An extreme gradient boosting technique to estimate TBM penetration rate and prediction platform

被引:0
作者
Yaxu Wang
Xuechi Gao
Peng Jiang
Xu Guo
Ruirui Wang
Zengda Guan
Lei Chen
Chenxing Xu
机构
[1] Shandong University,Geotechnical and Structural Engineering Research Center
[2] Shandong University,School of Qilu Transportation
[3] Shandong HI-SPEED Group,School of Civil Engineering
[4] Shandong Jianzhu University,School of Business
[5] Shandong Jianzhu University,undefined
[6] Beijing Vibroflotation Engineering Company Limited,undefined
来源
Bulletin of Engineering Geology and the Environment | 2022年 / 81卷
关键词
TBM performance prediction; Online prediction platform; XGBoost; Ensemble learning;
D O I
暂无
中图分类号
学科分类号
摘要
An accurate prediction of the penetration rate (PR) of a tunnel boring machine (TBM) is essential for the schedule and cost estimation of tunnel excavation. To better meet the needs of modern information construction, more computer technologies are being used to integrate the analysis and management of construction data. Herein, an online prediction platform based on a data mining algorithm using ensemble learning (extreme gradient boosting (XGBoost)) is developed for TBM performance prediction. The platform establishes the model and displays the prediction results, while storing a considerable amount of machine data, and providing services for TBMs of multiple projects simultaneously. In establishing the prediction model, users can change the algorithm parameters according to the engineering situation. The prediction capabilities of the platform are demonstrated by 200 field samples obtained from the Songhua River water conveyance project in Jilin. The mean absolute percentage error, coefficient of determination, root mean squared error, variance account for (VAF), and a20-index of the PR are 6.07%, 0.8651, 3.5862, 87.06%, and 0.925, respectively. The results show that the prediction model has a reliable prediction accuracy, which is higher than that of the gradient boosting decision tree, and these results can be displayed on the online platform. It provides effective help for TBM intelligent tunneling.
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