Title :
Prediction of landslide deformation using back-propagation neural network
Author :
Pratik Chaturvedi;Shikha Srivastava;Neetu Tyagi
Author_Institution :
Defence Terrain Research Laboratory, Defence Research & Development Organization, Delhi, India
Abstract :
This study demonstrates application of analysis of geotechnical sensors based data for landslide monitoring and prediction at Tangni landslide site, 12 km from Pipalkoti along Rishikesh ? Badrinath highway (NH-58) in India. Prediction of slope deformations is carried out using back propagation neural network (BPNN) model. Training of the model is done using 60% of the data received from the landslide site while 20% of data is used for testing and finally 20% data is used for validation of the model. The application of the BPNN based model is to predict the slope deformations using daily and antecedent rainfall as input variables. It is found using hit and trial method that a back propagation neural network having four layers with two hidden layers and twelve neurons is performing in an optimal manner on data received from Tangni landslide. The results of the study suggest a promising BPNN model that produces an accuracy of approximately 95% in predicting the slope deformation.
Keywords :
"Terrain factors","Mathematical model","Training","Predictive models","Neurons","Data models","Biological neural networks"
Conference_Titel :
Computational Intelligence: Theories, Applications and Future Directions (WCI), 2015 IEEE Workshop on
DOI :
10.1109/WCI.2015.7495526