Creep Behavior Prediction Research of T92 Steel Based on BP Neural Network

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Abstract:

Based on the BP neural network theory, the creep rate prediction model of T92 steel was established under multiple stress levels. Obtained the experimental results and using the model, the experimental results were trained. The results show that the simulation results match the measured results well with a high forecast precision. The BP neural network method can serve as research on T92 steel creep behavior.

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203-207

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December 2013

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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