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"Artificial Neural Networks vs. Fuzzy Logic: simple tools to predict and control complex processes - application to plasma spray processes".


by Kanta, Abdoul-Fatah^Montavon, Ghislain^Vardelle, Michel^Planche, Marie-Pierre^Berndt, Christopher C.^Coddet, Christian
Advanced Materials & Processes • August, 2008 • JTST HIGHLIGHTS

The plasma spray coating architecture and in-service properties are derived from an amalgamation of intrinsic and extrinsic spray parameters. These parameters are interrelated; following mostly nonlinear relationships. For example, adjusting power parameters (to modify particle temperature and velocity upon impact) also implies an adjustment of the feedstock injection parameters to optimize geometric and kinematic parameters. Optimization of the operating parameters is a first step. Controlling these is a second step and consists of defining unique combinations of parameter sets and maintaining them as constant during the entire spray process. These unique combinations must be defined with regard to the in-service coating properties. Several groups of operating parameters control the plasma spray process; namely extrinsic parameters that can be adjusted directly (e.g., the arc current intensity) and intrinsic parameters, such as the particle velocity or its temperature upon impact, that are indirectly adjusted. Ar-

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tificial intelligence (AI) is a suitable approach to predict operating parameters to attain required coating characteristics. Artificial Neural Networks (ANN) and Fuzzy Logic (FL) were implemented to predict in-flight particle characteristics as a function of power process parameters. The so-predicted operating parameters resulting from both methods were compared. The spray parameters are also predicted as a function of achieving a specified hardness or a required porosity level. The predicted operating parameters were compared with the predicted in-flight particle characteristics. The specific case of the deposition of alumina-titania ([AI.sub.2][O.sub.3]-[TiO.sub.2], 13% by weight) by APS is considered.


COPYRIGHT 2008 ASM International Reproduced with permission of the copyright holder. Further reproduction or distribution is prohibited without permission.
Copyright 2008 Gale, Cengage Learning. All rights reserved. Gale Group is a Thomson Corporation Company.
NOTE: All illustrations and photos have been removed from this article.


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