ISSN 2096-4498

   CN 44-1745/U

二维码

Tunnel Construction ›› 2021, Vol. 41 ›› Issue (10): 1733-1739.DOI: 10.3973/j.issn.2096-4498.2021.10.012

Previous Articles     Next Articles

Optimized Genetic AlgorithmBack Propagation Neural Network Model and Its Application in Foundation Pit Deformation Prediction

LIU Jin1, LI Fenghui2, LIU Xiuxiu3   

  1. (1. Urban Railway Engineering Department, Shannxi Railway Institute, Weinan 714000, Shannxi, China; 2. Zhengzhou Communications Planning, Survey and Design Institute, Zhengzhou 450000, Henan, China; 3. Qufu Fareast Vocational and Technical College, Jining 273100, Shandong, China)

  • Online:2021-10-20 Published:2021-11-04

Abstract: The existing genetic algorithm (GA)back propagation (BP) neural network prediction model is inefficient in pretreating training samples and the structural design of hidden layers. The bestnormalized interval is determined using correlation coefficient regression analysis, the analytic expression of the number of neurons in the hidden layer is derived using the principle of statistics, and the corresponding range of the best number of neurons in a single hidden layer is proposed. The results show the following: (1) The bestnormalized interval of the training sample pretreatment is 0.05, 0.95]. (2) The best number of neurons of a single hidden layer structure is in the interval of 4, 7, and a double hidden layer structure is more suitable for the case of neurons > 4. (3) The metabolism approach of selecting training samples can significantly reduce the timespace effect and human interference of foundation pit deformation. (4) The 42 (7, 8)1 GABP neural network model is constructed to predict the horizontal displacement of foundation pits with different depths, and the accuracy evaluation index shows that the prediction effect of the optimized GABP model is good, which provides references for engineering development. By comparing the optimized model with other models, its superior effect is validated.

Key words: foundation pit engineering, genetic algorithm-back propagation neural network, foundation pit monitoring, horizontal displacement, deformation prediction

CLC Number: