An Improved AFSA-Elman Slope Displacement Prediction Network

被引:0
|
作者
Wang S.-H. [1 ]
Ren Y.-P. [1 ]
Xing G.-H. [1 ]
机构
[1] School of Resources & Civil Engineering, Northeastern University, Shenyang
关键词
Artificial fish swarm algorithm; Displacement; Elman network; Neural network; Slope;
D O I
10.12068/j.issn.1005-3026.2019.01.022
中图分类号
学科分类号
摘要
In the prediction of slope displacement sequence, there is no specific conclusions on the number of neurons and thresholds in the Elman network hidden layer. The convergence speed is slow, and it is easy to fall into the local solution. Based on this, the improved AFSA-Elman slope displacement prediction network was established by combining the artificial fish swarm algorithm with the Elman network. In order to improve the prediction accuracy and convergence speed of Elman network, the step size of artificial fish swarm algorithm was modified and the initial weights and thresholds of Elman network were optimized by using the powerful optimization ability of the improved fish swarm algorithm. The improved AFSA-Elman network was compared with the traditional Elman network and AFSA-BP network, and the iterative process of the three networks was simulated. The result found that the improved AFSA-Elman prediction network has higher precision and convergence speed than those of the above two prediction network, and it is more suitable for the prediction of slope displacement. © 2019, Editorial Department of Journal of Northeastern University. All right reserved.
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页码:115 / 120
页数:5
相关论文
共 10 条
  • [1] Zhou C., Yin K.L., Cao Y., Et al., Application of time series analysis and PSO-SVM model in predicting the Bazimen landslide in the Three Gorges Reservoir, China, Engineering Geology, 204, pp. 108-120, (2016)
  • [2] Du J., Yin K., Lacasse S., Displacement prediction in Colluvial landslides, Three Gorges Reservoir, China, Landslides, 10, 2, pp. 203-218, (2013)
  • [3] Sun Q., Zhang L., Ding X.L., Et al., Slope deformation prior to Zhouqu, China landslide from InSAR time series analysis, Remote Sensing of Environment, 156, pp. 45-57, (2015)
  • [4] Li K.-G., Zhang C.-Q., Neural network modeling and slope displacement prediction based on time series, Chinese Journal of Underground Space and Engineering, 5, pp. 1418-1421, (2009)
  • [5] Huang F., Huang J., Jiang S., Et al., Landslide displacement prediction based on multivariate chaotic model and extreme learning machine, Engineering Geology, 218, pp. 173-186, (2017)
  • [6] Ren F., Wu X., Zhang K., Et al., Application of wavelet analysis and a particle swarm-optimized support vector machine to predict the displacement of the Shuping landslide in the Three Gorges, China, Environmental Earth Sciences, 73, 8, pp. 4791-4804, (2014)
  • [7] Li X.-L., Shao Z.-J., Qian J.-X., An optimizing method based on autonomous animats: fish-swarm algorithm, Systems Engineering-Theory & Practice, 22, 11, pp. 32-38, (2002)
  • [8] Li X.-L., Feng S.-H., Qian J.-X., Et al., Parameter tuning method of robust PID controller based on artificial fish school algorithm, Information and Control, 33, 1, pp. 112-115, (2004)
  • [9] Eberhart C., Kennedy J., A new optimizer using particle swarm theory, Proceedings of the 6th International Symposium on Micro Machine and Human Science, pp. 39-43, (1995)
  • [10] Yao C.-A., Ji S.-L., Yu Y.-C., Et al., Short-term combination forecasting of wind speed based on wavelet transform and Elman neural network, Renewable Energy Resources, 30, 8, (2012)