...
首页> 外文期刊>Underground Space >Use of soft computing techniques for tunneling optimization of tunnel boring machines
【24h】

Use of soft computing techniques for tunneling optimization of tunnel boring machines

机译:隧道镗床隧道优化的软计算技术

获取原文
           

摘要

Thanks to advances in tunnel boring machine (TBM) and monitoring, significant progress has been achieved in the application of soft computing techniques for the optimization of TBM tunneling and the reduction of disturbance related to tunneling in urban areas. Because experimental, analytical, and numerical methods have limitations in solving problems related to TBM tunneling, engineers can use soft computing techniques in analyzing the relationship between the target tunneling responses and influential design inputs parameters, including the geometrical, geological, and TBM operational factors. These techniques are useful in achieving robust and low-cost solutions. However, engineers face difficulties in making an optimal choice of the soft computing technique to solve the complex problems related to TBM tunneling. To help with this choice, this study presents state of the art about the use of soft computing techniques in TBM tunneling through practical applications. The study proposes recommendations for the optimal use of these techniques, in particular (i) the importance of preliminary analyses for the selection and reduction of input parameters, (ii) the necessity to complete insufficient data using laboratory tests and numerical modeling, (iii) the selection of reduced number of hidden layers and nodes to avoid overfitting, (iv) the use of recurrent neural networks to deal with time-series data, and (v) the association of soft computing methods with hybrid optimization techniques to reduce the risk of convergence to local minima.
机译:由于隧道镗床(TBM)和监测的进展,在应用软计算技术中实现了显着的进展,以优化TBM隧道的优化和与城市地区隧道相关的扰动减少。因为实验,分析和数值方法具有解决与TBM隧道相关的问题的局限性,因此工程师可以使用软计算技术来分析目标隧道响应和影响力设计输入参数之间的关系,包括几何,地质和TBM运行因素。这些技术可用于实现稳健和低成本的解决方案。然而,工程师面临困难在制造软计算技术的最佳选择方面,以解决与TBM隧道相关的复杂问题。为帮助解决此选择,本研究提供了通过实际应用在TBM隧道中使用软计算技术的艺术状态。该研究提出了用于最佳使用这些技术的建议,特别是(i)初步分析对输入参数的选择和减少的重要性,(ii)使用实验室测试和数值模型来完成数据不足的必要性(iii)选择减少的隐藏层和节点以避免过度拟合,(iv)使用经常性神经网络处理时间序列数据,(v)软计算方法与混合优化技术的关联,以降低风险融合到局部最小值。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号