期刊
APPLIED SCIENCES-BASEL
卷 13, 期 14, 页码 -出版社
MDPI
DOI: 10.3390/app13148446
关键词
slope safety factor; sparrow search algorithm; BP neural network; neural network optimization
Through stability evaluation, a landslide geological disaster can be identified and project safety and risk control can be ensured. An improved sparrow search algorithm is proposed to optimize the slope safety factor prediction model of a BP neural network, improving the traditional model and providing better accuracy. The improved model effectively predicts the safety factor of slopes under different conditions, providing a new technology for slope disaster warning and control.
Through the stability evaluation of a slope, a landslide geological disaster can be identified, and the safety and risk control of a project can be ensured. This work proposes an improved sparrow search algorithm to optimize the slope safety factor prediction model (ISSA-BP) of a BP neural network, through an improvement in two aspects: introducing dynamic weight factors and reverse learning strategies to realize adaptive searches. The optimal value improves a defect in the traditional model, preventing it from easily falling into the local minimum. First, combined with 352 sets of actual slope data, three machine learning models were used to predict the safety factor of the slope. Then, the accuracy index was used for evaluation. Compared with other models, the MAPE, RMSE, and R-2 of the ISSA-BP model were 1.64%, 0.0296, and 0.99, respectively, and the error was reduced by 78% compared with the BP neural network, showing better accuracy. Finally, the three models were applied to the slope stability analysis of Tianbao Port in Wenshan Prefecture. The research shows that the predicted value of the ISSA-BP model was the closest to the actual safety factor, which verified the experimental results. The improved ISSA-BP model can effectively predict the safety factor of slopes under different conditions, and it provides a new technology for slope disaster warning and control.
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