Quasi-Non-Destructive Evaluation of Yield Strength Using Neural Networks
Author(s) -
G. Partheepan,
D. K. Sehgal,
R.K. Pandey
Publication year - 2011
Publication title -
advances in artificial neural systems
Language(s) - English
Resource type - Journals
eISSN - 1687-7608
pISSN - 1687-7594
DOI - 10.1155/2011/607374
Subject(s) - artificial neural network , yield (engineering) , computer science , test data , power (physics) , value (mathematics) , nondestructive testing , reliability engineering , machine learning , materials science , engineering , composite material , medicine , physics , quantum mechanics , radiology , programming language
The objective of this paper is to delineate a method for determining the yield strength of a material in a virtually nondestructive manner. Conventional test methods for predicting the yield strength require the removal of large material samples from the inservice component, which is impractical. In this paper, the power of neural networks in predicting the yield strength from the data obtained by conducting tension test on newly developed dumb-bell-shaped miniature specimen is demonstrated using the self-organizing capabilities of the ANN. The input to the neural network is the breakaway load obtained from the miniature test, and the output obtained from the model is yield strength value. The value of the yield strength estimated by neural network is found to be in good agreement (
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