Investigating the Effect of Tool and Work Material in Ultrasonic Machining of Titanium Alloys
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Abstract
By way of the development of technology, the scientists and technologists in the field of
manufacturing are facing more and more challenges. Technologically advanced industries
such as aeronautics, nuclear reactors and automobiles have been demanding high strength
temperature resistant (HSTR) materials having high strength to weight ratio. Ultrasonic
Machining (USM) is one of the non-traditional machining processes that are widely used in
commercial machining of hard and brittle materials such as ceramics, refractory materials
and precision stones. USM is a process known for its capabilities in providing excellent
surface finish without any significant alterations is surface integrity or structure of the work
material. Moreover, the compressive stress induced in the sub-surface as a result of repeated
impacts of abrasive grains contributes in improving the fatigue strength of the machined
components; which is a very important aspect especially for a material like titanium and its
alloys. Hence, the study was aimed to investigate the machining characteristics of
commercially pure titanium (ASTM Grade-2) and its alloys (ASTM Grade-5) as work
material, in combination with three different tool materials (High carbon steel; High speed
steel and Stainless steel) with cryogenic treatment and non-cryogenic treatment of tool in
ultrasonic machining and to model these characteristics for their application in the concerned
manufacturing industry. The machining characteristics investigated are material removal rate
(MRR); tool wears rate (TWR); micro hardness and surface roughness. The effect of various
input parameters on output responses have been analyzed using Analysis of Variance
(ANOVA).Microstructure analysis has been completed to understand the form and amount of
deposition on the surface of the workpiece material. Main effect plot and interaction plot for
significant factors and S/N ratio have been used to determine the optimal design for each
output response. Grey relational analysis and Genetic Algorithms were used to determine the
optimum combination of input parameters to get the best results.
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M.E. (MED)
