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Utilising of linear and non-linear prediction tools for evaluation of penetration rate of Tunnel Boring Machine in hard rock condition

机译:利用线性和非线性预测工具评估硬岩条件下隧道掘进机的穿透率

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摘要

Predicting Tunnel Boring Machine (TBM) penetration rate is a crucial issue for the successful fulfilment of a mechanical tunnel project. Penetration rate depends on many factors such as intact rock properties, rock mass conditions and machine specifications. In this paper, linear and non-linear multiple regression as well as Artificial Neural Network (ANN) techniques were applied to predict the penetration rate of TBM. In developing of the proposed models, five parameters, which include Uniaxial Compressive Strength (UCS), Brazilian Tensile Strength (BTS), peak slope index (punch penetration), spacing of discontinuities (of weakness planes) and orientation of discontinuities with respect to the tunnel axis (β angle), were incorporated. For this study, 46 datasets were collected. Performance of these models was assessed through the R~2, RMSE and MAPE. As a result, these indices revealed that the prediction performance of the ANN model is higher than that of the non-linear and linear multiple regression models.
机译:预测隧道掘进机(TBM)的渗透率是成功完成机械隧道项目的关键问题。渗透率取决于许多因素,例如完整的岩石特性,岩石质量条件和机器规格。本文采用线性和非线性多元回归以及人工神经网络(ANN)技术来预测TBM的渗透率。在拟议模型的开发中,五个参数包括单轴抗压强度(UCS),巴西拉伸强度(BTS),峰值斜率指数(冲孔穿透),不连续性的间隔(弱化平面)和相对于不连续性的不连续性方向合并了隧道轴(β角)。对于本研究,收集了46个数据集。这些模型的性能通过R〜2,RMSE和MAPE进行评估。结果,这些指标表明,ANN模型的预测性能高于非线性和线性多元回归模型的预测性能。

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