Title of article
Design and development of artificial neural networks for depositing powders in coating treatment
Author/Authors
Ming-Der Jean، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2005
Pages
14
From page
290
To page
303
Abstract
We propose the application of an artificial neural network to a Taguchi orthogonal experiment to develop a robust and
efficient method of depositing alloys with a favorable surface morphology by a specific microwelding hardfacing process. An
artificial neural network model performs self-learning by updating weightings and repeated learning epochs. The artificial neural
network construct can be developed based on data obtained from experiments. The root of mean squares (RMS) error can be
minimized by applying results obtained from training and testing samples, such that the predicted and experimental values
exhibit a good linear relationship. An analysis of variance indicates that the significant factors explain approximately 70% of the
total variance. Consequently, the Taguchi-based neural network model is experimentally confirmed to estimate accurately the
hardfacing roughness performance.
The experimental results reveal the hardfacing roughness performance of the product of PTA coating is greatly improved by
optimizing the coating conditions and is accurately predicted by the artificial neural network model. The combination of the
neural network model with Taguchi-based experiments is demonstrated as an effective and intelligent method for developing a
robust, efficient, high-quality coating process.
Keywords
Artificial neural network (ANN) , Plasma transfer arc (PTA) , Analysis of variance (ANOVA) , Root of meansquares (RMS) , Deposited alloy
Journal title
Applied Surface Science
Serial Year
2005
Journal title
Applied Surface Science
Record number
1000988
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