Article ID Journal Published Year Pages File Type
833410 Materials & Design (1980-2015) 2007 7 Pages PDF
Abstract

An artificial neural network model, using a back-propagation learning algorithm is utilized, to predict the yield stress, elongation, ultimate tension stress, R¯ and ∣ΔR∣ during hot rolling, cold rolling and annealing of AA3004 aluminum alloy. Input nodes were chosen as the ratio of initial to final thicknesses, reduction, preheating time and temperature, finish rolling temperature and the final annealing temperature. The maximum error for predicted values was 6.35%, the average of absolute relative error was 0.57% and the RMS was 0.00998. It was found that the mechanical properties and anisotropy of AA3004 alloy sheets can be predicted by this approach.

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Physical Sciences and Engineering Engineering Engineering (General)
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