SlideShare a Scribd company logo
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 06 Issue: 07 | July 2019 www.irjet.net p-ISSN: 2395-0072
© 2019, IRJET | Impact Factor value: 7.211 | ISO 9001:2008 Certified Journal | Page 1014
A REVIEW ON OPTIMIZATION OF CUTTING PARAMETERS IN
MACHINING USING TAGUCHI METHOD
Dukhit Kumar Chandel1, Dr. Prabhat Kumar Giri2
1M.E. (Production) Student, Shri Shankaracharya Technical Campus, Bhilai
2Professor, Department of Mechanical Engineering, Shri Shankaracharya Technical Campus, Bhilai
---------------------------------------------------------------------***----------------------------------------------------------------------
Abstract - CNC End milling is a unique adaption of the
conventional milling process which uses an end mill tool for
the machining process. CNC Vertical End Milling Machining is
a widely accepted material removal process used to
manufacture components with complicated shapes and
profiles. During the End milling process, the material is
removed by the end mill cutter. The effects of various
parameters of end milling process like spindle speed, depth of
cut, feed rate have been investigated to reveal their Impact on
surface finish using Taguchi Methodology. Experimental plan
is performed by a Standard Orthogonal Array. The graph of S-
N Ratio indicates the optimal setting of the machining
parameter which gives the optimum value of surface finish.
The optimal set of process parameters has also beenpredicted
to maximize the surface finish.
Key Words: Taguchi method, signal to noise ratio,
ANOVA, Optimization, cutting parameters.
1. INTRODUCTION
Industries around the world constantly focus on the quality
of the product. But, along with quality, cost of production
and productivity is also a very importantfactor. Productivity
can be interpreted in terms of material removal rate in the
machining operation and quality represents satisfactory
yield in terms of product characteristics as desired by the
customers. Moreover, machining environment also plays a
very important role. Industries have been trying to reduce
the cost of production, so that they can survive the
competition in the market. Forthispurpose, researcheshave
been carried out to get optimal qualityatoptimal production
cost. Some of the important factors that have been
considered are (a) Cutting speed (b) Depth of cut (c) Feed
rate. For measuring the quality surface finish has been
considered as a parameter. To find the right combination of
above parameters and to find the mostinfluential parameter
Taguchi method and analysis of variance is used. The
experiments are conducted by using Taguchi L9 orthogonal
array as suggested by Taguchi. Signal-to-Noise (S/N) ratio
and Analysis of Variance (ANOVA) is employed to analyse
the effect of milling parameters on material removal rate.
1.1 End milling
The cutter, called end mill, has a diameter less than the
workpiece width. The end mill has helical cutting edges
carried over onto the cylindrical cutter surface. End mills
with flat ends (so called squire-end mills) are used to
generate pockets, closed or end key slots, etc. End milling is
the most common metalremovaloperationencountered.The
end mill has edges in the sidesurface and the bottomsurface.
The fundamental usage is that the end mill is rotated, and
makes a plane of a material inthe right-and-leftdirectionora
plane of a bottom side of the end mill. We can make various
shapes of mechanical parts with the end mill. The edge of the
end mill is very weak. In case beginning of cuttings, we have
to take care so that the end mill may touch to a material as
slowly as possible. It is widely used to matewithotherpartin
die, aerospace, automotive, and machinery design as well as
in manufacturingindustries.Thetoolchangeriscontrolledby
the CNC program.
Fig -1: End Milling Operation
1.2 Taguchi method
Taguchi method is statistical method developed by
Professor Genichi Taguchi of Nippon Telephones and
Telegraph Company Japan for the production of robust
products. According to Taguchi, total loss generated by a
product to the society after shipped is the quality of the
manufacturedproduct.Taguchihasusedexperimentaldesign
as a tool to make products more robust to make them less
sensitive to noise factors. Currently, Taguchi method is
applied to many sectors like engineering, biotechnology,
marketing and advertising. Taguchi developed a method
based on orthogonal array experiments, which reduced
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 06 Issue: 07 | July 2019 www.irjet.net p-ISSN: 2395-0072
© 2019, IRJET | Impact Factor value: 7.211 | ISO 9001:2008 Certified Journal | Page 1015
"variance" for the experiment with "optimum settings" of
control parameters. Hence, the optimal results can be
achieved by implementing the combination of Design of
Experiments (DOE) with optimization ofcontrolparameters.
Signal-to-noise (S/N) ratio and orthogonal array are two
major tools used in robust design. Signal to noiseratio,which
is log functions of desired output measures quality with
emphasis on variation,andorthogonalarrays,provideasetof
well-balanced experiments to accommodate many design
factors at the same time.
1.3 Design of experiment (DOE)
Design of experiments (DOE) or experimental design is
the design of any information-gathering exercises where
variation is present, whether under the full control of the
experimenter or not. However, in statistics these terms are
usually used for controlled experiments. Formal planned
experiment is often used in evaluating physical objects,
chemical formulation,structures,componentsandmaterials.
Design of experiments (DOE) capabilitiesprovidesa method
for simultaneously investigating the effects of multiple
variables on an output variable (response). These
experiments consist of a series of runs, or tests, in which
purposeful changes are made to input variables or factors,
and data are collected at each run. Quality professionals use
DOE to identify the process conditions and product
components that influence quality and then determine the
input variable (factor) settings that maximize results.
2. Literature review
V V K Lakshmi and Dr. K Venkata Subbaiah [1] conducted
end milling operation on EN24 grade steel withahardnessof
260 BHN using solid coated carbide tool. Input variables
consist of cutting speed, feed rate and depth of cut. The
output variables are surface roughnessandMaterialremoval
rates. Average surface roughness were modelled and
optimized by using RSM method. Their results showed that
feed rate is the most affecting parameter on surface
roughness followed by cutting speed. However, depth of cut
appears to have very little effect over roughness value.
B Vijaya Krishna Teja, N. Naresh, K. Rajasekhar [2]
conducted milling on AISI 304 stainless steel using grey
taguchi method. The surfaceroughnessandmaterialremoval
rate were the responses. The proposed Grey based Taguchi
method is constructive in optimizing the multiresponses. It
was identified that cutting speed (56.90%) influences more
on milling of AISI 304 stainless steel followed by depth of cut
(22.43%) and feed rate (8.58%).
Mohammed T. Hayajneh, Montasser S. Tahat, Joachim
Bluhm [3] used ANOVA to optimize cutting parameters
during end milling of aluminium. The effect of spindle speed,
feed rate, depth of cut on surface roughness of aluminium
samples was studied. They found that feed rate is most
dominant influencing parameter which affects the surface
roughness.
Nikhil Aggarwal and Sushil Kumar Sharma [4] used
Taguchi based grey relational analysistooptimizemachining
parameters in end milling of AISI H11 Steel Alloy.Theyfound
that cutting speed is the only significant machining
parameter for surface roughness. The increase in cutting
speed produces better surface finish. Depth of cut has the
least effect on surface roughness and material removal rate.
Dimple Rani, Dinesh Kumar [5] conducted end milling
operation on AISI D2 steel with carbide tool by varying feed,
speed and depth of cut and the surface roughness was
measured using Surface Roughness Tester. They found that,
for achieving good surface finishontheD2workpiece,higher
cutting speed, lower feed and lower depth of cut are
preferred. As speed increases surface roughness decreases
and feed increases surface roughness also increases.
Bhargav V. Patel, Prof. P. J. Panchal [6] investigated
optimal machining parameters and their contribution on
producing better Surface quality and higher Productivity.
They carried out end milling on AISI 316 steel. It is observed
that the effect of No of flutes and cutting speed are most
significant factors varying linearly with the response.
Shivam Goyal et al [7] investigated experimental study of
turning operation and optimization of MRR and surface
roughness using Taguchi method. In this research work
turning operation is performed on AISI 1020 mild steel. The
experiments were performed by taking Cutting Speed, Feed
Rate & Depth of cut as process parameters and got the
optimized value of MRR & SR. An L9 orthogonal array, the
S/N ratio are employed to the study the performance
characteristics in the turning usingcarbideinsertwithanose
radius of 0.8mm.
Manoj Kumar,MahenderSinghKaswan[8]usedTaguchi’s
Parameter Design methodology for Parametric Study of D2
Steel on End milling process. They triedtodeterminethebest
cutting parameterleadingtomaximummaterialremovalrate
and minimumsurface roughnessinmachiningD2(DieSteel).
They found that high cutting speed, low feed rate, low depth
of cut is required for achieving high surface finish. For high
material removal rate maximum speed of cut, maximum
depth of cut, maximum feed rate is required.
Sourabh Kuamr Soni, Dr S.K.Moulick [9] carried out end
milling process on Inconel 718 by Taguchi methodology.
Three machining process parameter are chosen cutting
speed, feed rate and depth of cut. The analysis prepare was
created using by Taguchi’s L9 Orthogonal Array. They found
cutting speed has greater effect on surface roughness than
feed rate and depth of cut.
Hemantsinh Pratapsinh Rao, Prof. Rajat Dave, Prof.
Riddish Thakore [10] used taguchi method for carrying out
end milling operation on AL 6061. From experimental
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 06 Issue: 07 | July 2019 www.irjet.net p-ISSN: 2395-0072
© 2019, IRJET | Impact Factor value: 7.211 | ISO 9001:2008 Certified Journal | Page 1016
analysis they found that cutting speed has greater effect on
surface roughness and material removal rate.
N .V. Malvade, S. R. Nipanikar [11] performed end milling
on OHNS steel using HSS tool. They found that the effect of
depth of cut on MRR is maximum while cutting speed has
least effect. For surface roughness, cutting speed has
maximum effect.
Akhilesh Chaudhary, Vinit Saluja [12] used taguchi
method to perform end milling on AL6082. They observed
that speed has more influence on surface roughness.
Table -1: Summary of review papers
SNo. Author’s Name Input
Parameter
Output
Parameter
Most
Significant
1 V V K Lakshmi
et al
Cutting,
Speed,
Feed rate ,
DOC
Surface
roughness,
MRR
Feed Rate
2 B Vijaya
Krishna Teja
et al
Cutting,
Speed,
Feed rate ,
DOC
Surface
Roughness,
MRR
Cutting
speed
3 Mohammed T.
Hayajneh et al
Cutting,
Speed,
Feed rate ,
DOC
Surface
Roughness
Feed rate
4 Nikhil Agarwal
et al
Cutting
speed,
Feed rate,
DOC
Surface
roughness
Cutting
speed
5 Dimple Rani et
al
Cutting
speed,
Feed rate,
DOC
Surface
roughness,
and
MRR
Cutting
speed
6 Bhargav V.
Patel et al
Cutting
speed,
Feed rate,
DOC
Surface
roughness
No. of
flutes,
cutting
speed
7 Shivam Goyal
et al
Cutting
Speed,
Feed rate,
DOC
MRR &
surface
roughness
Depth of
cut &
cutting
speed
8 Manoj Kumar
et al
Cutting
speed,
Feed rate,
DOC
MRR,
surface
roughness,
Cutting
speed
9 Sourabh
Kumar Soni et
al
Cutting
Speed,
Feed rate,
DOC
Surface
finish
Cutting
speed
10 Hemantsinh
Pratapsinh
Rao et al
Cutting
Speed,
Feed rate,
DOC
Surface
roughness,
MRR
Cutting
speed
11 N. V. Malvade
et al
Cutting
speed,
Feed rate,
DOC
Surface
roughness,
MRR
Cutting
speed,
DOC
12 Akhilesh
Chaudhary et
al
Cutting
speed,
Feed rate,
DOC
Surface
roughness
Cutting
speed
3. CONCLUSION
After minutely going through the above discussed
literatures, it is noticed that most of the researchers have
considered cutting speed, depth of cut, feed rate as the input
parameters. Most of them have not considered environment
temperature, coolant used and other factors during their
study. Majority of them came to the conclusion that cutting
speed has greater influence on the surface finish. For
material removal rate depth of cut is most influencing
parameter. However, it has also been observed that most
significant parameter changes with the change in material
under consideration.
ACKNOWLEDGEMENT
It is joyful occasion for me to publish this paper. I would like
to express my deep sense of gratitude to my guide, teachers
and friends for giving valuable time, precious guidance
which helped me in completion of paper successfully.
REFERENCES
[1] V V K Lakshmi, Dr K Venkata Subbaiah “Modelling and
Optimization of Process Parameters during End Milling
of Hardened Steel” International Journal of Engineering
Research and Applications (IJERA) ISSN: 2248-9622
www.ijera.com Vol. 2, Issue 2, Mar-Apr 2012, Page 674-
679.
[2] B Vijaya Krishna Teja, N. Naresh, K. Rajasekhar “Multi-
Response Optimization of Milling Parameters on AISI
304 Stainless Steel using Grey-Taguchi Method”
International Journal of Engineering Research &
technology (IJERT), ISSN: 2278-0181, Volume2,Issue8,
August – 2013, Page 2235-2241.
[3] Mohammed T. Hayajneh, Montasser S. Tahat, Joachim
Bluhm “A Study of the Effects of Machining Parameters
on the Surface Roughness in the End-Milling Process”
Jordan Journal of Mechanical andIndustrial Engineering
JJMIE ISSN 1995-6665 Volume 1, Issue 1, Sep. 2007
Pages 1 – 5.
[4] Nikhil Aggarwal and Sushil Kumar Sharma
“Optimization of MachiningParametersinEndMillingof
AISI H11 Steel Alloy by Taguchi based Grey Relational
Analysis” International Journal of Current Engineering
and Technology E-ISSN 2277 – 4106, P-ISSN 2347 –
5161, Volume 4, Issue 4, Aug 2014, Page 2797-2803.
[5] Dimple Rani, Dinesh Kumar and ANOVA “Optimization
and Modelling of End Milling Process Parameters by
Using Taguchi Method” International Journal for
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 06 Issue: 07 | July 2019 www.irjet.net p-ISSN: 2395-0072
© 2019, IRJET | Impact Factor value: 7.211 | ISO 9001:2008 Certified Journal | Page 1017
Research in Applied Science & Engineering Technology
(IJRASET) ISSN: 2321-9653,Volume2,Issue10, October
2014, Page 240-247.
[6] Bhargav V. Patel, Prof. P. J. Panchal “Effect Of Process
Parameters On Surface Roughness And Material
Removal Rate In Cnc End Milling Process” International
Journal of Mechanical and Industrial Technology ISSN
2348-7593, Volume 7, Issue 1, April 2019 - September
2019, Page 14-35.
[7] Shivam Goyal, Varanpal Singh Kandra, Prakhar Yadav
“Experimental Study Of Turning Operation And
Optimization Of MRR And Surface Roughness Using
Taguchi Method” International Journal of Innovative
Research in Advanced Engineering, Volume 3, 2016,
Page 44-50.
[8] Manoj Kumar, MahenderSinghKaswan “Optimizationof
Surface Roughness & MRR in End Milling On D2 Steel
Using Taguchi Method” International Journal of
Technical Research (IJTR), ISSN 2278-5787, Volume 5,
Issue 1, Mar-Apr 2016, Page 4-9.
[9] Sourabh Kuamr Soni, Dr S.K.Moulick “Optimization of
Milling Process Parameter for Surface Roughness of
Inconel 718 By Using Taguchi Method” IJSRD -
International Journal for Scientific Research &
Development ISSN: 2321-0613, Volume 2, Issue 11,
2015, Page 57-63.
[10] Hemantsinh Pratapsinh Rao, Prof. Rajat Dave, Prof.
Riddish Thakore “Optimization of CNC End Milling
Process Parameters for Aluminium 6061 Alloy using
Carbide Tool Material by Design of Experiments”
International Journal for Innovative ResearchinScience
& Technology (IJIRST), ISSN: 2349-6010, Volume 3,
Issue 11, April 2017, Page 84-90.
[11] N .V. Malvade, S. R. Nipanikar “Optimization Of Cutting
Parameters Of End Milling On Vmc Using Taguchi
Method” Journal of Engineering Research and Studies,
ISSN 0976-7916, Volume 5, Issue 2, April-June, 2014,
Page 14-17.
[12] Akhilesh Chaudhary, Vinit Saluja “Optimization Of
Machining Parameters Affecting Surface Roughness Of
Al6082 In Dry End Milling Operation On Vmc”
International Research Journal of Engineering and
Technology (IRJET), ISSN 2395-0056 ,Volume4,Issue8,
Aug -2017, Page 82-89.

More Related Content

What's hot (18)

PDF
IRJET-Optimization of Machining Parameters Affecting Metal Removal Rate of Al...
IRJET Journal
 
PDF
H012264250
IOSR Journals
 
PDF
Analysis of process parameters in dry machining of en 31 steel by grey relati...
IAEME Publication
 
PDF
Ae4103177185
IJERA Editor
 
PDF
A Review on Optimization of Cutting Parameters for Improvement of Surface Rou...
IRJET Journal
 
PDF
OPTIMIZATION OF TURNING PROCESS PARAMETER IN DRY TURNING OF SAE52100 STEEL
IAEME Publication
 
PDF
Optimization of Cutting Parameters Based on Taugchi Method of AISI316 using C...
IRJET Journal
 
PDF
Impact of Mechanical System in Machining Of AISI 1018 Using Taguchi Design o...
IJMER
 
PDF
IRJET- Analysis of Cutting Process Parameter During Turning of EN 31 for Mini...
IRJET Journal
 
PDF
Ijsrdv4 i70362 swati_kekade
vishwajeet potdar
 
PDF
IRJET- Experimental Analysis and Geometrical Effect on Mild Steel with Un...
IRJET Journal
 
PDF
247
sundar sivam
 
PDF
Investigations of machining parameters on surface roughness in cnc milling u...
Alexander Decker
 
PDF
IRJET- Review Paper Optimization of Machining Parameters by using of Taguchi'...
IRJET Journal
 
PDF
IRJET- Investigation on Metal Removal Rate by Changing Various Parameters Lik...
IRJET Journal
 
PDF
Optimization of Machining Parameters of 20MnCr5 Steel in Turning Operation u...
IJMER
 
PDF
Aj4201235242
IJERA Editor
 
PDF
Optimization of cutting parameters for surface roughness in turning
iaemedu
 
IRJET-Optimization of Machining Parameters Affecting Metal Removal Rate of Al...
IRJET Journal
 
H012264250
IOSR Journals
 
Analysis of process parameters in dry machining of en 31 steel by grey relati...
IAEME Publication
 
Ae4103177185
IJERA Editor
 
A Review on Optimization of Cutting Parameters for Improvement of Surface Rou...
IRJET Journal
 
OPTIMIZATION OF TURNING PROCESS PARAMETER IN DRY TURNING OF SAE52100 STEEL
IAEME Publication
 
Optimization of Cutting Parameters Based on Taugchi Method of AISI316 using C...
IRJET Journal
 
Impact of Mechanical System in Machining Of AISI 1018 Using Taguchi Design o...
IJMER
 
IRJET- Analysis of Cutting Process Parameter During Turning of EN 31 for Mini...
IRJET Journal
 
Ijsrdv4 i70362 swati_kekade
vishwajeet potdar
 
IRJET- Experimental Analysis and Geometrical Effect on Mild Steel with Un...
IRJET Journal
 
Investigations of machining parameters on surface roughness in cnc milling u...
Alexander Decker
 
IRJET- Review Paper Optimization of Machining Parameters by using of Taguchi'...
IRJET Journal
 
IRJET- Investigation on Metal Removal Rate by Changing Various Parameters Lik...
IRJET Journal
 
Optimization of Machining Parameters of 20MnCr5 Steel in Turning Operation u...
IJMER
 
Aj4201235242
IJERA Editor
 
Optimization of cutting parameters for surface roughness in turning
iaemedu
 

Similar to IRJET- A Review on Optimization of Cutting Parameters in Machining using Taguchi Method (20)

PDF
Optimization of surface roughness in high speed end milling operation using
IAEME Publication
 
PDF
Optimization of surface roughness in high speed end milling operation using
IAEME Publication
 
PDF
Turning parameters optimization for surface roughness by taguchi method
IAEME Publication
 
PDF
20120140503002
IAEME Publication
 
PDF
IRJET - Optimization of Machining Parameters in a Turning Operation of Flyash...
IRJET Journal
 
PDF
Optimization of process parameter for maximizing Material removal rate in tur...
IRJET Journal
 
PDF
Taguchi Method for Optimization of Cutting Parameters in Turning Operations
IDES Editor
 
PDF
OPTIMIZATION OF METAL REMOVAL RATE FOR SS316L IN DRY TURNING OPERATION USING ...
ijiert bestjournal
 
PDF
IRJET- Optimization of Cutting Parameters During Turning of AISI 1018 usi...
IRJET Journal
 
PDF
Experimental Investigation of Machining Parameters for Aluminum 6061 T6 Alloy
ijtsrd
 
PDF
Optimization of Turning Parameters Using Taguchi Method
IJMER
 
PDF
Prediction of output Responses in Milling of Casted Aluminum by using ANN
ijiert bestjournal
 
PDF
Improvement in surface quality with high production rate using taguchi method...
IAEME Publication
 
PDF
IMPROVEMENT IN SURFACE QUALITY WITH HIGH PRODUCTION RATE USING TAGUCHI METHOD...
IAEME Publication
 
PDF
Parametric analysis and multi objective optimization of cutting parameters in...
eSAT Journals
 
PDF
Parametric analysis and multi objective optimization of cutting parameters in...
eSAT Publishing House
 
PDF
Ie3115371544
IJERA Editor
 
PDF
Optimization of Turning Parameters Using Taguchi Method
IJMER
 
PDF
Application of taguchi method in the optimization of boring parameters 2
IAEME Publication
 
PDF
Application of taguchi method and anova in optimization of cutting
IAEME Publication
 
Optimization of surface roughness in high speed end milling operation using
IAEME Publication
 
Optimization of surface roughness in high speed end milling operation using
IAEME Publication
 
Turning parameters optimization for surface roughness by taguchi method
IAEME Publication
 
20120140503002
IAEME Publication
 
IRJET - Optimization of Machining Parameters in a Turning Operation of Flyash...
IRJET Journal
 
Optimization of process parameter for maximizing Material removal rate in tur...
IRJET Journal
 
Taguchi Method for Optimization of Cutting Parameters in Turning Operations
IDES Editor
 
OPTIMIZATION OF METAL REMOVAL RATE FOR SS316L IN DRY TURNING OPERATION USING ...
ijiert bestjournal
 
IRJET- Optimization of Cutting Parameters During Turning of AISI 1018 usi...
IRJET Journal
 
Experimental Investigation of Machining Parameters for Aluminum 6061 T6 Alloy
ijtsrd
 
Optimization of Turning Parameters Using Taguchi Method
IJMER
 
Prediction of output Responses in Milling of Casted Aluminum by using ANN
ijiert bestjournal
 
Improvement in surface quality with high production rate using taguchi method...
IAEME Publication
 
IMPROVEMENT IN SURFACE QUALITY WITH HIGH PRODUCTION RATE USING TAGUCHI METHOD...
IAEME Publication
 
Parametric analysis and multi objective optimization of cutting parameters in...
eSAT Journals
 
Parametric analysis and multi objective optimization of cutting parameters in...
eSAT Publishing House
 
Ie3115371544
IJERA Editor
 
Optimization of Turning Parameters Using Taguchi Method
IJMER
 
Application of taguchi method in the optimization of boring parameters 2
IAEME Publication
 
Application of taguchi method and anova in optimization of cutting
IAEME Publication
 
Ad

More from IRJET Journal (20)

PDF
Enhanced heart disease prediction using SKNDGR ensemble Machine Learning Model
IRJET Journal
 
PDF
Utilizing Biomedical Waste for Sustainable Brick Manufacturing: A Novel Appro...
IRJET Journal
 
PDF
Kiona – A Smart Society Automation Project
IRJET Journal
 
PDF
DESIGN AND DEVELOPMENT OF BATTERY THERMAL MANAGEMENT SYSTEM USING PHASE CHANG...
IRJET Journal
 
PDF
Invest in Innovation: Empowering Ideas through Blockchain Based Crowdfunding
IRJET Journal
 
PDF
SPACE WATCH YOUR REAL-TIME SPACE INFORMATION HUB
IRJET Journal
 
PDF
A Review on Influence of Fluid Viscous Damper on The Behaviour of Multi-store...
IRJET Journal
 
PDF
Wireless Arduino Control via Mobile: Eliminating the Need for a Dedicated Wir...
IRJET Journal
 
PDF
Explainable AI(XAI) using LIME and Disease Detection in Mango Leaf by Transfe...
IRJET Journal
 
PDF
BRAIN TUMOUR DETECTION AND CLASSIFICATION
IRJET Journal
 
PDF
The Project Manager as an ambassador of the contract. The case of NEC4 ECC co...
IRJET Journal
 
PDF
"Enhanced Heat Transfer Performance in Shell and Tube Heat Exchangers: A CFD ...
IRJET Journal
 
PDF
Advancements in CFD Analysis of Shell and Tube Heat Exchangers with Nanofluid...
IRJET Journal
 
PDF
Breast Cancer Detection using Computer Vision
IRJET Journal
 
PDF
Auto-Charging E-Vehicle with its battery Management.
IRJET Journal
 
PDF
Analysis of high energy charge particle in the Heliosphere
IRJET Journal
 
PDF
A Novel System for Recommending Agricultural Crops Using Machine Learning App...
IRJET Journal
 
PDF
Auto-Charging E-Vehicle with its battery Management.
IRJET Journal
 
PDF
Analysis of high energy charge particle in the Heliosphere
IRJET Journal
 
PDF
Wireless Arduino Control via Mobile: Eliminating the Need for a Dedicated Wir...
IRJET Journal
 
Enhanced heart disease prediction using SKNDGR ensemble Machine Learning Model
IRJET Journal
 
Utilizing Biomedical Waste for Sustainable Brick Manufacturing: A Novel Appro...
IRJET Journal
 
Kiona – A Smart Society Automation Project
IRJET Journal
 
DESIGN AND DEVELOPMENT OF BATTERY THERMAL MANAGEMENT SYSTEM USING PHASE CHANG...
IRJET Journal
 
Invest in Innovation: Empowering Ideas through Blockchain Based Crowdfunding
IRJET Journal
 
SPACE WATCH YOUR REAL-TIME SPACE INFORMATION HUB
IRJET Journal
 
A Review on Influence of Fluid Viscous Damper on The Behaviour of Multi-store...
IRJET Journal
 
Wireless Arduino Control via Mobile: Eliminating the Need for a Dedicated Wir...
IRJET Journal
 
Explainable AI(XAI) using LIME and Disease Detection in Mango Leaf by Transfe...
IRJET Journal
 
BRAIN TUMOUR DETECTION AND CLASSIFICATION
IRJET Journal
 
The Project Manager as an ambassador of the contract. The case of NEC4 ECC co...
IRJET Journal
 
"Enhanced Heat Transfer Performance in Shell and Tube Heat Exchangers: A CFD ...
IRJET Journal
 
Advancements in CFD Analysis of Shell and Tube Heat Exchangers with Nanofluid...
IRJET Journal
 
Breast Cancer Detection using Computer Vision
IRJET Journal
 
Auto-Charging E-Vehicle with its battery Management.
IRJET Journal
 
Analysis of high energy charge particle in the Heliosphere
IRJET Journal
 
A Novel System for Recommending Agricultural Crops Using Machine Learning App...
IRJET Journal
 
Auto-Charging E-Vehicle with its battery Management.
IRJET Journal
 
Analysis of high energy charge particle in the Heliosphere
IRJET Journal
 
Wireless Arduino Control via Mobile: Eliminating the Need for a Dedicated Wir...
IRJET Journal
 
Ad

Recently uploaded (20)

PPTX
265587293-NFPA 101 Life safety code-PPT-1.pptx
chandermwason
 
PPTX
MobileComputingMANET2023 MobileComputingMANET2023.pptx
masterfake98765
 
PPTX
ISO/IEC JTC 1/WG 9 (MAR) Convenor Report
Kurata Takeshi
 
PDF
MOBILE AND WEB BASED REMOTE BUSINESS MONITORING SYSTEM
ijait
 
PPTX
Thermal runway and thermal stability.pptx
godow93766
 
PDF
Book.pdf01_Intro.ppt algorithm for preperation stu used
archu26
 
PPTX
The Role of Information Technology in Environmental Protectio....pptx
nallamillisriram
 
PPTX
REINFORCEMENT AS CONSTRUCTION MATERIALS.pptx
mohaiminulhaquesami
 
PDF
monopile foundation seminar topic for civil engineering students
Ahina5
 
PPT
Oxygen Co2 Transport in the Lungs(Exchange og gases)
SUNDERLINSHIBUD
 
PPTX
Types of Bearing_Specifications_PPT.pptx
PranjulAgrahariAkash
 
PPTX
Innowell Capability B0425 - Commercial Buildings.pptx
regobertroza
 
PPT
inherently safer design for engineering.ppt
DhavalShah616893
 
PDF
BioSensors glucose monitoring, cholestrol
nabeehasahar1
 
PDF
Additional Information in midterm CPE024 (1).pdf
abolisojoy
 
PPTX
Hashing Introduction , hash functions and techniques
sailajam21
 
PDF
International Journal of Information Technology Convergence and services (IJI...
ijitcsjournal4
 
PPTX
Green Building & Energy Conservation ppt
Sagar Sarangi
 
PPTX
MPMC_Module-2 xxxxxxxxxxxxxxxxxxxxx.pptx
ShivanshVaidya5
 
PDF
POWER PLANT ENGINEERING (R17A0326).pdf..
haneefachosa123
 
265587293-NFPA 101 Life safety code-PPT-1.pptx
chandermwason
 
MobileComputingMANET2023 MobileComputingMANET2023.pptx
masterfake98765
 
ISO/IEC JTC 1/WG 9 (MAR) Convenor Report
Kurata Takeshi
 
MOBILE AND WEB BASED REMOTE BUSINESS MONITORING SYSTEM
ijait
 
Thermal runway and thermal stability.pptx
godow93766
 
Book.pdf01_Intro.ppt algorithm for preperation stu used
archu26
 
The Role of Information Technology in Environmental Protectio....pptx
nallamillisriram
 
REINFORCEMENT AS CONSTRUCTION MATERIALS.pptx
mohaiminulhaquesami
 
monopile foundation seminar topic for civil engineering students
Ahina5
 
Oxygen Co2 Transport in the Lungs(Exchange og gases)
SUNDERLINSHIBUD
 
Types of Bearing_Specifications_PPT.pptx
PranjulAgrahariAkash
 
Innowell Capability B0425 - Commercial Buildings.pptx
regobertroza
 
inherently safer design for engineering.ppt
DhavalShah616893
 
BioSensors glucose monitoring, cholestrol
nabeehasahar1
 
Additional Information in midterm CPE024 (1).pdf
abolisojoy
 
Hashing Introduction , hash functions and techniques
sailajam21
 
International Journal of Information Technology Convergence and services (IJI...
ijitcsjournal4
 
Green Building & Energy Conservation ppt
Sagar Sarangi
 
MPMC_Module-2 xxxxxxxxxxxxxxxxxxxxx.pptx
ShivanshVaidya5
 
POWER PLANT ENGINEERING (R17A0326).pdf..
haneefachosa123
 

IRJET- A Review on Optimization of Cutting Parameters in Machining using Taguchi Method

  • 1. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 06 Issue: 07 | July 2019 www.irjet.net p-ISSN: 2395-0072 © 2019, IRJET | Impact Factor value: 7.211 | ISO 9001:2008 Certified Journal | Page 1014 A REVIEW ON OPTIMIZATION OF CUTTING PARAMETERS IN MACHINING USING TAGUCHI METHOD Dukhit Kumar Chandel1, Dr. Prabhat Kumar Giri2 1M.E. (Production) Student, Shri Shankaracharya Technical Campus, Bhilai 2Professor, Department of Mechanical Engineering, Shri Shankaracharya Technical Campus, Bhilai ---------------------------------------------------------------------***---------------------------------------------------------------------- Abstract - CNC End milling is a unique adaption of the conventional milling process which uses an end mill tool for the machining process. CNC Vertical End Milling Machining is a widely accepted material removal process used to manufacture components with complicated shapes and profiles. During the End milling process, the material is removed by the end mill cutter. The effects of various parameters of end milling process like spindle speed, depth of cut, feed rate have been investigated to reveal their Impact on surface finish using Taguchi Methodology. Experimental plan is performed by a Standard Orthogonal Array. The graph of S- N Ratio indicates the optimal setting of the machining parameter which gives the optimum value of surface finish. The optimal set of process parameters has also beenpredicted to maximize the surface finish. Key Words: Taguchi method, signal to noise ratio, ANOVA, Optimization, cutting parameters. 1. INTRODUCTION Industries around the world constantly focus on the quality of the product. But, along with quality, cost of production and productivity is also a very importantfactor. Productivity can be interpreted in terms of material removal rate in the machining operation and quality represents satisfactory yield in terms of product characteristics as desired by the customers. Moreover, machining environment also plays a very important role. Industries have been trying to reduce the cost of production, so that they can survive the competition in the market. Forthispurpose, researcheshave been carried out to get optimal qualityatoptimal production cost. Some of the important factors that have been considered are (a) Cutting speed (b) Depth of cut (c) Feed rate. For measuring the quality surface finish has been considered as a parameter. To find the right combination of above parameters and to find the mostinfluential parameter Taguchi method and analysis of variance is used. The experiments are conducted by using Taguchi L9 orthogonal array as suggested by Taguchi. Signal-to-Noise (S/N) ratio and Analysis of Variance (ANOVA) is employed to analyse the effect of milling parameters on material removal rate. 1.1 End milling The cutter, called end mill, has a diameter less than the workpiece width. The end mill has helical cutting edges carried over onto the cylindrical cutter surface. End mills with flat ends (so called squire-end mills) are used to generate pockets, closed or end key slots, etc. End milling is the most common metalremovaloperationencountered.The end mill has edges in the sidesurface and the bottomsurface. The fundamental usage is that the end mill is rotated, and makes a plane of a material inthe right-and-leftdirectionora plane of a bottom side of the end mill. We can make various shapes of mechanical parts with the end mill. The edge of the end mill is very weak. In case beginning of cuttings, we have to take care so that the end mill may touch to a material as slowly as possible. It is widely used to matewithotherpartin die, aerospace, automotive, and machinery design as well as in manufacturingindustries.Thetoolchangeriscontrolledby the CNC program. Fig -1: End Milling Operation 1.2 Taguchi method Taguchi method is statistical method developed by Professor Genichi Taguchi of Nippon Telephones and Telegraph Company Japan for the production of robust products. According to Taguchi, total loss generated by a product to the society after shipped is the quality of the manufacturedproduct.Taguchihasusedexperimentaldesign as a tool to make products more robust to make them less sensitive to noise factors. Currently, Taguchi method is applied to many sectors like engineering, biotechnology, marketing and advertising. Taguchi developed a method based on orthogonal array experiments, which reduced
  • 2. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 06 Issue: 07 | July 2019 www.irjet.net p-ISSN: 2395-0072 © 2019, IRJET | Impact Factor value: 7.211 | ISO 9001:2008 Certified Journal | Page 1015 "variance" for the experiment with "optimum settings" of control parameters. Hence, the optimal results can be achieved by implementing the combination of Design of Experiments (DOE) with optimization ofcontrolparameters. Signal-to-noise (S/N) ratio and orthogonal array are two major tools used in robust design. Signal to noiseratio,which is log functions of desired output measures quality with emphasis on variation,andorthogonalarrays,provideasetof well-balanced experiments to accommodate many design factors at the same time. 1.3 Design of experiment (DOE) Design of experiments (DOE) or experimental design is the design of any information-gathering exercises where variation is present, whether under the full control of the experimenter or not. However, in statistics these terms are usually used for controlled experiments. Formal planned experiment is often used in evaluating physical objects, chemical formulation,structures,componentsandmaterials. Design of experiments (DOE) capabilitiesprovidesa method for simultaneously investigating the effects of multiple variables on an output variable (response). These experiments consist of a series of runs, or tests, in which purposeful changes are made to input variables or factors, and data are collected at each run. Quality professionals use DOE to identify the process conditions and product components that influence quality and then determine the input variable (factor) settings that maximize results. 2. Literature review V V K Lakshmi and Dr. K Venkata Subbaiah [1] conducted end milling operation on EN24 grade steel withahardnessof 260 BHN using solid coated carbide tool. Input variables consist of cutting speed, feed rate and depth of cut. The output variables are surface roughnessandMaterialremoval rates. Average surface roughness were modelled and optimized by using RSM method. Their results showed that feed rate is the most affecting parameter on surface roughness followed by cutting speed. However, depth of cut appears to have very little effect over roughness value. B Vijaya Krishna Teja, N. Naresh, K. Rajasekhar [2] conducted milling on AISI 304 stainless steel using grey taguchi method. The surfaceroughnessandmaterialremoval rate were the responses. The proposed Grey based Taguchi method is constructive in optimizing the multiresponses. It was identified that cutting speed (56.90%) influences more on milling of AISI 304 stainless steel followed by depth of cut (22.43%) and feed rate (8.58%). Mohammed T. Hayajneh, Montasser S. Tahat, Joachim Bluhm [3] used ANOVA to optimize cutting parameters during end milling of aluminium. The effect of spindle speed, feed rate, depth of cut on surface roughness of aluminium samples was studied. They found that feed rate is most dominant influencing parameter which affects the surface roughness. Nikhil Aggarwal and Sushil Kumar Sharma [4] used Taguchi based grey relational analysistooptimizemachining parameters in end milling of AISI H11 Steel Alloy.Theyfound that cutting speed is the only significant machining parameter for surface roughness. The increase in cutting speed produces better surface finish. Depth of cut has the least effect on surface roughness and material removal rate. Dimple Rani, Dinesh Kumar [5] conducted end milling operation on AISI D2 steel with carbide tool by varying feed, speed and depth of cut and the surface roughness was measured using Surface Roughness Tester. They found that, for achieving good surface finishontheD2workpiece,higher cutting speed, lower feed and lower depth of cut are preferred. As speed increases surface roughness decreases and feed increases surface roughness also increases. Bhargav V. Patel, Prof. P. J. Panchal [6] investigated optimal machining parameters and their contribution on producing better Surface quality and higher Productivity. They carried out end milling on AISI 316 steel. It is observed that the effect of No of flutes and cutting speed are most significant factors varying linearly with the response. Shivam Goyal et al [7] investigated experimental study of turning operation and optimization of MRR and surface roughness using Taguchi method. In this research work turning operation is performed on AISI 1020 mild steel. The experiments were performed by taking Cutting Speed, Feed Rate & Depth of cut as process parameters and got the optimized value of MRR & SR. An L9 orthogonal array, the S/N ratio are employed to the study the performance characteristics in the turning usingcarbideinsertwithanose radius of 0.8mm. Manoj Kumar,MahenderSinghKaswan[8]usedTaguchi’s Parameter Design methodology for Parametric Study of D2 Steel on End milling process. They triedtodeterminethebest cutting parameterleadingtomaximummaterialremovalrate and minimumsurface roughnessinmachiningD2(DieSteel). They found that high cutting speed, low feed rate, low depth of cut is required for achieving high surface finish. For high material removal rate maximum speed of cut, maximum depth of cut, maximum feed rate is required. Sourabh Kuamr Soni, Dr S.K.Moulick [9] carried out end milling process on Inconel 718 by Taguchi methodology. Three machining process parameter are chosen cutting speed, feed rate and depth of cut. The analysis prepare was created using by Taguchi’s L9 Orthogonal Array. They found cutting speed has greater effect on surface roughness than feed rate and depth of cut. Hemantsinh Pratapsinh Rao, Prof. Rajat Dave, Prof. Riddish Thakore [10] used taguchi method for carrying out end milling operation on AL 6061. From experimental
  • 3. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 06 Issue: 07 | July 2019 www.irjet.net p-ISSN: 2395-0072 © 2019, IRJET | Impact Factor value: 7.211 | ISO 9001:2008 Certified Journal | Page 1016 analysis they found that cutting speed has greater effect on surface roughness and material removal rate. N .V. Malvade, S. R. Nipanikar [11] performed end milling on OHNS steel using HSS tool. They found that the effect of depth of cut on MRR is maximum while cutting speed has least effect. For surface roughness, cutting speed has maximum effect. Akhilesh Chaudhary, Vinit Saluja [12] used taguchi method to perform end milling on AL6082. They observed that speed has more influence on surface roughness. Table -1: Summary of review papers SNo. Author’s Name Input Parameter Output Parameter Most Significant 1 V V K Lakshmi et al Cutting, Speed, Feed rate , DOC Surface roughness, MRR Feed Rate 2 B Vijaya Krishna Teja et al Cutting, Speed, Feed rate , DOC Surface Roughness, MRR Cutting speed 3 Mohammed T. Hayajneh et al Cutting, Speed, Feed rate , DOC Surface Roughness Feed rate 4 Nikhil Agarwal et al Cutting speed, Feed rate, DOC Surface roughness Cutting speed 5 Dimple Rani et al Cutting speed, Feed rate, DOC Surface roughness, and MRR Cutting speed 6 Bhargav V. Patel et al Cutting speed, Feed rate, DOC Surface roughness No. of flutes, cutting speed 7 Shivam Goyal et al Cutting Speed, Feed rate, DOC MRR & surface roughness Depth of cut & cutting speed 8 Manoj Kumar et al Cutting speed, Feed rate, DOC MRR, surface roughness, Cutting speed 9 Sourabh Kumar Soni et al Cutting Speed, Feed rate, DOC Surface finish Cutting speed 10 Hemantsinh Pratapsinh Rao et al Cutting Speed, Feed rate, DOC Surface roughness, MRR Cutting speed 11 N. V. Malvade et al Cutting speed, Feed rate, DOC Surface roughness, MRR Cutting speed, DOC 12 Akhilesh Chaudhary et al Cutting speed, Feed rate, DOC Surface roughness Cutting speed 3. CONCLUSION After minutely going through the above discussed literatures, it is noticed that most of the researchers have considered cutting speed, depth of cut, feed rate as the input parameters. Most of them have not considered environment temperature, coolant used and other factors during their study. Majority of them came to the conclusion that cutting speed has greater influence on the surface finish. For material removal rate depth of cut is most influencing parameter. However, it has also been observed that most significant parameter changes with the change in material under consideration. ACKNOWLEDGEMENT It is joyful occasion for me to publish this paper. I would like to express my deep sense of gratitude to my guide, teachers and friends for giving valuable time, precious guidance which helped me in completion of paper successfully. REFERENCES [1] V V K Lakshmi, Dr K Venkata Subbaiah “Modelling and Optimization of Process Parameters during End Milling of Hardened Steel” International Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com Vol. 2, Issue 2, Mar-Apr 2012, Page 674- 679. [2] B Vijaya Krishna Teja, N. Naresh, K. Rajasekhar “Multi- Response Optimization of Milling Parameters on AISI 304 Stainless Steel using Grey-Taguchi Method” International Journal of Engineering Research & technology (IJERT), ISSN: 2278-0181, Volume2,Issue8, August – 2013, Page 2235-2241. [3] Mohammed T. Hayajneh, Montasser S. Tahat, Joachim Bluhm “A Study of the Effects of Machining Parameters on the Surface Roughness in the End-Milling Process” Jordan Journal of Mechanical andIndustrial Engineering JJMIE ISSN 1995-6665 Volume 1, Issue 1, Sep. 2007 Pages 1 – 5. [4] Nikhil Aggarwal and Sushil Kumar Sharma “Optimization of MachiningParametersinEndMillingof AISI H11 Steel Alloy by Taguchi based Grey Relational Analysis” International Journal of Current Engineering and Technology E-ISSN 2277 – 4106, P-ISSN 2347 – 5161, Volume 4, Issue 4, Aug 2014, Page 2797-2803. [5] Dimple Rani, Dinesh Kumar and ANOVA “Optimization and Modelling of End Milling Process Parameters by Using Taguchi Method” International Journal for
  • 4. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 06 Issue: 07 | July 2019 www.irjet.net p-ISSN: 2395-0072 © 2019, IRJET | Impact Factor value: 7.211 | ISO 9001:2008 Certified Journal | Page 1017 Research in Applied Science & Engineering Technology (IJRASET) ISSN: 2321-9653,Volume2,Issue10, October 2014, Page 240-247. [6] Bhargav V. Patel, Prof. P. J. Panchal “Effect Of Process Parameters On Surface Roughness And Material Removal Rate In Cnc End Milling Process” International Journal of Mechanical and Industrial Technology ISSN 2348-7593, Volume 7, Issue 1, April 2019 - September 2019, Page 14-35. [7] Shivam Goyal, Varanpal Singh Kandra, Prakhar Yadav “Experimental Study Of Turning Operation And Optimization Of MRR And Surface Roughness Using Taguchi Method” International Journal of Innovative Research in Advanced Engineering, Volume 3, 2016, Page 44-50. [8] Manoj Kumar, MahenderSinghKaswan “Optimizationof Surface Roughness & MRR in End Milling On D2 Steel Using Taguchi Method” International Journal of Technical Research (IJTR), ISSN 2278-5787, Volume 5, Issue 1, Mar-Apr 2016, Page 4-9. [9] Sourabh Kuamr Soni, Dr S.K.Moulick “Optimization of Milling Process Parameter for Surface Roughness of Inconel 718 By Using Taguchi Method” IJSRD - International Journal for Scientific Research & Development ISSN: 2321-0613, Volume 2, Issue 11, 2015, Page 57-63. [10] Hemantsinh Pratapsinh Rao, Prof. Rajat Dave, Prof. Riddish Thakore “Optimization of CNC End Milling Process Parameters for Aluminium 6061 Alloy using Carbide Tool Material by Design of Experiments” International Journal for Innovative ResearchinScience & Technology (IJIRST), ISSN: 2349-6010, Volume 3, Issue 11, April 2017, Page 84-90. [11] N .V. Malvade, S. R. Nipanikar “Optimization Of Cutting Parameters Of End Milling On Vmc Using Taguchi Method” Journal of Engineering Research and Studies, ISSN 0976-7916, Volume 5, Issue 2, April-June, 2014, Page 14-17. [12] Akhilesh Chaudhary, Vinit Saluja “Optimization Of Machining Parameters Affecting Surface Roughness Of Al6082 In Dry End Milling Operation On Vmc” International Research Journal of Engineering and Technology (IRJET), ISSN 2395-0056 ,Volume4,Issue8, Aug -2017, Page 82-89.