Application of grey-fuzzy logic for the optimization of process parameters on CNC turning of EN8-steel
Abstract
This paper presents an effective approach of greyfuzzy
logic to optimize the cutting parameters in CNC turning
with respect to multiple roughness characteristics. Four
cutting parameters, namely, depth of cut, spindle speed, feed
rate and nose radius are optimized considering three surface
roughness parameters; centre line average, peak-valley height
and maximum height of profile. An orthogonal array (L27),
grey relational generation, grey relational coefficient and grey
–fuzzy grade obtained from the grey relational analysis which
is used as performance index to solve the optimization
problem of turning parameters for EN-8 steel. Taguchi
orthogonal array, the signal-to-noise ratio, and the analysis of
variance are used to investigate the optimal levels of cutting
parameters. The confirmation tests are conducted to verify the
results and it is observed that grey-fuzzy approach is efficient
in determining the optimal cutting parameters based on
multiple surface roughness characteristics.
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