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Geological Type Recognition by Machine Learning on In-Situ Data of EPB Tunnel Boring Machines

机译:EPB隧道镗床原位数据机质类型识别

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At present, many large-scale engineering equipment can obtain massive in-situ data at runtime. In-depth data mining is conducive to the real-time understanding of equipment operation status or recognition of service environment. This paper proposes a geological type recognition system by the analysis of in-situ data recorded during TBM tunneling to address geological information acquisition during TBM construction. Owing to high dimensionality and nonlinear coupling between parameters of TBM in-situ data, the dimensionality reduction feature engineering and machine learning methods are introduced into TBM in-situ data analysis. The chi-square test is used to screen for sensitive features due to the disobedience to common distributions of TBM parameters. Considering complex relationships, ANN, SVM, KNN, and CART algorithms are used to construct a geology recognition classifier. A case study of a subway tunnel project constructed using an earth pressure balance tunnel boring machine (EPB-TBM) in China is used to verify the effectiveness of the proposed geological recognition method. The result shows that the recognition accuracy gradually increases to a stable level with the increase of input features, and the accuracy of all algorithms is higher than 97%. Seven features are considered as the best selection strategy among SVM, KNN, and ANN, while feature selection is an inherent part of the CART method which shows a good recognition performance. This work provides an intelligent path for obtaining geological information for underground excavation TBM projects and a possibility for solving the problem of engineering recognition of more complex geological conditions.
机译:目前,许多大型工程设备可以在运行时获得大规模的原位数据。深入的数据挖掘有利于对设备运行状态的实时了解或服务环境的识别。本文提出了通过在TBM隧道期间记录的原位数据分析了地质型识别系统,以解决TBM施工期间地质信息采集。由于TBM原位数据参数之间的高维度和非线性耦合,将维数减少特征工程和机器学习方法引入TBM原位数据分析中。由于不服从TBM参数的共同分布,Chi-Square测试用于筛选敏感功能。考虑复杂的关系,ANN,SVM,KNN和CART算法用于构建地质识别分类器。在中国使用地球压力平衡隧道镗床(EPB-TBM)构建的地铁隧道项目的案例研究用于验证所提出的地质识别方法的有效性。结果表明,随着输入特征的增加,识别精度逐渐增加到稳定的水平,并且所有算法的精度高于97%。七个功能被认为是SVM,KNN和ANN之间的最佳选择策略,而特征选择是推车方法的固有部分,其显示出良好的识别性能。这项工作提供了一个智能路径,用于获得地下挖掘TBM项目的地质信息以及解决工程识别问题更复杂的地质条件问题的可能性。

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