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On the pointlessness of machine learning based time delayed prediction of TBM operational data

机译:基于机器学习时间延迟预测的TBM运行数据的无意义

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摘要

In tunneling, predictions of the rockmass conditions ahead of the face are of great interest to be able to take appropriate countermeasures at the right time. Besides investigations like drilling or geophysics, new approaches in mechanized tunneling aim at forecasting the geology ahead via Machine Learning models. These models are trained to forecast tunnel boring machine data by learning from recorded data in already excavated parts of the tunnel. Simply judging from high accuracies, these results may look promising at the first sight, but forecasts like this are mostly just delayed and slightly altered versions of the input data and no predictive value can result from them. This paper shows deficits in the current practice of data driven forecasts ahead of the tunnel face and raises impetus for further research in this particular field and TBM data analysis in general.
机译:在隧道中,在面部面前的岩石条件的预测非常兴趣,能够在合适的时间采取适当的对策。除了调查等钻井或地球物理,机械化隧道的新方法旨在通过机器学习模型预测前面的地质。这些型号通过在已经挖掘的隧道的挖掘部分中学习录制的数据来训练来预测隧道镗床数据。只需从高精度判断,这些结果可能看起来就在第一眼看起来很有希望,但是这样的预测主要是延迟并且输入数据的稍微改变的版本,而且没有预测值可能会导致预测值。本文在隧道面前的数据驱动预测的目前实践中显示了缺陷,并在该特定领域和TBM数据分析中提高了进一步研究的推动力。

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