Stability prediction of Himalayan residual soil slope using artificial neural network

被引:1
作者
Arunava Ray
Vikash Kumar
Amit Kumar
Rajesh Rai
Manoj Khandelwal
T. N. Singh
机构
[1] Indian Institute of Technology (BHU) Varanasi,Department of Mining Engineering
[2] Federation University Australia,School of Engineering, Information Technology and Physical Sciences
[3] Indian Institute of Technology Bombay,Department of Earth Sciences
来源
Natural Hazards | 2020年 / 103卷
关键词
Machine learning; Slope stability; Artificial neural network; Residual soil;
D O I
暂无
中图分类号
学科分类号
摘要
In the past decade, advances in machine learning (ML) techniques have resulted in developing sophisticated models that are capable of modelling extremely complex multi-factorial problems like slope stability analysis. The literature review indicates that considerable works have been done in slope stability using ML, but none of them covers the analysis of residual soil slope. The present study aims to develop an artificial neural network (ANN) model that can be employed for evaluating the factor of safety of Shiwalik Slopes in the Himalayan Region. Data obtained from numerical analysis of a residual soil slope were used to develop two ANN models (ANN1 and ANN2 utilising eleven input parameters, and scaled-down number of parameters based on correlation coefficient, respectively). A four-layer, feed-forward back-propagation neural network having the optimum number of hidden neurons is developed based on trial-and-error method. The results derived from ANN models were compared with those achieved from numerical analysis. Additionally, several performance indices such as coefficient of determination (R2), root mean square error, variance account for, and residual error were employed to evaluate the predictive performance of the developed ANN models. Both the ANN models have shown good prediction performance; however, the overall performance of the ANN2 model is better than the ANN1 model. It is concluded that the ANN models are reliable, valid, and straightforward computational tools that can be employed for slope stability analysis during the preliminary stage of designing infrastructure projects in residual soil slope.
引用
收藏
页码:3523 / 3540
页数:17
相关论文
共 50 条
[41]   Stability Prediction of Tailing dam Slope Based on Neural Network Pattern Recognition [J].
Zhou, Ke-ping ;
Chen, Zhi-qiang .
PROCEEDINGS OF THE SECOND INTERNATIONAL CONFERENCE ON ENVIRONMENTAL AND COMPUTER SCIENCE, 2009, :380-383
[42]   Reservoir bank slope stability prediction model based on BP neural network [J].
Zhang, Guoqiang ;
Feng, Wenkai ;
Wu, Mingtang ;
Shao, Hai ;
Ma, Feng .
STEEL AND COMPOSITE STRUCTURES, 2021, 41 (02) :237-247
[43]   Using artificial neural network models for eutrophication prediction [J].
Huo, Shouliang ;
He, Zhuoshi ;
Su, Jing ;
Xi, Beidou ;
Zhu, Chaowei .
2013 INTERNATIONAL SYMPOSIUM ON ENVIRONMENTAL SCIENCE AND TECHNOLOGY (2013 ISEST), 2013, 18 :310-316
[44]   Prediction of air pollutants by using an artificial neural network [J].
Sohn, SH ;
Oh, SC ;
Yeo, YK .
KOREAN JOURNAL OF CHEMICAL ENGINEERING, 1999, 16 (03) :382-387
[45]   Prediction of the plasma distribution using an artificial neural network [J].
李炜 ;
陈俊芳 ;
王腾 .
Chinese Physics B, 2009, 18 (06) :2441-2444
[46]   Prediction of disturbances in the ionosphere by using the artificial neural network [J].
Liu, W ;
Jiao, PN .
CHINESE JOURNAL OF GEOPHYSICS-CHINESE EDITION, 2001, 44 (01) :24-30
[47]   Prediction of rubber vulcanization using an artificial neural network [J].
Lubura, Jelena D. ;
Kojic, Predrag ;
Pavlicevic, Jelena ;
Ikonic, Bojana ;
Omorjan, Radovan ;
Bera, Oskar .
HEMIJSKA INDUSTRIJA, 2021, 75 (05) :277-283
[48]   Prediction of the plasma distribution using an artificial neural network [J].
Li Wei ;
Chen Jun-Fang ;
Wang Teng .
CHINESE PHYSICS B, 2009, 18 (06) :2441-2444
[49]   Prediction of air pollutants by using an artificial neural network [J].
Sang Hyun Sohn ;
Sea Cheon Oh ;
Yeong-Koo Yeo .
Korean Journal of Chemical Engineering, 1999, 16 :382-387
[50]   Prediction of extrusion pressure using an artificial neural network [J].
Li, YY ;
Bridgwater, J .
POWDER TECHNOLOGY, 2000, 108 (01) :65-73