TY - JOUR
T1 - Artificial Neural Network application for predicting in-flight particle characteristics of an atmospheric plasma spray process
AU - Choudhury, T. A.
AU - Hosseinzadeh, N.
AU - Berndt, C. C.
PY - 2011/8/25
Y1 - 2011/8/25
N2 - Thermal spray consists of a group of coating processes that are used to apply metal or non-metallic coatings to protect a functional surface or to improve its performance. There are some 40 processing parameters that define the overall coating quality and these must be selected in an optimized fashion to manufacture a coating that exhibits desirable properties. The proper combination of processing variables is critical since these influence the cost as well as the coating characteristics.Because of this high number of processing parameters, a major challenge is to have full control over the system and to understand parameter interdependencies, correlations and their individual effects on the in-flight particle characteristics, which have significant influence on the in service coating properties. This paper proposes an approach, based on the Artificial Neural Network (ANN) method, to play this role and illustrates the model's design, network optimization procedures, the database handling and expansion steps, and analysis of the predicted values, with respect to the experimental ones, in order to evaluate the network's performance.
AB - Thermal spray consists of a group of coating processes that are used to apply metal or non-metallic coatings to protect a functional surface or to improve its performance. There are some 40 processing parameters that define the overall coating quality and these must be selected in an optimized fashion to manufacture a coating that exhibits desirable properties. The proper combination of processing variables is critical since these influence the cost as well as the coating characteristics.Because of this high number of processing parameters, a major challenge is to have full control over the system and to understand parameter interdependencies, correlations and their individual effects on the in-flight particle characteristics, which have significant influence on the in service coating properties. This paper proposes an approach, based on the Artificial Neural Network (ANN) method, to play this role and illustrates the model's design, network optimization procedures, the database handling and expansion steps, and analysis of the predicted values, with respect to the experimental ones, in order to evaluate the network's performance.
KW - Artificial Neural Network
KW - Atmospheric plasma spray
KW - In-flight particle characteristics
KW - Intelligent multivariable control
KW - Kernel regression
KW - Process control
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U2 - 10.1016/j.surfcoat.2011.04.099
DO - 10.1016/j.surfcoat.2011.04.099
M3 - Article
AN - SCOPUS:79959520254
SN - 0257-8972
VL - 205
SP - 4886
EP - 4895
JO - Surface and Coatings Technology
JF - Surface and Coatings Technology
IS - 21-22
ER -