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Identification of Surrounding Rock in TBM Excavation with Deep Neural Network

机译:基于神经网络的TBM开挖围岩识别。

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In this paper, based on the measured data of a water diversion project and combined with the existing research on the artificial neural network technology, a deep neural network model is trained to realize the real-time identification of surrounding rock in tunnel boring machine (TBM) excavation. The overall accuracy is above 85%. The result shows that deep learning technology can play a role in TBM geological prediction, and TBM operation can be guided by this method.
机译:本文基于引水工程的实测数据,结合现有的人工神经网络技术研究,训练了一种深度神经网络模型,以实现隧道掘进机(TBM)中围岩的实时识别。 )发掘。总体准确度在85%以上。结果表明,深度学习技术可以在TBM地质预测中发挥作用,并以此方法指导TBM的运行。

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