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Metal Mine ›› 2024, Vol. 53 ›› Issue (3): 74-.

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Step-type Landslide Deformation Prediction Based on Multivariable Self-optimizing Dynamic Neural Network

XU Zhihua1 YANG Xu1 SUN Qiancheng1 HE Yuming2 ZHANG Guodong1 YE Yicheng2   

  1. 1. National Field Observation and Research Station of Landslides in Three Gorges Reservoir Area of Yangtze River,Yichang 443002,China; 2. Hydrology and Engineering Geology Institute in Hubei Geological Bureau,Yichang 443002,China
  • Online:2023-03-15 Published:2024-04-24

Abstract: The traditional cumulative deformation prediction methods are diverse in curve structure decomposition methods and characterization model selection,which brings about the problems of large workload of prediction methods,low prediction accuracy,and restricted applicability objects. To address the above problems,a multivariate self-optimizing dynamic neural network is established based on a nonlinear autoregressive model considering the effects of rainfall,reservoir water level and reservoir water level changes on the cumulative deformation of landslides. The neural network is applied to the prediction of the cumulative displacement of the typical stepped landslide in the Baijiabao landslide of the Three Gorges Reservoir. By analyzing the time series of the cumulative curve of landslide deformation,a nonlinear autoregressive neural network is composed by using a neural network to solve the full curve model. The parameters and structure of the neural network are optimized and trained using multiple swarm genetic algorithms,and the mean square error of the fitness function is used as the prediction model error deviation criterion. The results show that the self-optimized dynamic neural network proposed in this paper has high accuracy in fitting the cumulative displacement of multiple measurement points of landslides. Its error can be controlled within 1%,and the prediction process reduces the error caused by subjective factors. The neural network can provide a reference for the prediction of cumulative displacement of such step-type landslides.