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Correlation of Sintering Parameters with Density and Hardness of Nano-sized Titanium Nitride reinforced Titanium Alloys using Neural NetworksCorrelation of Sintering Parameters with Density and Hardness of Nano-sized Titanium Nitride reinforced Titanium Alloys using Neural Networks

Other Titles
Correlation of Sintering Parameters with Density and Hardness of Nano-sized Titanium Nitride reinforced Titanium Alloys using Neural Networks
Authors
A. K. MauryaP. L. NarayanaHong In Kim수바레디
Issue Date
Oct-2020
Publisher
한국분말재료학회
Keywords
Artificial Neural Network; Spark plasma sintering; Ti-6Al-4V alloy; TiN nanomaterials; Weight distribution
Citation
Journal of Powder Materials, v.27, no.5, pp 365 - 372
Pages
8
Indexed
KCI
Journal Title
Journal of Powder Materials
Volume
27
Number
5
Start Page
365
End Page
372
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/7568
DOI
10.4150/KPMI.2020.27.5.365
ISSN
2799-8525
Abstract
Predicting the quality of materials after they are subjected to plasma sintering is a challenging task because of the non-linear relationships between the process variables and mechanical properties. Furthermore, the variables governing the sintering process affect the microstructure and the mechanical properties of the final product. Therefore, an artificial neural network modeling was carried out to correlate the parameters of the spark plasma sintering process with the densification and hardness values of Ti-6Al-4V alloys dispersed with nano-sized TiN particles. The relative density (%), effective density (g/cm3), and hardness (HV) were estimated as functions of sintering temperature (oC), time (min), and composition (change in % TiN). A total of 20 datasets were collected from the open literature to develop the model. The high-level accuracy in model predictions (>80%) discloses the complex relationships among the sintering process variables, product quality, and mechanical performance. Further, the effect of sintering temperature, time, and TiN percentage on the density and hardness values were quantitatively estimated with the help of the developed model.
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학연산협동과정 > 재료공학과 > Journal Articles

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