Performance Evaluation and Optimisation of Surface Grinding Process for Grinding of Aluminium Based Metal Matrix Composites using Response Surface Methodology and A Novel Genetic Algorithm Approach
Date
2013
Authors
K., Dayananda Pai
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Aluminium-based metal matrix composites (MMCs) reinforced with ceramic particles
are the advanced materials known for their good damping properties, high specific
strength and high wear resistance. MMCs are increasingly used in aeronautical and
automobile industries and in military applications. In addition, the sporting goods
industry has also been in the forefront of MMCs development to capitalise on the
materials high specific properties.
Despite many advantages, full implementation of MMCs is cost-prohibitive.
This is partially due to the poor machinability of the materials. Although near-netshape MMC components can be produced, finishing is still required for obtaining the
desired dimensional accuracy and surface finish. Significant cost and fabrication
problems, including machining, must be overcome for the successful application of
these composites. Surface finish and surface integrity are important for surface
sensitive parts subjected to fatigue. Unconventional processes produce better surface
finish but they results in subsurface damage during the machining of MMCs. Hence,
finishing processes such as grinding and allied abrasive machining are used to
improve the surface integrity of machined MMCs.
The grindability of aluminium-based MMCs reinforced with ceramic particles
is investigated in this dissertation. By the analysis of variance, a complete realization
of the grinding process and their effects was achieved. Mathematical model is
established for specific energy, metal removal rate and surface roughness from
Response surface methodology (RSM). The main objective of this research is to
determine the favourable grinding conditions for aluminium-based MMCs reinforced
with ceramic particles. Not many researchers have attempted the optimisation of the
surface grinding process by considering the specific energy as a performance
parameter during grinding of MMCs. A novel approach of multi-objective
optimization based on Genetic Algorithm and Desirability function approach was
conducted to achieve the desired objective. Very few research works have been
attempted towards multi objective optimisation involving surface roughness, metal
removal rate and specific energy as the performance parameters in total.
The first part of the presented research concentrates on influence of process
variables on specific energy, metal removal rate and surface roughness obtained ingrinding of Al6061-SiC35P composites using Taguchi’s design of experiments. From
the above investigation, it is observed that feed is the dominant factor affecting the
specific energy. Depth of cut is the dominant factor affecting the Metal removal rate
and volume percentage of SiC is the dominant factor affecting the surface roughness.
The second part of presented research concentrates on mathematical modelling
RSM. From the study, it is revealed that the second order RSM model developed for
the performance parameters indicates good fit with the experimental results.
Desirability function approach for multi-objective optimisation is adopted to choose
the process variables that are favourable to achieve the optimal values of specific
energy, metal removal rate and surface roughness.
The third part of the research involves the application of novel genetic
algorithm on multi objective optimisation of specific energy (u), metal removal rate
(Qw) and surface roughness (Ra). The results obtained from this novel genetic
algorithm were compared with RSM and the results obtained were in fairly close
agreement.
Finally, the confirmatory experiments were carried out to validate the results
obtained from RSM and novel genetic algorithm. From the experiments, it was
observed that, deviation between the experimental and predicted responses were
within 14%. However novel genetic algorithm compilation consumes less amount
time in comparison to conventional non-dominated genetic algorithm (NSGA-II).
Hence from the study, it can be concluded that the developed novel genetic algorithm
model can be effectively used for the prediction of specific energy, metal removal rate
and surface roughness.
The understanding gained from Taguchi’s design of experiments, RSM,
Desirability function approach and novel genetic algorithm in this research can be
used to develop future guidelines for grinding of aluminium-based MMCs reinforced
with ceramic particles.
Description
Keywords
Department of Mechanical Engineering, discontinuously reinforced aluminium composites (DRACs), Specific energy, Specific energy, rate, surface roughness, Taguchi design of experiments, Response surface methodology, Novel genetic algorithm