Utilization of Rock Mass Parameters for Performance Prediction of Rock TBMs Using Machine Learning Algorithms

Hanan Samadi, E. Farrokh
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引用次数: 1

Abstract

Existing rock mass parameters, such as uniaxial compressive strength (UCS), rock quality designation (RQD), and distance between planes of weakness (DPW), are being widely used in the prediction of TBM performance in various hard rock conditions. In this paper, these factors are considered as input parameters to estimate the rate of penetration (ROP) based on 180 compiled data from two projects including the Queens water tunnel lot 3, Stage 2 in USA and KarajTehran water transfer tunnel in Iran. This study aims to evaluate the influence of rock mass parameters on TBM performance and develop a new empirical equation to estimate ROP using multivariate regression analysis and artificial intelligence algorithms. In this regard, by taking advantage of machine learning algorithms, two types of artificial intelligence techniques, including particle swarm optimization (PSO) and radial basis function network (RBF), have been employed to develop predictor networks to estimate TBM performance. To explain the relationships among rock mass parameters and ROP and to offer new empirical equations, regression analysis is also utilized. The proposed models have been validated based on the various machine learning loss functions including, MAD, RRSE, rRMSE, MSE, MAPE, and sensitivity analysis. The obtained results demonstrate that the calculated values are in good agreement with the actual data.
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岩体参数在岩石掘进机性能预测中的应用
现有的岩体参数,如单轴抗压强度(UCS)、岩石质量指标(RQD)和软弱面间距(DPW)等,正被广泛用于预测各种硬岩条件下TBM的性能。本文将这些因素作为输入参数,根据美国皇后水洞第3段第二期和伊朗卡拉吉-德黑兰调水隧道两个项目的180个汇编数据来估计渗透速率(ROP)。本研究旨在评估岩体参数对掘进机性能的影响,并利用多元回归分析和人工智能算法建立新的经验方程来估计机械钻速。在这方面,利用机器学习算法,两种类型的人工智能技术,包括粒子群优化(PSO)和径向基函数网络(RBF),已经被用来开发预测网络来估计TBM的性能。为了解释岩体参数与机械钻速之间的关系并提供新的经验方程,还采用了回归分析方法。基于各种机器学习损失函数,包括MAD、RRSE、rRMSE、MSE、MAPE和敏感性分析,对所提出的模型进行了验证。计算结果表明,计算值与实际数据吻合较好。
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