Abstract

The shield machine attitude (SMA) is the most important parameter in the process of tunnel construction. To prevent the shield machine from deviating from the design axis (DTA) of the tunnel, it is of great significance to accurately predict the dynamic characteristics of SMA. We establish eight SMA prediction models based on the data of five earth pressure balance (EPB) shield machines. The algorithms adopted in the models are four machine learning (ML) algorithms (KNN, SVR, RF, AdaBoost) and four deep learning (DL) algorithms (BPNN, CNN, LSTM, GRU). This paper obtains the hyperparameters of the models by utilizing grid search and K-fold cross-validation techniques and uses EVS and RMSE to verify and evaluate the prediction performances of the models. The prediction results reveal that the two best algorithms are the LSTM and GRU with EVS > 0.98 and RMSE < 1.5. Then, integrating ML algorithms and DL algorithms, we design a warning predictor for SMA. Through the historical 5-cycle data, the predictor can give a warning in advance if the SMA deviates significantly from DTA. This study indicates that AI technologies have considerable promise in the field of SMA dynamic prediction.

Highlights

  • Shield tunneling construction methods are widely used in subway, transportation, water conservancy, and other tunnel projects for their high efficiency, safety, and convenient construction characteristics [1]

  • SAtet pth3i:sMstoedpe, lthcoempperafroisrmonananced oefvaeliughattioAnI algorithms is compared through the explained variance score (EVS) and RAMt tShEisinstdeipca, tohres.pBearfsoerdmoanntcheeomf eoidgehltpAreIdailcgtoiornithremsus litss,cwome pparorepdosthe raouwgahrntihnegEpVreSadnicdtoRrMofSSEMinAd.iWcathoerns.thBeapsereddoicntotrhpeemrcoediveelsptrheadticthtieonSMreAsuilstsa,bwouetptorodpeovsieatae wfroarmnitnhge pDrTedAicstiogrnoifficSaMntAly. ,Withceann tphreopvirdedeiacntoeraprleyrcweiavrensinthgaftotrhtehSeMmAacihsianbeoouptetroadtoervsiatoteafdrojumsttthhee DtuTnAnesliignngifipcaarnatmlye,tietrcsa.n provide an early warning for the machine operators to adjust the tunneling parameters

  • We committed to using various machine learning (ML) algorithms and deep learning (DL) algorithms to establish shield machine attitude (SMA) prediction models

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Summary

Introduction

Shield tunneling construction methods are widely used in subway, transportation, water conservancy, and other tunnel projects for their high efficiency, safety, and convenient construction characteristics [1]. The Shield tunnel construction process is a large, complex, and dynamic system, and the direction of the shield machine is hard to control. To guarantee the accuracy of tunneling direction, the major work is to develop intelligent warning technology for assisting machine operators in correcting deviation in advance. Other relevant works involved those by Sugimoto and Sramoon [6], Liu et al [7], Li et al [8], etc. These methods have been discussed concerning the mechanism but are lacking the timely guidance for the machine operators to adjust the SMA, and rarely consider factors such as shield data, resulting in low attitude control accuracy

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