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首页> 外文期刊>KSCE journal of civil engineering >Improved SVR Method for Predicting the Cutting Force of a TBM Cutter Using Linear Cutting Machine Test Data
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Improved SVR Method for Predicting the Cutting Force of a TBM Cutter Using Linear Cutting Machine Test Data

机译:改进了使用线性切割机测试数据预测TBM切割器切割力的SVR方法

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This research introduces a support vector regression (SVR) method to predict the cutting forces acting on the constant cross section (CCS) disc cutter, including the normal force (FN) and rolling force (FR), based on linear cutting machine (LCM) test data. To improve the prediction effect, an improved SVR-Outlier Detection (SVR-OD) method and an Additional Input Variable (AIV) method are proposed. After removing the outliers, 148 typical LCM test samples form the training set. Here, 70 samples from the Hangzhou No.2 Water Supply Channel constitute the test set. The prediction results show that the Root-mean-squared Relative Error (RMRE) values of the normal force and rolling force are 19.5% and 24.8%, respectively, and the corresponding determination coefficients are 0.845 and 0.807, respectively. For the prediction of the peak cutting force with an important reference to tunnel boring machine (TBM) design, the proportions of samples with an Absolute Relative Error (ARE) value of less than 20% for FN and FR are 9/10 and 7/7, respectively. The above prediction results are better than those of the common SVR method; thus, the developed method can effectively simulate the cutting force required by a rock mass with good integrity. The cutting force prediction using LCM test data is feasible and practical. In addition, the comparison of the prediction results between the improved SVR and common SVR methods shows that the improved SVR-OD and AIV methods play an active role in improving the prediction accuracy of the SVR method.
机译:本研究介绍了一种支持向量回归(SVR)方法,以预测作用在恒定横截面(CCS)盘切割器上的切割力,包括基于线性切割机(LCM)的法向力(Fn)和轧制力(FR)测试数据。为了提高预测效果,提出了改进的SVR-OVER检测(SVR-OD)方法和附加输入变量(AIV)方法。删除异常值后,148个典型的LCM测试样品形成训练集。这里,来自杭州第2号供水通道的70个样本构成了测试集。预测结果表明,法向力和轧制力的根本平均相对误差(RMRE)分别为19.5%和24.8%,相应的确定系数分别为0.845和0.807。对于预测隧道镗床(TBM)设计的重要参考的峰值切割力,对于FN和FR的绝对相对误差(是)值小于20%的样品的比例为9/10和7 / 7分别。上述预测结果优于共同的SVR方法;因此,开发方法可以有效地模拟岩体具有良好完整性所需的切割力。使用LCM测试数据的切割力预测是可行和实用的。另外,改进的SVR和常见SVR方法之间的预测结果的比较表明,改进的SVR-OD和AIV方法在提高SVR方法的预测精度方面发挥着积极作用。

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