SlideShare une entreprise Scribd logo
1  sur  8
APPLICATION
         OF
    MCDM METHOD
 FOR OPTIMIZATION OF
SPECIFICATION OF WHEEL
          IN
  GRINDING PROCESS
Abstract
The grinding process, which in the present scenario is practiced in a large and
diverse area of manufacturing and tool making is used to produce a high surface
finish with a close tolerance and for machining hard materials. The process is a
variation of polishing and uses abrasive materials held together by an adhesive
generally in form of GRINDING WHEEL Almost any material can be ground,
aluminium, steel, ceramics, even diamond or glass. Grinding is used to form
countless types of products such as automobile engines, sharp edges on knives,
ball bearing and drills etc

The grinding process is under continuous improvement. Research at universities
and in industry means that the science of grinding is constantly advancing
resulting in increased production, saved revenues and higher quality products
for the consumers. In grinding of hard and brittle materials such as advanced
ceramics or hard metal, process behavior and work result are closely connected
with material removal mechanisms. Material removal mechanisms are
determined by complex interactions between material properties, the mechanical
and thermal loads acting on work piece, geometry of the grits, the kinematics of
grit engagements and other specifications of the grinding. Experimental
investigations of surface grinding processes show that material removal
mechanisms are also influenced by dynamic conditions in the contact zone.
These dynamic conditions, that are not chatter vibrations, can have both a
positive and negative influence on surface quality, process forces and wear of
the grinding wheel. For a given machine tool and work piece the dynamic
contact zone conditions and specifications of wheel can be optimized by
improvement in the grinding wheel. For analyzing the dynamic contact zone
conditions based on the behavior of the grinding wheel and its specification
various methods can be used. By means of these analyses the specification of
grinding wheels can be adapted to meet the requirements of a determined
grinding process with regard to tool wear, surface roughness of the work piece
and process forces.
An Intelligent

             Multi-Criteria Decision Making
In engineering design and manufacturing, conflicting disciplines and
technologies are always involved in the design process. Multi-Criteria Decision
Making (MCDM) methods can help Decision Makers to effectively deal with
such situation and make wise design decisions to produce an optimized design.
There are a variety of existing MCDM methods, thus the selection of the most
appropriate methods is critical since the use of inappropriate methods is often
the cause of misleading design decisions. However, the selection of MCDM
methods itself is a complicated MCDM problem that needs to be prudently
conducted. In this project we will aim at proposing a hybrid MCDM method to
select the most suitable MCDM method for the problem under consideration.
Relative weights are assigned to each evaluation criterion to represent the
decision maker’s preference information. The MCDM method selection
approach, its implemented and an intelligent knowledge based system will be
developed, consisting of a MCDM library storing the widely used decision
making methods and a knowledge base providing the information required for
the method selection process. The optimization of specification of wheel
problem using the MCDM method will be conducted as a proof of
implementation to demonstrate the functionality and effectiveness of the
intelligent decision support system as well as discovering an option for the
decision maker’s to select an optimized grinding wheel specification to improve
the results of grinding operation that will lead to increased production, saved
revenues and higher quality products for the consumers.
LITERATURE REVIEW
  "Multi-Criteria Decision Making (MCDM) is the study of methods and
procedures by which concerns about multiple conflicting criteria can be
formally incorporated into the management planning process ", as defined by the
International Society on Multiple Criteria Decision Making
   Multi-Criteria Decision Making (MCDM) is a process that allows one to
make decisions in the presence of multiple, potentially conflicting criteria.
MCDM can be divided into two categories: Multi-Attribute Decision Making
(MADM), and Multi-Objective Decision Making (MODM). MADM involves
the selection of the “best” alternative from pre-specified alternatives described
in terms of multiple attributes; MODM involves the design of alternatives
which optimize the multiple objectives of Decision Maker. Although MCDM as
a discipline only has a relatively short history of about 40 years, over 70
MCDM techniques have been developed for facilitating the decision making
process.
   Among these developed MCDM methods, different methods have different
underlying assumptions, information requirements, analysis models, and
decision rules that are designed for solving a certain class of decision making
problems. This implies that it is critical to select the most appropriate method to
solve the problem under consideration since the use of unsuitable method
always leads to misleading design decisions. Consequently, bad design
decisions will result in big loss to the society, such as property damage or
personal injury. However, it can be seen that the selection of MCDM methods
itself is a complicated MCDM problem and needs to be prudently performed.
   The Decision Support Systems constitute a class of computer-based
information systems which use data and MCDM models to organize
information for facilitating the decision making process. The Intelligent
Decision Support Systems are interactive computer-based systems which use
data, MCDM models, and artificial intelligence techniques for supporting
decision making in making decisions for the complex problems. The IDSS is
capable of providing decision making with effective mechanisms to better
understand the decision making problem and the implications of their decision
behaviors by allowing them to interactively exchange information with the
systems.
Project Planning

   To effectively select the most appropriate MCDM method for the
optimization of specification of wheel, a systematic framework is proposed in
this study. The proposed approach consists of eight steps: define the problem,
define the evaluation criteria, initial screen, define the preferences on evaluation
criteria, define the MCDM method for selection, evaluate the MCDM methods,
choose the most suitable method, and conduct sensitivity analysis.
Step 1: Define the problem
   The characteristics of the decision making problem under consideration are
addressed in the problem definition step, such as identifying the number of
alternatives, attributes, and constraints etc.. The available information about the
decision making problem is the basis on which the most appropriate MCDM
techniques will be evaluated and utilized to solve the problem.

Step 2: Define the evaluation criteria
   The proper determination of the applicable evaluation criteria is important
because they have great influence on the outcome of the MCDM method
selection process. However, simply using every criterion in the selection
process is not the best approach because the more criteria used, the more
information is required, which will result in higher computational cost. In this
study, the characteristics of the MCDM methods will be identified by the
relevant evaluation criteria in the form of a questionnaire. 10 questions are
defined to capture the advantages, disadvantages, applicability, computational
complexity etc. of each MCDM method, as shown in the following. The defined
evaluation criteria will be used as the attributes of a MCDM formulation and as
the input data of decision matrix for method selection.
1) Is the method able to handle MADM, MODM, or MCDM problem?
2) Does the method evaluate the feasibility of the alternatives?
3) Is the method able to capture uncertainties existing in the problem?
4) What input data are required by the method?
5) What preference information does the method use?
6) What metric does the method use to rank the alternatives?
7) Can the method deal changing alternatives or requirements?
8) Does the method handle qualitative or quantitative data?
9) Does the method deal with discrete or continuous data?
10) Can the method handle the problem with hierarchy structure of attributes?
Step 3: Initial screen
   In the initial screen step, the dominated and infeasible MCDM methods are
eliminated by dominance and conjunctive. An alternative is dominated if there
is another alternative which excels it in one or more attributes and equals it in
the remainder. The dominated MCDM methods are eliminated by the
dominance method, which does not require any assumption or any
transformation of attributes. The sieve of dominance takes the following
procedures. Compare the first two alternatives and if one is dominated by the
other, discard the dominated one; then compare the un-discarded alternative
with the third alternative and discard any dominated alternative; and then
introduce the forth alternative and repeat this process until the last alternative
has been compared.
   A set of non-dominated alternatives may possess unacceptable or infeasible
attribute values. The conjunctive method is employed to remove the
unacceptable alternatives, in which the decision maker set up the cutoff values
he/she will accept for each of the attributes. Any alternative which has an
attribute value worse than the cutoff values will be eliminated.

Step 4: Define the preferences on evaluation criteria
   Usually, after the initial screen step is completed, multiple MCDM methods
are expected to remain, otherwise we can directly choose the only one left to
solve the decision making problem.
   With the 10 evaluation criteria defined in the step 2, the decision maker’s
preference information on the evaluation criteria is defined. This will reflect
which criterion is more important to the decision maker when he/she makes
decisions on method selection.

Step 5: Define the MCDM method for selection
  In existing commonly used MCDM methods are identified and stored in the
method base as candidate methods for selection. The Simple Additive
Weighting (SAW) method is chosen to select the most suitable MCDM methods
considering its simplicity and general acceptability. Basically, the SAW method
provides a weighted summation of the attributes of each method, and the one
with the highest score is considered as the most appropriate method. Though
SAW is used in this study, it is worth to noting that other MCDM methods can
be employed to handle the same MCDM methods selection problem.
Step 6: Evaluate the MCDM methods
  Mathematical formulation of Appropriateness Index (AI) is used to rank the
MCDM methods. The method with the highest AI will be recommended as the
most appropriate method to solve the problem under consideration.

Step 7: Choose the most suitable method for optimization of specification of
GrindingWheel
The MCDM method which has the highest AI will be selected as the most
appropriate method to solve the given decision making problem. If the DM is
satisfied with the final results, he/she can implement the solution and move
forward. Otherwise, he/she can go back to step 2 and modify the input data or
preference information and repeat the selection process until a satisfied outcome
is obtained. be displayed to provide guidance to DM how to get the final
solution by using the selected method. In addition, the detailed mathematical
calculation steps are also built in the MATLAB-based DSS, which highly
facilitates the decision making process. Thus, the DM can input their data
according to the instruction, and get the final results by clicking one
corresponding button.

Step 8: Conduct analysis
   In this section, selection of an optimized specification of grinding wheel
problem is conducted to improve the capabilities of the grinding operation
products by proposed MCDM decision support system. It is observed that
different decision maker often have different preference information on the
evaluation criteria and different answers to the 10 questions, thus, analysis
should be performed on the MCDM method selection algorithm in order to
analyze its robustness with respect to parameter variations, such as the variation
of decision maker’s preference information and the input data.
   If the decision maker is satisfied with the final results, he/she can implement
the solution and move forward. Otherwise, he/she can go back to step 2 and
modify the input data or preference information and repeat the selection process
until a satisfied outcome is obtained.
   In this implementation, emphasis is put on explaining the holistic process of
the intelligent MCDM decision support system. Thus, the step by step problem
solving process is explained and discussed for this decision making problem.
CONCLUSION

   In this project, a systematic MCDM selection process is developed and applied to
optimize the specification of grinding wheel. The selection of the most appropriate
MCDM methods is formulated as a complicated MCDM problem and a hybrid
framework is proposed to deal with this problem and the method evaluation criteria
for selecting the most appropriate method are defined.
   Study shows that the proposed decision support system can effectively help
decision maker with selecting the most appropriate method and guide the decision
maker to get the final decision for the problem.
   It is worth noting that there is no absolute “best” MCDM method since the MCDM
method selection is problem specified. The selection of the most suitable MCDM
method depends on the problem under consideration. In addition, new methods may
emerge during the process of MCDM methods selection as we get more insights on
the characteristics of the methods. For example, by combining the characteristics of
two or more decision making methods, decision maker may get one hybrid method
which is more effective for solving the given problem. This project is a future work
that needs further investigation in the method selection process.

Contenu connexe

Tendances

Multi criteria decision support system on mobile phone selection with ahp and...
Multi criteria decision support system on mobile phone selection with ahp and...Multi criteria decision support system on mobile phone selection with ahp and...
Multi criteria decision support system on mobile phone selection with ahp and...
Reza Ramezani
 
Analytic Hierarchy Process AHP
Analytic Hierarchy Process AHPAnalytic Hierarchy Process AHP
Analytic Hierarchy Process AHP
adcom2015
 

Tendances (20)

multi criteria decision making
multi criteria decision makingmulti criteria decision making
multi criteria decision making
 
Multi criteria decision support system on mobile phone selection with ahp and...
Multi criteria decision support system on mobile phone selection with ahp and...Multi criteria decision support system on mobile phone selection with ahp and...
Multi criteria decision support system on mobile phone selection with ahp and...
 
Multi criteria decision making
Multi criteria decision makingMulti criteria decision making
Multi criteria decision making
 
MCDM PPT.pptx
MCDM PPT.pptxMCDM PPT.pptx
MCDM PPT.pptx
 
Apply AHP in decision making
Apply AHP in decision makingApply AHP in decision making
Apply AHP in decision making
 
Genetic Algorithm
Genetic AlgorithmGenetic Algorithm
Genetic Algorithm
 
Analytic hierarchy process (AHP)
Analytic hierarchy process (AHP)Analytic hierarchy process (AHP)
Analytic hierarchy process (AHP)
 
Analytic Hierarchy Process AHP
Analytic Hierarchy Process AHPAnalytic Hierarchy Process AHP
Analytic Hierarchy Process AHP
 
Dynamic Programming
Dynamic ProgrammingDynamic Programming
Dynamic Programming
 
Decision Making Using The Analytic Hierarchy Process
Decision Making Using The Analytic Hierarchy ProcessDecision Making Using The Analytic Hierarchy Process
Decision Making Using The Analytic Hierarchy Process
 
Genetic algorithm
Genetic algorithmGenetic algorithm
Genetic algorithm
 
ELECTRE Decision Making Method
ELECTRE  Decision Making MethodELECTRE  Decision Making Method
ELECTRE Decision Making Method
 
Genetic algorithm
Genetic algorithm Genetic algorithm
Genetic algorithm
 
Decision Making Using the Analytic Hierarchy Process (AHP); A Step by Step A...
Decision Making Using the Analytic Hierarchy Process (AHP);  A Step by Step A...Decision Making Using the Analytic Hierarchy Process (AHP);  A Step by Step A...
Decision Making Using the Analytic Hierarchy Process (AHP); A Step by Step A...
 
Introduction to genetic programming
Introduction to genetic programmingIntroduction to genetic programming
Introduction to genetic programming
 
20060411 Analytic Hierarchy Process (AHP)
20060411 Analytic Hierarchy Process (AHP)20060411 Analytic Hierarchy Process (AHP)
20060411 Analytic Hierarchy Process (AHP)
 
AI - Local Search - Hill Climbing
AI - Local Search - Hill ClimbingAI - Local Search - Hill Climbing
AI - Local Search - Hill Climbing
 
Weighted Sum Method: An Introduction
Weighted Sum Method: An IntroductionWeighted Sum Method: An Introduction
Weighted Sum Method: An Introduction
 
Travelling salesman problem
Travelling salesman problemTravelling salesman problem
Travelling salesman problem
 
GENETIC ALGORITHM
GENETIC ALGORITHMGENETIC ALGORITHM
GENETIC ALGORITHM
 

En vedette

BitNorth - Recap and survey results
BitNorth - Recap and survey resultsBitNorth - Recap and survey results
BitNorth - Recap and survey results
heri
 
Writing A Research Paper In 10 Easy Steps
Writing A Research Paper In 10 Easy StepsWriting A Research Paper In 10 Easy Steps
Writing A Research Paper In 10 Easy Steps
lauren
 

En vedette (20)

MCDM Introduction 08-01
MCDM Introduction 08-01MCDM Introduction 08-01
MCDM Introduction 08-01
 
Highway Engineering topics
Highway Engineering topicsHighway Engineering topics
Highway Engineering topics
 
GIS and Decision Making, Literature Review
GIS and Decision Making, Literature ReviewGIS and Decision Making, Literature Review
GIS and Decision Making, Literature Review
 
1. classification of urban roads 28 jun
1. classification of urban roads 28 jun1. classification of urban roads 28 jun
1. classification of urban roads 28 jun
 
Roads & Pavements
Roads & PavementsRoads & Pavements
Roads & Pavements
 
Types of roads
Types of roadsTypes of roads
Types of roads
 
Present10min 08 01 26
Present10min 08 01 26Present10min 08 01 26
Present10min 08 01 26
 
BitNorth - Recap and survey results
BitNorth - Recap and survey resultsBitNorth - Recap and survey results
BitNorth - Recap and survey results
 
Multiple criteria decision analysis using
Multiple criteria decision analysis usingMultiple criteria decision analysis using
Multiple criteria decision analysis using
 
fuzzy multi-criteria-decision_making_theory_and_applications
fuzzy multi-criteria-decision_making_theory_and_applicationsfuzzy multi-criteria-decision_making_theory_and_applications
fuzzy multi-criteria-decision_making_theory_and_applications
 
Practical Considerations In Teaching Convergent Journalism: The MCDM
Practical Considerations In Teaching Convergent Journalism: The MCDMPractical Considerations In Teaching Convergent Journalism: The MCDM
Practical Considerations In Teaching Convergent Journalism: The MCDM
 
Analytic network process
Analytic network processAnalytic network process
Analytic network process
 
How to present a paper
How to present a paperHow to present a paper
How to present a paper
 
How to-present-research-paper
How to-present-research-paperHow to-present-research-paper
How to-present-research-paper
 
Techno Economic Analysis
Techno Economic AnalysisTechno Economic Analysis
Techno Economic Analysis
 
Analytic Network Process
Analytic Network ProcessAnalytic Network Process
Analytic Network Process
 
Techno economics
Techno economicsTechno economics
Techno economics
 
Writing A Research Paper In 10 Easy Steps
Writing A Research Paper In 10 Easy StepsWriting A Research Paper In 10 Easy Steps
Writing A Research Paper In 10 Easy Steps
 
Operational reseach ppt
Operational reseach pptOperational reseach ppt
Operational reseach ppt
 
DECISION MAKING POWERPOINT
DECISION MAKING POWERPOINT DECISION MAKING POWERPOINT
DECISION MAKING POWERPOINT
 

Similaire à mcdm method

Idss for evaluating & selecting is project hepu deng santoso
Idss for evaluating & selecting is project  hepu deng santosoIdss for evaluating & selecting is project  hepu deng santoso
Idss for evaluating & selecting is project hepu deng santoso
Anita Carollin
 
Integrated bio-search approaches with multi-objective algorithms for optimiza...
Integrated bio-search approaches with multi-objective algorithms for optimiza...Integrated bio-search approaches with multi-objective algorithms for optimiza...
Integrated bio-search approaches with multi-objective algorithms for optimiza...
TELKOMNIKA JOURNAL
 

Similaire à mcdm method (20)

C04521525
C04521525C04521525
C04521525
 
A Survey On Multi Criteria Decision Making Methods And Its Applications
A Survey On Multi Criteria Decision Making Methods And Its ApplicationsA Survey On Multi Criteria Decision Making Methods And Its Applications
A Survey On Multi Criteria Decision Making Methods And Its Applications
 
Selection of Equipment by Using Saw and Vikor Methods
Selection of Equipment by Using Saw and Vikor Methods Selection of Equipment by Using Saw and Vikor Methods
Selection of Equipment by Using Saw and Vikor Methods
 
SELECTION OF BEST ALTERNATIVE IN MANUFACTURING AND SERVICE SECTOR USING MULTI...
SELECTION OF BEST ALTERNATIVE IN MANUFACTURING AND SERVICE SECTOR USING MULTI...SELECTION OF BEST ALTERNATIVE IN MANUFACTURING AND SERVICE SECTOR USING MULTI...
SELECTION OF BEST ALTERNATIVE IN MANUFACTURING AND SERVICE SECTOR USING MULTI...
 
Selection of Best Alternative in Manufacturing and Service Sector Using Multi...
Selection of Best Alternative in Manufacturing and Service Sector Using Multi...Selection of Best Alternative in Manufacturing and Service Sector Using Multi...
Selection of Best Alternative in Manufacturing and Service Sector Using Multi...
 
A.hybrid.recommendation.approach.for.a.tourism.system
A.hybrid.recommendation.approach.for.a.tourism.systemA.hybrid.recommendation.approach.for.a.tourism.system
A.hybrid.recommendation.approach.for.a.tourism.system
 
Idss for evaluating & selecting is project hepu deng santoso
Idss for evaluating & selecting is project  hepu deng santosoIdss for evaluating & selecting is project  hepu deng santoso
Idss for evaluating & selecting is project hepu deng santoso
 
OPTIMAL ALTERNATIVE SELECTION USING MOORA IN INDUSTRIAL SECTOR - A REVIEW
OPTIMAL ALTERNATIVE SELECTION USING MOORA IN INDUSTRIAL SECTOR - A REVIEWOPTIMAL ALTERNATIVE SELECTION USING MOORA IN INDUSTRIAL SECTOR - A REVIEW
OPTIMAL ALTERNATIVE SELECTION USING MOORA IN INDUSTRIAL SECTOR - A REVIEW
 
Optimal Alternative Selection Using MOORA in Industrial Sector - A
Optimal Alternative Selection Using MOORA in Industrial Sector - A  Optimal Alternative Selection Using MOORA in Industrial Sector - A
Optimal Alternative Selection Using MOORA in Industrial Sector - A
 
Recommender-technology-ReColl08
Recommender-technology-ReColl08Recommender-technology-ReColl08
Recommender-technology-ReColl08
 
Multiple Criteria for Decision
Multiple Criteria for DecisionMultiple Criteria for Decision
Multiple Criteria for Decision
 
Application of Analytic Hierarchy Process for the Selection of Best Tablet Model
Application of Analytic Hierarchy Process for the Selection of Best Tablet ModelApplication of Analytic Hierarchy Process for the Selection of Best Tablet Model
Application of Analytic Hierarchy Process for the Selection of Best Tablet Model
 
MIS Wk-10.ppt
MIS Wk-10.pptMIS Wk-10.ppt
MIS Wk-10.ppt
 
Technique for Order Preference by Similarity to Ideal Solution as Decision Su...
Technique for Order Preference by Similarity to Ideal Solution as Decision Su...Technique for Order Preference by Similarity to Ideal Solution as Decision Su...
Technique for Order Preference by Similarity to Ideal Solution as Decision Su...
 
IRJET- Decision Making in Construction Management using AHP and Expert Choice...
IRJET- Decision Making in Construction Management using AHP and Expert Choice...IRJET- Decision Making in Construction Management using AHP and Expert Choice...
IRJET- Decision Making in Construction Management using AHP and Expert Choice...
 
Integrated bio-search approaches with multi-objective algorithms for optimiza...
Integrated bio-search approaches with multi-objective algorithms for optimiza...Integrated bio-search approaches with multi-objective algorithms for optimiza...
Integrated bio-search approaches with multi-objective algorithms for optimiza...
 
IM426 3A G5.ppt
IM426 3A G5.pptIM426 3A G5.ppt
IM426 3A G5.ppt
 
Extending the McCumber Cube to Model Software System Maintenance Tasks
Extending the McCumber Cube to Model Software System Maintenance TasksExtending the McCumber Cube to Model Software System Maintenance Tasks
Extending the McCumber Cube to Model Software System Maintenance Tasks
 
Chapter one digital manufacturing.pptx
Chapter one digital manufacturing.pptxChapter one digital manufacturing.pptx
Chapter one digital manufacturing.pptx
 
CP.docx
CP.docxCP.docx
CP.docx
 

Dernier

➥🔝 7737669865 🔝▻ Asansol Call-girls in Women Seeking Men 🔝Asansol🔝 Escorts...
➥🔝 7737669865 🔝▻ Asansol Call-girls in Women Seeking Men  🔝Asansol🔝   Escorts...➥🔝 7737669865 🔝▻ Asansol Call-girls in Women Seeking Men  🔝Asansol🔝   Escorts...
➥🔝 7737669865 🔝▻ Asansol Call-girls in Women Seeking Men 🔝Asansol🔝 Escorts...
amitlee9823
 
Top Rated Call Girls South Mumbai : 9920725232 We offer Beautiful and sexy Ca...
Top Rated Call Girls South Mumbai : 9920725232 We offer Beautiful and sexy Ca...Top Rated Call Girls South Mumbai : 9920725232 We offer Beautiful and sexy Ca...
Top Rated Call Girls South Mumbai : 9920725232 We offer Beautiful and sexy Ca...
amitlee9823
 
Madiwala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore Es...
Madiwala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore Es...Madiwala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore Es...
Madiwala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore Es...
amitlee9823
 
一比一原版(PU学位证书)普渡大学毕业证学历认证加急办理
一比一原版(PU学位证书)普渡大学毕业证学历认证加急办理一比一原版(PU学位证书)普渡大学毕业证学历认证加急办理
一比一原版(PU学位证书)普渡大学毕业证学历认证加急办理
ezgenuh
 
Vip Mumbai Call Girls Mumbai Call On 9920725232 With Body to body massage wit...
Vip Mumbai Call Girls Mumbai Call On 9920725232 With Body to body massage wit...Vip Mumbai Call Girls Mumbai Call On 9920725232 With Body to body massage wit...
Vip Mumbai Call Girls Mumbai Call On 9920725232 With Body to body massage wit...
amitlee9823
 
➥🔝 7737669865 🔝▻ pathankot Call-girls in Women Seeking Men 🔝pathankot🔝 Esc...
➥🔝 7737669865 🔝▻ pathankot Call-girls in Women Seeking Men  🔝pathankot🔝   Esc...➥🔝 7737669865 🔝▻ pathankot Call-girls in Women Seeking Men  🔝pathankot🔝   Esc...
➥🔝 7737669865 🔝▻ pathankot Call-girls in Women Seeking Men 🔝pathankot🔝 Esc...
nirzagarg
 
Vip Mumbai Call Girls Colaba Call On 9920725232 With Body to body massage wit...
Vip Mumbai Call Girls Colaba Call On 9920725232 With Body to body massage wit...Vip Mumbai Call Girls Colaba Call On 9920725232 With Body to body massage wit...
Vip Mumbai Call Girls Colaba Call On 9920725232 With Body to body massage wit...
amitlee9823
 
Call Girls Hongasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Hongasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Hongasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Hongasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
amitlee9823
 
Call Girls In Kotla Mubarakpur Delhi ❤️8448577510 ⊹Best Escorts Service In 24...
Call Girls In Kotla Mubarakpur Delhi ❤️8448577510 ⊹Best Escorts Service In 24...Call Girls In Kotla Mubarakpur Delhi ❤️8448577510 ⊹Best Escorts Service In 24...
Call Girls In Kotla Mubarakpur Delhi ❤️8448577510 ⊹Best Escorts Service In 24...
lizamodels9
 
Bangalore Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore E...
Bangalore Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore E...Bangalore Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore E...
Bangalore Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore E...
amitlee9823
 
+97470301568>>buy vape oil,thc oil weed,hash and cannabis oil in qatar doha}}
+97470301568>>buy vape oil,thc oil weed,hash and cannabis oil in qatar doha}}+97470301568>>buy vape oil,thc oil weed,hash and cannabis oil in qatar doha}}
+97470301568>>buy vape oil,thc oil weed,hash and cannabis oil in qatar doha}}
Health
 
➥🔝 7737669865 🔝▻ narsinghpur Call-girls in Women Seeking Men 🔝narsinghpur🔝 ...
➥🔝 7737669865 🔝▻ narsinghpur Call-girls in Women Seeking Men  🔝narsinghpur🔝  ...➥🔝 7737669865 🔝▻ narsinghpur Call-girls in Women Seeking Men  🔝narsinghpur🔝  ...
➥🔝 7737669865 🔝▻ narsinghpur Call-girls in Women Seeking Men 🔝narsinghpur🔝 ...
nirzagarg
 
Top Rated Call Girls Navi Mumbai : 9920725232 We offer Beautiful and sexy Cal...
Top Rated Call Girls Navi Mumbai : 9920725232 We offer Beautiful and sexy Cal...Top Rated Call Girls Navi Mumbai : 9920725232 We offer Beautiful and sexy Cal...
Top Rated Call Girls Navi Mumbai : 9920725232 We offer Beautiful and sexy Cal...
amitlee9823
 
如何办理麦考瑞大学毕业证(MQU毕业证书)成绩单原版一比一
如何办理麦考瑞大学毕业证(MQU毕业证书)成绩单原版一比一如何办理麦考瑞大学毕业证(MQU毕业证书)成绩单原版一比一
如何办理麦考瑞大学毕业证(MQU毕业证书)成绩单原版一比一
ozave
 
FULL NIGHT — 9999894380 Call Girls In Jagat Puri | Delhi
FULL NIGHT — 9999894380 Call Girls In Jagat Puri | DelhiFULL NIGHT — 9999894380 Call Girls In Jagat Puri | Delhi
FULL NIGHT — 9999894380 Call Girls In Jagat Puri | Delhi
SaketCallGirlsCallUs
 
Vip Mumbai Call Girls Navi Mumbai Call On 9920725232 With Body to body massag...
Vip Mumbai Call Girls Navi Mumbai Call On 9920725232 With Body to body massag...Vip Mumbai Call Girls Navi Mumbai Call On 9920725232 With Body to body massag...
Vip Mumbai Call Girls Navi Mumbai Call On 9920725232 With Body to body massag...
amitlee9823
 

Dernier (20)

➥🔝 7737669865 🔝▻ Asansol Call-girls in Women Seeking Men 🔝Asansol🔝 Escorts...
➥🔝 7737669865 🔝▻ Asansol Call-girls in Women Seeking Men  🔝Asansol🔝   Escorts...➥🔝 7737669865 🔝▻ Asansol Call-girls in Women Seeking Men  🔝Asansol🔝   Escorts...
➥🔝 7737669865 🔝▻ Asansol Call-girls in Women Seeking Men 🔝Asansol🔝 Escorts...
 
Top Rated Call Girls South Mumbai : 9920725232 We offer Beautiful and sexy Ca...
Top Rated Call Girls South Mumbai : 9920725232 We offer Beautiful and sexy Ca...Top Rated Call Girls South Mumbai : 9920725232 We offer Beautiful and sexy Ca...
Top Rated Call Girls South Mumbai : 9920725232 We offer Beautiful and sexy Ca...
 
BOOK FARIDABAD CALL GIRL(VIP Sunny Leone) @8168257667 BOOK 24/7
BOOK FARIDABAD CALL GIRL(VIP Sunny Leone) @8168257667 BOOK  24/7BOOK FARIDABAD CALL GIRL(VIP Sunny Leone) @8168257667 BOOK  24/7
BOOK FARIDABAD CALL GIRL(VIP Sunny Leone) @8168257667 BOOK 24/7
 
Madiwala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore Es...
Madiwala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore Es...Madiwala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore Es...
Madiwala Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore Es...
 
一比一原版(PU学位证书)普渡大学毕业证学历认证加急办理
一比一原版(PU学位证书)普渡大学毕业证学历认证加急办理一比一原版(PU学位证书)普渡大学毕业证学历认证加急办理
一比一原版(PU学位证书)普渡大学毕业证学历认证加急办理
 
Vip Mumbai Call Girls Mumbai Call On 9920725232 With Body to body massage wit...
Vip Mumbai Call Girls Mumbai Call On 9920725232 With Body to body massage wit...Vip Mumbai Call Girls Mumbai Call On 9920725232 With Body to body massage wit...
Vip Mumbai Call Girls Mumbai Call On 9920725232 With Body to body massage wit...
 
➥🔝 7737669865 🔝▻ pathankot Call-girls in Women Seeking Men 🔝pathankot🔝 Esc...
➥🔝 7737669865 🔝▻ pathankot Call-girls in Women Seeking Men  🔝pathankot🔝   Esc...➥🔝 7737669865 🔝▻ pathankot Call-girls in Women Seeking Men  🔝pathankot🔝   Esc...
➥🔝 7737669865 🔝▻ pathankot Call-girls in Women Seeking Men 🔝pathankot🔝 Esc...
 
Call Girls in Malviya Nagar Delhi 💯 Call Us 🔝9205541914 🔝( Delhi) Escorts Ser...
Call Girls in Malviya Nagar Delhi 💯 Call Us 🔝9205541914 🔝( Delhi) Escorts Ser...Call Girls in Malviya Nagar Delhi 💯 Call Us 🔝9205541914 🔝( Delhi) Escorts Ser...
Call Girls in Malviya Nagar Delhi 💯 Call Us 🔝9205541914 🔝( Delhi) Escorts Ser...
 
Vip Mumbai Call Girls Colaba Call On 9920725232 With Body to body massage wit...
Vip Mumbai Call Girls Colaba Call On 9920725232 With Body to body massage wit...Vip Mumbai Call Girls Colaba Call On 9920725232 With Body to body massage wit...
Vip Mumbai Call Girls Colaba Call On 9920725232 With Body to body massage wit...
 
Call Girls Hongasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Hongasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Hongasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Hongasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
 
Call Girls In Kotla Mubarakpur Delhi ❤️8448577510 ⊹Best Escorts Service In 24...
Call Girls In Kotla Mubarakpur Delhi ❤️8448577510 ⊹Best Escorts Service In 24...Call Girls In Kotla Mubarakpur Delhi ❤️8448577510 ⊹Best Escorts Service In 24...
Call Girls In Kotla Mubarakpur Delhi ❤️8448577510 ⊹Best Escorts Service In 24...
 
Bangalore Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore E...
Bangalore Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore E...Bangalore Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore E...
Bangalore Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore E...
 
+97470301568>>buy vape oil,thc oil weed,hash and cannabis oil in qatar doha}}
+97470301568>>buy vape oil,thc oil weed,hash and cannabis oil in qatar doha}}+97470301568>>buy vape oil,thc oil weed,hash and cannabis oil in qatar doha}}
+97470301568>>buy vape oil,thc oil weed,hash and cannabis oil in qatar doha}}
 
➥🔝 7737669865 🔝▻ narsinghpur Call-girls in Women Seeking Men 🔝narsinghpur🔝 ...
➥🔝 7737669865 🔝▻ narsinghpur Call-girls in Women Seeking Men  🔝narsinghpur🔝  ...➥🔝 7737669865 🔝▻ narsinghpur Call-girls in Women Seeking Men  🔝narsinghpur🔝  ...
➥🔝 7737669865 🔝▻ narsinghpur Call-girls in Women Seeking Men 🔝narsinghpur🔝 ...
 
Marathi Call Girls Santacruz WhatsApp +91-9930687706, Best Service
Marathi Call Girls Santacruz WhatsApp +91-9930687706, Best ServiceMarathi Call Girls Santacruz WhatsApp +91-9930687706, Best Service
Marathi Call Girls Santacruz WhatsApp +91-9930687706, Best Service
 
Top Rated Call Girls Navi Mumbai : 9920725232 We offer Beautiful and sexy Cal...
Top Rated Call Girls Navi Mumbai : 9920725232 We offer Beautiful and sexy Cal...Top Rated Call Girls Navi Mumbai : 9920725232 We offer Beautiful and sexy Cal...
Top Rated Call Girls Navi Mumbai : 9920725232 We offer Beautiful and sexy Cal...
 
如何办理麦考瑞大学毕业证(MQU毕业证书)成绩单原版一比一
如何办理麦考瑞大学毕业证(MQU毕业证书)成绩单原版一比一如何办理麦考瑞大学毕业证(MQU毕业证书)成绩单原版一比一
如何办理麦考瑞大学毕业证(MQU毕业证书)成绩单原版一比一
 
FULL NIGHT — 9999894380 Call Girls In Jagat Puri | Delhi
FULL NIGHT — 9999894380 Call Girls In Jagat Puri | DelhiFULL NIGHT — 9999894380 Call Girls In Jagat Puri | Delhi
FULL NIGHT — 9999894380 Call Girls In Jagat Puri | Delhi
 
Is Your BMW PDC Malfunctioning Discover How to Easily Reset It
Is Your BMW PDC Malfunctioning Discover How to Easily Reset ItIs Your BMW PDC Malfunctioning Discover How to Easily Reset It
Is Your BMW PDC Malfunctioning Discover How to Easily Reset It
 
Vip Mumbai Call Girls Navi Mumbai Call On 9920725232 With Body to body massag...
Vip Mumbai Call Girls Navi Mumbai Call On 9920725232 With Body to body massag...Vip Mumbai Call Girls Navi Mumbai Call On 9920725232 With Body to body massag...
Vip Mumbai Call Girls Navi Mumbai Call On 9920725232 With Body to body massag...
 

mcdm method

  • 1. APPLICATION OF MCDM METHOD FOR OPTIMIZATION OF SPECIFICATION OF WHEEL IN GRINDING PROCESS
  • 2. Abstract The grinding process, which in the present scenario is practiced in a large and diverse area of manufacturing and tool making is used to produce a high surface finish with a close tolerance and for machining hard materials. The process is a variation of polishing and uses abrasive materials held together by an adhesive generally in form of GRINDING WHEEL Almost any material can be ground, aluminium, steel, ceramics, even diamond or glass. Grinding is used to form countless types of products such as automobile engines, sharp edges on knives, ball bearing and drills etc The grinding process is under continuous improvement. Research at universities and in industry means that the science of grinding is constantly advancing resulting in increased production, saved revenues and higher quality products for the consumers. In grinding of hard and brittle materials such as advanced ceramics or hard metal, process behavior and work result are closely connected with material removal mechanisms. Material removal mechanisms are determined by complex interactions between material properties, the mechanical and thermal loads acting on work piece, geometry of the grits, the kinematics of grit engagements and other specifications of the grinding. Experimental investigations of surface grinding processes show that material removal mechanisms are also influenced by dynamic conditions in the contact zone. These dynamic conditions, that are not chatter vibrations, can have both a positive and negative influence on surface quality, process forces and wear of the grinding wheel. For a given machine tool and work piece the dynamic contact zone conditions and specifications of wheel can be optimized by improvement in the grinding wheel. For analyzing the dynamic contact zone conditions based on the behavior of the grinding wheel and its specification various methods can be used. By means of these analyses the specification of grinding wheels can be adapted to meet the requirements of a determined grinding process with regard to tool wear, surface roughness of the work piece and process forces.
  • 3. An Intelligent Multi-Criteria Decision Making In engineering design and manufacturing, conflicting disciplines and technologies are always involved in the design process. Multi-Criteria Decision Making (MCDM) methods can help Decision Makers to effectively deal with such situation and make wise design decisions to produce an optimized design. There are a variety of existing MCDM methods, thus the selection of the most appropriate methods is critical since the use of inappropriate methods is often the cause of misleading design decisions. However, the selection of MCDM methods itself is a complicated MCDM problem that needs to be prudently conducted. In this project we will aim at proposing a hybrid MCDM method to select the most suitable MCDM method for the problem under consideration. Relative weights are assigned to each evaluation criterion to represent the decision maker’s preference information. The MCDM method selection approach, its implemented and an intelligent knowledge based system will be developed, consisting of a MCDM library storing the widely used decision making methods and a knowledge base providing the information required for the method selection process. The optimization of specification of wheel problem using the MCDM method will be conducted as a proof of implementation to demonstrate the functionality and effectiveness of the intelligent decision support system as well as discovering an option for the decision maker’s to select an optimized grinding wheel specification to improve the results of grinding operation that will lead to increased production, saved revenues and higher quality products for the consumers.
  • 4. LITERATURE REVIEW "Multi-Criteria Decision Making (MCDM) is the study of methods and procedures by which concerns about multiple conflicting criteria can be formally incorporated into the management planning process ", as defined by the International Society on Multiple Criteria Decision Making Multi-Criteria Decision Making (MCDM) is a process that allows one to make decisions in the presence of multiple, potentially conflicting criteria. MCDM can be divided into two categories: Multi-Attribute Decision Making (MADM), and Multi-Objective Decision Making (MODM). MADM involves the selection of the “best” alternative from pre-specified alternatives described in terms of multiple attributes; MODM involves the design of alternatives which optimize the multiple objectives of Decision Maker. Although MCDM as a discipline only has a relatively short history of about 40 years, over 70 MCDM techniques have been developed for facilitating the decision making process. Among these developed MCDM methods, different methods have different underlying assumptions, information requirements, analysis models, and decision rules that are designed for solving a certain class of decision making problems. This implies that it is critical to select the most appropriate method to solve the problem under consideration since the use of unsuitable method always leads to misleading design decisions. Consequently, bad design decisions will result in big loss to the society, such as property damage or personal injury. However, it can be seen that the selection of MCDM methods itself is a complicated MCDM problem and needs to be prudently performed. The Decision Support Systems constitute a class of computer-based information systems which use data and MCDM models to organize information for facilitating the decision making process. The Intelligent Decision Support Systems are interactive computer-based systems which use data, MCDM models, and artificial intelligence techniques for supporting decision making in making decisions for the complex problems. The IDSS is capable of providing decision making with effective mechanisms to better understand the decision making problem and the implications of their decision behaviors by allowing them to interactively exchange information with the systems.
  • 5. Project Planning To effectively select the most appropriate MCDM method for the optimization of specification of wheel, a systematic framework is proposed in this study. The proposed approach consists of eight steps: define the problem, define the evaluation criteria, initial screen, define the preferences on evaluation criteria, define the MCDM method for selection, evaluate the MCDM methods, choose the most suitable method, and conduct sensitivity analysis. Step 1: Define the problem The characteristics of the decision making problem under consideration are addressed in the problem definition step, such as identifying the number of alternatives, attributes, and constraints etc.. The available information about the decision making problem is the basis on which the most appropriate MCDM techniques will be evaluated and utilized to solve the problem. Step 2: Define the evaluation criteria The proper determination of the applicable evaluation criteria is important because they have great influence on the outcome of the MCDM method selection process. However, simply using every criterion in the selection process is not the best approach because the more criteria used, the more information is required, which will result in higher computational cost. In this study, the characteristics of the MCDM methods will be identified by the relevant evaluation criteria in the form of a questionnaire. 10 questions are defined to capture the advantages, disadvantages, applicability, computational complexity etc. of each MCDM method, as shown in the following. The defined evaluation criteria will be used as the attributes of a MCDM formulation and as the input data of decision matrix for method selection. 1) Is the method able to handle MADM, MODM, or MCDM problem? 2) Does the method evaluate the feasibility of the alternatives? 3) Is the method able to capture uncertainties existing in the problem? 4) What input data are required by the method? 5) What preference information does the method use? 6) What metric does the method use to rank the alternatives? 7) Can the method deal changing alternatives or requirements? 8) Does the method handle qualitative or quantitative data? 9) Does the method deal with discrete or continuous data? 10) Can the method handle the problem with hierarchy structure of attributes?
  • 6. Step 3: Initial screen In the initial screen step, the dominated and infeasible MCDM methods are eliminated by dominance and conjunctive. An alternative is dominated if there is another alternative which excels it in one or more attributes and equals it in the remainder. The dominated MCDM methods are eliminated by the dominance method, which does not require any assumption or any transformation of attributes. The sieve of dominance takes the following procedures. Compare the first two alternatives and if one is dominated by the other, discard the dominated one; then compare the un-discarded alternative with the third alternative and discard any dominated alternative; and then introduce the forth alternative and repeat this process until the last alternative has been compared. A set of non-dominated alternatives may possess unacceptable or infeasible attribute values. The conjunctive method is employed to remove the unacceptable alternatives, in which the decision maker set up the cutoff values he/she will accept for each of the attributes. Any alternative which has an attribute value worse than the cutoff values will be eliminated. Step 4: Define the preferences on evaluation criteria Usually, after the initial screen step is completed, multiple MCDM methods are expected to remain, otherwise we can directly choose the only one left to solve the decision making problem. With the 10 evaluation criteria defined in the step 2, the decision maker’s preference information on the evaluation criteria is defined. This will reflect which criterion is more important to the decision maker when he/she makes decisions on method selection. Step 5: Define the MCDM method for selection In existing commonly used MCDM methods are identified and stored in the method base as candidate methods for selection. The Simple Additive Weighting (SAW) method is chosen to select the most suitable MCDM methods considering its simplicity and general acceptability. Basically, the SAW method provides a weighted summation of the attributes of each method, and the one with the highest score is considered as the most appropriate method. Though SAW is used in this study, it is worth to noting that other MCDM methods can be employed to handle the same MCDM methods selection problem.
  • 7. Step 6: Evaluate the MCDM methods Mathematical formulation of Appropriateness Index (AI) is used to rank the MCDM methods. The method with the highest AI will be recommended as the most appropriate method to solve the problem under consideration. Step 7: Choose the most suitable method for optimization of specification of GrindingWheel The MCDM method which has the highest AI will be selected as the most appropriate method to solve the given decision making problem. If the DM is satisfied with the final results, he/she can implement the solution and move forward. Otherwise, he/she can go back to step 2 and modify the input data or preference information and repeat the selection process until a satisfied outcome is obtained. be displayed to provide guidance to DM how to get the final solution by using the selected method. In addition, the detailed mathematical calculation steps are also built in the MATLAB-based DSS, which highly facilitates the decision making process. Thus, the DM can input their data according to the instruction, and get the final results by clicking one corresponding button. Step 8: Conduct analysis In this section, selection of an optimized specification of grinding wheel problem is conducted to improve the capabilities of the grinding operation products by proposed MCDM decision support system. It is observed that different decision maker often have different preference information on the evaluation criteria and different answers to the 10 questions, thus, analysis should be performed on the MCDM method selection algorithm in order to analyze its robustness with respect to parameter variations, such as the variation of decision maker’s preference information and the input data. If the decision maker is satisfied with the final results, he/she can implement the solution and move forward. Otherwise, he/she can go back to step 2 and modify the input data or preference information and repeat the selection process until a satisfied outcome is obtained. In this implementation, emphasis is put on explaining the holistic process of the intelligent MCDM decision support system. Thus, the step by step problem solving process is explained and discussed for this decision making problem.
  • 8. CONCLUSION In this project, a systematic MCDM selection process is developed and applied to optimize the specification of grinding wheel. The selection of the most appropriate MCDM methods is formulated as a complicated MCDM problem and a hybrid framework is proposed to deal with this problem and the method evaluation criteria for selecting the most appropriate method are defined. Study shows that the proposed decision support system can effectively help decision maker with selecting the most appropriate method and guide the decision maker to get the final decision for the problem. It is worth noting that there is no absolute “best” MCDM method since the MCDM method selection is problem specified. The selection of the most suitable MCDM method depends on the problem under consideration. In addition, new methods may emerge during the process of MCDM methods selection as we get more insights on the characteristics of the methods. For example, by combining the characteristics of two or more decision making methods, decision maker may get one hybrid method which is more effective for solving the given problem. This project is a future work that needs further investigation in the method selection process.