Agrawal, Jatin (2012) A study on analysis and prediction of erosion response of plasma sprayed titania coatings. BTech thesis.
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Abstract
This
work presents successful implementation of Taguchi experimental design
integrated with artificial neural networks (ANN) to develop a robust and
efficient method of analyzing and predicting the erosion wear response
of a new class of metal-glass coatings prepared by plasma spraying.
Plasma spray technology utilizes the exotic properties of the plasma
medium to effect physical, chemical or metallurgical reactions to
produce new materials or impart new functional properties to
conventional materials. Titania(TiO2 )are preferred as the coating
material over irregular ones due to low surface area to volume ratio,
high density, free flowing ability and close sizing etc. Coatings of
this titania are deposited on mild steel substrates at various input
power levels of the plasma torch. Erosion wear characteristics of these
coatings are investigated following a plan of experiments based on the
Taguchi technique, which is used to acquire the erosion test data in a
controlled way. The study reveals that the impact velocity is the most
significant among various factors influencing the wear rate of these
coatings. An ANN model based on experimental data that performs
self-learning by updating weightings is proposed in this work. It takes
into account training and test procedure to predict the erosion
performance under different erosive wear conditions. This technique
helps in saving time and resources for a large number of experimental
trials and successfully predicts the wear rate of the coatings both
within and beyond the experimental domain.
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