Publication | Open Access
Clogging Risk Early Warning for Slurry Shield Tunneling in Mixed Mudstone–Gravel Ground: A Real-Time Self-Updating Machine Learning Approach
18
Citations
37
References
2022
Year
Underground InfrastructureEngineeringMachine LearningAccurate Clogging PredictionMixed Mudstone–gravel GroundDrillingGeotechnical EngineeringData ScienceGeotechnical ProblemGeoenvironmental EngineeringTunnelingPredictive AnalyticsSlurry PropertiesUnderground ConstructionRisk Early WarningEngineering GeologyRock PropertiesCivil EngineeringSlurry Shield TunnelingGeomechanicsRandom Forest
Clogging constitutes a significant obstacle to shield tunneling in mudstone soils. Previous research has focused on investigating the influence of soils and slurry properties on clogging, although little attention has been paid to the impact of tunneling parameters on clogging, and particularly early clogging warning during tunneling. This paper contributes to developing a real-time clogging early-warning approach, based on a self-updating machine learning method. The clogging judgment criteria are based on the statistical characteristics of whole-ring tunneling parameters. The paper proposes the use of random forest (RF) for a real-time self-updating early warning strategy for clogging. The performance of this approach is illustrated through its application to a slurry-pressure-balanced shield tunneling construction of Nanning metro line 1. Results show that the RF-based approach can predict clogging during a ring construction with only four minutes of tunneling data, with an accuracy of 95%. The RF model provided the best performance compared with the other machine learning methods. Furthermore, the RF model can realize an accurate clogging prediction in one ring, using less tunneling data with the self-updating mechanism.
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