|
Title
Prediction of torque in drilling woven jute fabric reinforced epoxy composites using the adaptive network-based fuzzy inference system and response surface methodology
Authors
SHETTAHALLI M. VINU KUMAR, NALLASIVAM MANIKANDAPRABU, NARAYANAN BABU and CHANDRASEKARAN SASIKUMAR
Received
January 11, 2024
Published
Volume 58 Issue 1-2 January-February
Keywords
drilling, regression, ANFIS, RSM, jute-epoxy, FESEM, torque
Abstract
Jute fiber reinforced epoxy (JREp) composites were prepared by the compression moulding technique by varying the
fiber content (0, 20, 30 and 40 wt%). Fabricated JREp composites were subjected to a drilling study to observe the
impact of factors such as spindle speed (rpm), feed rate (mm/min) and fiber content (wt%) on the output response –
torque. A set of experiments were designed and conducted as per Taguchi’s Design of Experiment. The obtained torque
results were found in the range from 14.84 to 32.28 N-m. The minimum value of torque was achieved for the composite
drilled using an HSS twist drill (90°-point angle) at a high spindle speed (3000 rpm), with low feed rate (25 mm/min)
on low fiber loaded JREp composite (20JREp). ANOVA analysis showed that the developed regression model was
fairly significant and torque was mainly influenced by the feed rate. Mathematical models were developed for drilling
JREp composites using response surface methodology (RSM) and adaptive neuro fuzzy inference system (ANFIS), and
compared for their efficacy. The coefficient of determination (R2) values for RSM and ANFIS were 0.9778 and 0.9982,
respectively, which conveys that both models were beneficial to predict the torque. The average checking error
percentage (0.0000222) was obtained for the ANFIS model trained using ‘gbellmf’ membership function with 100
epochs. FESEM images of the drilled surface were captured to analyse the mode of failure endured by the JREp
composites.
Link
https://doi.org/10.35812/CelluloseChemTechnol.2024.58.10
|