiangsu China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Nonlinear auto-regressive (NAR) dynamic neural network; Time series; Firefly algorithm (FA); Surrounding rock deformation prediction; Tunnel;

    机译:非线性自动回归(NAR)动态神经网络;时间序列;萤火虫算法(FA);周围的岩石变形预测;隧道;
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