Please use this identifier to cite or link to this item: https://hdl.handle.net/11499/47727
Title: ANN-Based wear performance prediction for plasma nitrided Ti6AI4V Alloy
Authors: Kahraman F.
Karadeniz S.
Durmuş H.
Keywords: Forecasting
Neural networks
Nitriding
Nitrogen plasma
Plasma applications
Surface treatment
Titanium alloys
Artificial neural network models
Different treatments
Diffusion layer thickness
Dry sliding wear test
Experimental conditions
Neural techniques
Statistical performance
Thickness and hardness
Deep neural networks
Publisher: Carl Hanser Verlag
Abstract: Surface modification of a Ti6A14V titanium alloy was made by the plasma nitriding process. Plasma nitriding was performed in a constant gas mixture of 20% H2-80% N2 at temperatures between 700 and 1000° C and process times between 2 and 15 h. Samples nitrided at different treatment times and temperatures were subjected to the dry sliding wear test using the pin-on-disc set up under 80N normal load with rotational speed of counter face disc of 0.8 m/s at room conditions. An artificial neural network (ANN) model of was developed for prediction of wear performance of the plasma nitrided Ti6A14V alloy. The inputs of the ANN model were processing times and temperatures, diffusion layer thickness, Ti2N thickness, TiN thickness and hardness. The output of the ANN model was wear loss. The model is based on the multilayer backpropagation neural technique. The ANN was trained with a comprehensive dataset collected from experimental conditions and results of authors. The model can be used for the prediction of wear properties of Ti6A14V alloys nitrided at different parameters. The ANN model demonstrated the best statistical performance with the experimental results. © Carl Hanser Verlag, München.
URI: https://doi.org/10.3139/120.110289
https://hdl.handle.net/11499/47727
ISSN: 0025-5300
Appears in Collections:Scopus İndeksli Yayınlar Koleksiyonu / Scopus Indexed Publications Collection

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