ISSN 2096-4498

   CN 44-1745/U

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Tunnel Construction ›› 2020, Vol. 40 ›› Issue (7): 988-0996.DOI: 10.3973/j.issn.2096-4498.2020.07.007

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Experimental Effect Prediction of Ground Conditioning of Water rich Sandy Stratum Based on BP Neural Network

ZHAN Chao   

  1. (Urban Rail Transit Engineering Co., Ltd. of China Railway First Group Co., Ltd., Wuxi 214000, Jiangsu, China)
  • Online:2020-07-20 Published:2020-07-29

Abstract: The ground conditioning effect is the key to shield metro tunneling speed. As a result, the testing results of the slump, penetration and resistivity are taken as the data sample set. And then the training set, verification set and prediction set are divided into 6∶22 according to the data partitioning method commonly used in the field of deep learning. Finally, a prediction model for ground conditioning effect is established based on the BP neural network, and the model is applied to the ground conditioning effect prediction of waterrich sandy stratum in Nanchang. The study results show that: (1) The average predicted values of slump, permeability coefficient and internal friction angle during model learning are 1728 mm, 3355×10-6 cm/s, and 216°, respectively, and the average relative errors are 176%, 453%, and 360%, respectively. (2) The output of the prediction set coincides with part of the measured data; the average errors of the slump, permeability coefficient and internal friction angle are all within 5%; and the determinable coefficients R2 are 088, 090, and 085, respectively, which indicates that the neural network structure is a highprecision model. The errors of the prediction results are within the allowable error range of the ground conditioning, which shows that the BP neural network model can accurately predict the effect of ground conditioning.

Key words: metro tunnel, BP neural network, waterrich sandy stratum, ground conditioning, effect prediction

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