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Nonlinear Analysis of Concrete Gravity Dams by Neural Networks.

Authors :
Joghataie, Abdolreza
Dizaji, Mehrdad Shafiei
Source :
World Congress on Engineering 2009 (Volume 2). 2009, p1022-1027. 6p. 3 Diagrams, 4 Graphs.
Publication Year :
2009

Abstract

Multi-layer neural networks have been used in this paper for modeling nonlinear behaviour of concrete gravity dams under earthquake excitation. Koyna dam which has been studied extensively by other authors in the past has been studied as test example in this paper too, where the nonlinear response of its crest has been modelled by the proposed algorithm. The main steps of the algorithm are as follows: First the concrete gravity dam has been numerically analyzed for its nonlinear behaviour under earthquake excitation to generate numerical data to be used in the training of the neural networks. To this end the dam has been subjected to a white noise excitation so that the generated data could be rich enough for the training of a general neuro-modeller of the dam response. The neuro-modeller has then been trained on the generated data to learn the hysteretic behaviour of the dam implicitly. Then the neural network has been tested on a number of earthquakes including near field as well as very strong earthquakes for verification. The results obtained in this study prove that the method has been successful regarding the generalization capabilities of the trained neuro-modeller where other earthquakes than those used in its training have been used in its testing. In the tests, the neuro-modeller could predict the response with high precision. One significant benefit of using this algorithm is in cases where it is desired to use collected data from tests on experimental models or through monitoring of the response of a dam to prepare a suitable model for predicting its response under any earthquake. Another benefit is the time of analysis which can be reduced by this method. Once the neuro-modeller is trained, it can predict the response of the dam to any earthquake without the need to be updated. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISBNs :
9789881821010
Database :
Academic Search Index
Journal :
World Congress on Engineering 2009 (Volume 2)
Publication Type :
Book
Accession number :
50994955