Login / Signup

Multi-Objective Optimization of Machining Parameters for Drilling LM5/ZrO 2 Composites Using Grey Relational Analysis.

Sunder Jebarose JuliyanaJayavelu Udaya PrakashRobert ČepKrishnasamy Karthik
Published in: Materials (Basel, Switzerland) (2023)
In today's world, engineering materials have changed dramatically. Traditional materials are failing to satisfy the demands of present applications, so several composites are being used to address these issues. Drilling is the most vital manufacturing process in most applications, and the drilled holes serve as maximum stress areas that need to be treated with extreme caution. The issue of selecting optimal parameters for drilling novel composite materials has fascinated researchers and professional engineers for a long time. In this work, LM5/ZrO 2 composites are manufactured by stir casting using 3, 6, and 9 wt% zirconium dioxide (ZrO 2 ) as reinforcement and LM5 aluminium alloy as matrix. Fabricated composites were drilled using the L 27 OA to determine the optimum machining parameters by varying the input parameters. The purpose of this research is to find the optimal cutting parameters while simultaneously addressing the thrust force (TF), surface roughness (SR), and burr height (BH) of drilled holes for the novel composite LM5/ZrO 2 using grey relational analysis (GRA). The significance of machining variables on the standard characteristics of the drilling as well as the contribution of machining parameters were found using GRA. However, to obtain the optimum values, a confirmation experiment was conducted as a last step. The experimental results and GRA reveal that a feed rate (F) of 50 m/s, a spindle speed (S) of 3000 rpm, Carbide drill material, and 6% reinforcement are the optimum process parameters for accomplishing maximum grey relational grade (GRG). Analysis of variance (ANOVA) reveals that drill material (29.08%) has the highest influence on GRG, followed by feed rate (24.24%) and spindle speed (19.52%). The interaction of feed rate and drill material has a minor impact on GRG; the variable reinforcement percentage and its interactions with all other variables were pooled up to the error term. The predicted GRG is 0.824, and the experimental value is 0.856. The predicted and experimental values match each other well. The error is 3.7%, which is very minimal. Mathematical models were also developed for all responses based on the drill bits used.
Keyphrases
  • reduced graphene oxide
  • clinical trial
  • randomized controlled trial
  • climate change
  • genome wide
  • single molecule