4.4 Article

Artificial neural network modelling to predict hot deformation behaviour of as HIPed FGH4169 superalloy

Journal

MATERIALS SCIENCE AND TECHNOLOGY
Volume 30, Issue 10, Pages 1170-1176

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1179/1743284713Y.0000000411

Keywords

FGH4169 superalloy; Hot deformation behaviour; Artificial neural network; Constitutive equation

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The hot deformation behaviour of as HIPed FGH4169 superalloy was studied by single stroke compression test on MMS-200 test machine at the temperatures of 950-1050 degrees C and the strain rates of 0.004-10 s(-1). Based on the experimental results, a back-propagation artificial neural network model and constitutive equation method were established to predict the flow stress of FGH4169 superalloy. The predictability of two different models was compared. The correlation coefficients of experimental and predicted flow stress with the trained BP ANN model and constitutive equation were 0.9995 and 0.9808 respectively. The average root mean square error (RMSE) values of the trained ANN model and constitutive equation are 0.39 and 2.21 MPa respectively. And the average absolute relative error (AARE) values of the trained ANN model and constitutive equation are 1.79 and 7.47% respectively. The results showed that the ANN model is an effective tool to predict the flow stress in comparison with constitutive equation.

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