Abstract

The deformation process of landslide displacement has complex nonlinear characteristics. In view of the problems of large error, slow convergence and poor stability of the traditional neural network prediction model, in order to better realize the accurate and effective prediction of landslide displacement, this research proposes a landslide displacement prediction model based on Genetic Algorithm (GA) optimized Elman neural network. This model combines the GA with the Elman neural network to optimize the weights, thresholds and the number of hidden neurons of the Elman neural network. It gives full play to the dynamic memory function of the Elman neural network, overcomes the problems that a single Elman neural network can easily fall into local minimums and the neuron data is difficult to determine, thereby effectively improving the prediction performance of the neural network prediction model. The displacement monitoring data of a slow-varying landslide in the Guizhou karst mountainous area are selected to predict and verify the landslide displacement, and the results are compared with the traditional Elman neural network prediction results. The results show that the prediction results of GA-Elman model are in good agreement with the actual monitoring data of landslide. The average error of the model is low and the prediction accuracy is high, which proves that the GA-Elman model can play a role in the prediction of landslide displacement and can provide reference for the early warning of landslide displacement deformation.

Highlights

  • Landslide is one of the most serious geological hazards in the world [1,2]

  • Under the long-term internal conditions of the landslide, the rainfall factor affects the change of landslide displacement to a certain extent

  • Considering the six prediction conditions, the prediction effect with rainfall factor is significantly better than that without rainfall factor, so the occurrence of landslide displacement is still affected by rainfall factor

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Summary

Introduction

The formation mechanism of landslide disaster is complex and diverse. Limited by different geological environment conditions, many influencing factors will lead to the occurrence of landslide [1]. Prediction of landslide deformation and deformation evolution is a difficult and crucial problem [3]. The evolution process of landslide is a complex nonlinear process of superposition of multiple influencing factors, so the long-term displacement monitoring data of landslide can be used to vividly represent the nonlinear displacement dynamic behavior characteristics. Determining how to design an effective landslide deformation monitoring and prediction method is helpful to understand the instability process and deformation characteristics of landslide disasters, which is conducive to reducing the risks of landslide to human life and property safety and infrastructure [6]

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