Title of article
Reliability analysis of structures using artificial neural network based genetic algorithms Original Research Article
Author/Authors
Jin Cheng، نويسنده , , Q.S. Li، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2008
Pages
9
From page
3742
To page
3750
Abstract
A new class of artificial neural network based genetic algorithms (ANN-GA) has been developed for reliability analysis of structures. The methods involve the selection of training datasets for establishing an ANN model by the uniform design method, approximation of the limit state function by the trained ANN model and estimation of the failure probability using the genetic algorithms. By effectively integrating the uniform design method with the artificial neural network based genetic algorithms (ANN-GA), the inherent inaccuracy of the selection of the training datasets for developing an ANN model in conventional ANN-GA has been eliminated while keeping the good features of the ANN-GA. Due to a small number of training datasets required for developing an ANN model, the proposed methods are very effective, particularly when a structural response evaluation entails costly finite element analysis or when a problem has a extremely small value of failure probability. Three numerical examples involving both structural and non-structural problems illustrate the application and effectiveness of the methods developed, which indicate that the proposed methods can provide accurate and computationally efficient estimates of probability of failure.
Keywords
Genetic algorithms , Artificial neural network , Uniform design method , Structural reliability , Failure probability , Limit state function
Journal title
Computer Methods in Applied Mechanics and Engineering
Serial Year
2008
Journal title
Computer Methods in Applied Mechanics and Engineering
Record number
894360
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