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International Journal of Mechanical Engineering and Technology (IJMET), ISSN 0976
6340(Print), ISSN 0976 6359(Online) Volume 3, Issue 1, January- April (2012), IAEME
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PREDICTION OF MECHANICAL AND TRIBOLOGICAL
CHARACTERISTICS OF INDUSTRIAL CERAMIC COATINGS
USING A GENETIC PROGRAMMING APPROACH
Mohammed Yunus1
, Dr. J. Fazlur Rahman2
and S.Ferozkhan3
1. Research scholar, Anna University of Technology Coimbatore
Professor, Department of Mechanical Engineering H.K.B.K.C.E.,
Bangalore, India.
Mobile: +919141369124
2. Supervisor, Anna University of Technology Coimbatore
Professor Emeritus, Department of MechanicalEngineering
H.K.B.K.C.E., Bangalore, India.
3. Lecturer, Department of Mechanical Engineering,
H.K.B.K.C.E., Bangalore, India.
ABSTRACT
The state of the art methods used to manufacture the coating materials in
atmospheric plasma spray process and the level of process control employed in
todays coating equipment provides an excellent coating over a broad range of
application requirements. The various characteristics of coatings depend oncoating material, spray parameters, spray equipment and componentconfigurations. Amongst the many characteristics, the controlled porosity,
optimized hardness which is the demanding requirements of wear-resistantapplication, specific coating thickness and resistance to wear plays an
important role in deciding the quality of coating material.
In the technical paper, wear tests and Rockwell hardness tests were
conducted on different types of industrial coatings, namely, Alumina, Alumina-
INTERNATIONAL JOURNAL OF MECHANICALENGINEERING AND TECHNOLOGY (IJMET)
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Titania (AT) and Partially Stabilized Zirconia (PSZ), Super- Z alloy, Zirconia
Toughened Alumina, AT, PSZ under different parameters.
Genetic programming (GP) is an automated method for creating a working
computer program from a high-level problem statement of a problem. Theprediction of mechanical and tribological characteristics of ceramic oxide
coatings, depending on input parameters (Power input, standoff distance, typeof coatings, normal pressure, sliding velocity etc.), was performed by means of
genetic programming and data on the outputs ( hardness, weight loss, percent
porosity, coefficient of friction etc.) of Mechanical and tribological properties
already made. This technical paper highlights how we use GP technique in the
prediction output parameters. Commercial Genetic Programming (GP)
software-Discipulus is used to derive a mathematical modelling of relations for
various input and output parameters used in characterisation. Genetic approach
has been used for the modelling the properties in coated components is
proposed on the basis of a validation, training and applied data set. Various
different genetic models for prediction of different Mechanical and tribological
properties with greater accuracy (less than 2%) were also proposed bysimulated evolution.
Keywords: Evolutionary computation, Genetic Programming, Hardness, Bond
strength, wear and coefficient of friction, PSZ, ZTA, Plasma, Super-Z alloy..
1.INTRODUCTION
Thermal Sprayed Surface Coatings are used extensively for a wide range of
industrial applications [1-2]. The selection of a technology to engineer the
surface is an integral part of the component design. Accordingly, the first step
in selecting surface modification techniques is to determine the surface and the
substrate engineering functional requirements [11]. These involve therequirements of one or more of the properties like wear resistance, corrosion
resistance, erosion resistance, thermal resistance, fatigue strength, creep
strength and pitting resistance.
Among the various surface modification methods, the thermal spray
processes are widely recognized. Two-wire electric arc and atmospheric plasma
spraying process are most commonly used in industries. The typical
applications [1-2] & [6] of ceramic coatings are listed as under
1. General manufacturing industry:- Extrusion dies, threaded guides,
forging tools, wire drawing Capstans, cam followers, roller bearings, hot
forming dies.
2. Gas turbine industry:- Turbine Nozzles , Jet engine, Jet engine manifold
rings, Gas turbines fan seals, Aircraft flap tracks, expansion joints, fan
blades.
3. Petroleum Industry: - Pump plungers, compressor rods.
4. Chemical Process Industry: - Gate Valve, pump components.
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5. Paper / Pulp Industry: - Printing rolls, liquor tanks.
6. Automotive Industry: - Piston rings, cylinder liners.
1.2 Genetic Programming (GP) Method
Genetic Programming is a form of machine learning that automatically
writes computer programs. It uses the principle of Darwinian Natural Selectionto select and reproduce fitter programs. GP applies that principle to apopulation of computer programs and evolves a program that predicts the target
output from a data file of inputs and outputs [10]. The programs evolved by GP
software Discipulus [13], in this case Java, C/C++ and assembly interpreter
programs represents a mapping of input to output data. This is done by
Machine Learning that maps a set of input data to known output data. The aims
of using the machine learning technique on engineering problems are to
determine data mining and knowledge discovery. GP provides a significant
benefit in many areas of science and industry [ 10-12]. The Discipulus GP [13 ]
system uses AIM Learning Technology. AIM stands for Automatic
Induction of Machine Code. AIM Learning and Discipulus deal with themachine learning speed problem. This speed allows the analyst to able to make
many more runs to investigate relationships between data and output, assess
information content of data streams, uncover bad data or outliers, assess time
lag relationships between inputs and outputs, and the like. The evolved models
have been used to develop process prediction or control algorithms. Hence GP
technology has been selected for the present work.
GP solutions are computer programs that can be easily inspected,
documented, evaluated, and tested. The GP solutions are easy to understand the
nature of the derived relationship between input and output data and to examinethe uncover relationships that were unknown before. Genetic Programming
evolves both the structure and the constants to the solution simultaneously.Discipulus GP strongly discriminates between relevant input data and inputs
that have no bearing on a solution [10-13]. In other words, Discipulus performs
input variable selection as a by-product of its learning algorithm.
The following step by step procedure will be implemented for a steady state
GP algorithm [10]:
1. Initialization of population: Generate an initial population of random
compositions of the functions and terminals of the problem (computer
programs).
2.
Fitness evaluation: Execute each program in the population, randomly itselects some programs and assign it a fitness value according to how
well it solves the problem by mapping input data to output data. Some
programs are selected as winners (best programs), and the others as
losers.
3. Create a new population of computer programs by exchanging parts of
the best programs with each other (crossover).
4. Copy the best existing programs
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5. Create new computer programs by randomly changing each of the
tournament winners to create two new programs mutation.
6. Iterate Until Convergence. Repeating steps two through four until a
program is developed which predicts the behaviour sufficiently.
GP has been successfully used to solve problems in a wide range of broad
categories [15-23]:
1. Systems Modelling, Curve Fitting, Data Modelling, and Symbolic
Regression
2. Industrial Process Control
3. Financial Trading, Time Series Prediction and Economic Modelling
4. Optimisation and scheduling
5. Medicine, Biology and Bioinformatics
6. Design
7. Image and Signal processing
8. Entertainment and Computer games
2. EXPERIMENTAL PROCEDURE
Five different commercially available ceramic coatings powders namely,Alumina (Al2O3), Alumina-Titania (Al2O3-TiO2), Partially StabilizedZirconia (PSZ), Zirconia toughened alumina (ZTA consist of 80% alumina and20% PSZ) and Super-Z alloy (20% alumina and 80% PSZ) were used for thepreparation of coatings [1-2 ]. A 40 KW Sulzer, Metco plasma spray systemwith 7MB gun is used for this plasma spraying of coatings. Mild steel plates of50x50x6 mm and cylindrical pins of 6 mm diameter and 21mm length were
used as substrate to spray the ceramic oxides. They were grit blasted, degreasedand spray coated with a 50 to 100 microns Ni Cr Al bond coat. The ceramicTBC were then plasma sprayed using optimum spray parameters. In this study,two response parameters such as wear and hardness tests of the coating wereconsidered.
2.1 Wear Test
The pin-on-disc testing machine was used to measure the wear of material
weight loss by conducting dry sliding wear tests [ 4-5]. This instrument
consists of a pin is mounted on a stiff lever, designed as a frictionless force
transducer and pressed against a rotating disk. Generally pin surface is coated
with ceramic oxide to different thicknesses using plasma spray process, fixed to
an arm and pressed with a known force. The measurement includes RPM, Wearand Frictional force to measure effect of sliding speed, applied pressure, and
weight loss on the wear characteristics of different types of coatings. As the
disc is rotated, resulting frictional forces acting between the pin and the disc are
measured by using strain gage sensors.
The main object of this study is to evaluate the behavior of A, AT and PSZ
ceramic coatings subjected to different grinding conditions. The performance
[14] was evaluated by measuring
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1. Grinding force ( both normal and tangential forces)
2. Surface finish produced which also includes the bearing area
characteristics
2.2 Hardness Test
The Rockwell hardness number was determined by pressing a hardenedsteel ball indenter or diamond cone penetrator against a test specimen and
resulting indentation depth was measured as a gauge of the specimen hardness
using c-scale.
3. Genetic Programming MethodologyG Genetic programming can be the most general approach among
evolutionary computation methods in which the coatings subject to thermal
changes adaptation are those hierarchically organized computer programs
whose size and form dynamically change during simulated evolution. The
initial population in GP is obtained by the creation of random computer
programs consisting of available function genes from set F and available
terminal genes from set T. The next step is the calculation of individualsadaptation to the environment. Fitness is a guideline for modifying those
structures undergoing adaptation. After finishing the first cycle, which includes
creation of the initial population, calculation of fitness for each individual of
the population, and genetic modification of the contents of the computer
programs, an iterative repetition of fitness calculation and genetic modification
follows. The evolution is terminated when the termination criterion is fulfilled.
This can be a prescribed number of generations or sufficient quality of the
solution. Instruction set for the present program used are +,-, * and /. Eachindividual GP run started with the training phase by the training data set, the
testing data set was not included within the training range.
Process Inputs:Normal Pressure (MPa),Velocity of Sliding (m/sec),Sliding Distance (m),Power Input (KW),Standoff Distance (mm)Thickness of Coating (m)Toughness (MPa m)Thermal conductivity (W/m K)Thermal Diffusivity (10
-7m
2/sec)
Measured Process OutputsPercentage Porosity
Weight loss (mg)Hardness (RHC)Coefficient of frictionBond strength (MPa)
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TABLE 1. Experimental results of evaluating percentage porosity during under different process parameters for different coatings
Table2. Experimental results of evaluating hardness during under different process parameters for different coatings.
Power in KW
(Vo)
Standoff distance
in mm (V1)
% Porosity
for PSZ
% Porosity for
Alumina-Titania
% Porosity
for Alumina
16 100 7 8 9.4
16 110 6.7 7.2 8.8
16 120 6.25 6.8 8.5
16 135 6.7 6.7 8.2
16 150 6.8 7 8.35
25 100 5.5 6.5 825 110 5.2 5.85 7.3
25 120 4.8 5.4 7
25 135 5.2 5.3 6.7
25 150 5.3 5.6 6.85
35 100 4.9 5.9 6.7
35 110 4.62 5.25 6.1
35 120 4.2 4.8 5.75
35 135 4.55 4.75 6
35 150 4.65 5 6.1
40 100 4.5 5.75 6.7
40 110 4.22 5.1 6.1
40 120 3.8 4.65 5.6
40 135 4.15 4.6 5.8
40 150 4.2 4.75 5.9
Powerin KW (V3)
Thickness in m (V5)
Standoff distancein mm (V2)
Hardnessfor PSZ
Hardness forAlumina-Titania
Hardnessfor Alumina
Hardnessfor ZTA
Hardness for
Super-Z
16 100 100 73 107 112 104 110
16 100 110 80 115 120 112 115
16 100 120 84 122 127 118 120
16 100 140 90 118 123 116 118
16 150 100 83 117 122 114 116
16 150 110 87 122 126 118 120
16 150 120 94 130 135 126 126
16 150 140 90 124 129 121 123
16 200 100 78 112 117 109 114
16 200 110 82 117 122 114 117
16 200 120 90 125 131 123 122
16 200 140 86 120 125 117 119
16 300 100 75 108 114 106 108
16 300 110 78 112 117 109 112
16 300 120 87 120 125 117 116
16 300 140 82 115 120 112 104
25 100 100 75 113 118 113 110
25 100 110 83 118 123 116 119
25 100 120 88 123 128 117 125
25 100 140 93 119 124 118 121
25 150 100 86 115 120 112 119
25 150 110 90 120 125 118 125
25 150 120 97 125 130 123 130
25 150 140 94 121 126 119 126
25 200 100 82 102 107 112 116
25 200 110 86 117 122 115 121
25 200 120 94 122 127 119 124
25 200 140 90 119 124 118 11625 300 100 76 97 102 97 110
25 300 110 81 114 120 112 117
25 300 120 88 118 123 115 120
25 300 140 85 115 120 123 108
30 100 100 78 115 121 112 115
30 100 110 87 120 125 117 124
30 100 120 91 125 131 122 130
30 100 140 96 119 121 115 126
30 150 100 89 118 123 118 124
30 150 110 94 123 128 119 130
30 150 120 102 129 134 125 136
30 150 140 97 124 129 123 131
30 200 100 86 105 110 104 120
30 200 110 89 121 126 118 126
30 200 120 98 126 131 125 130
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Table 3. Experimental results of evaluating weight loss during under different process parameters for different coatings.
30 200 140 94 123 127 119 118
30 300 100 80 103 108 103 115
30 300 110 84 118 123 116 123
30 300 120 91 122 127 119 125
30 300 140 89 118 122 117 113
40 100 100 82 118 123 115 121
40 100 110 90 123 128 121 127
40 100 120 95 128 133 115 134
40 100 140 100 124 129 124 129
40 150 100 92 121 126 118 12840 150 110 97 126 131 123 134
40 150 120 106 134 139 134 141
40 150 140 100 127 132 124 136
40 200 100 89 109 114 106 125
40 200 110 91 125 131 122 131
40 200 120 111 130 136 127 133
40 200 140 97 127 132 124 123
40 300 100 84 107 112 104 120
40 300 110 88 121 126 117 128
40 300 120 94 125 130 123 130
40 300 140 93 121 127 119 118
when D = 4Km (V2) Alumina
Normal
pressure (V0)
sliding,z velocity v
=2.5 m/s(V1)
v=5 m/s
(V1)
v=7.5 m/s
(V1)
v=10 m/s(
V1)
v=12.5
m/s(V1)0.05 0.17 0.19 0.23 0.3 0.48
0.1 1.6 1.9 2.1 2.3 5.2
0.15 2.1 2.2 2.7 4.7 5.8
0.2 3.4 3.4 3.4 6.5 10
0.25 4.9 5.4 5.8 8.3 16
0.3 6 6.3 6.9 13 18
when D=6Km (V2) Alumina
0.05 0.8 0.7 0.8 1.2 1.5
0.1 4.3 4.3 4.6 6.8 13
0.15 9.3 7.3 7.3 7.3 14
0.2 12 10.1 10.5 14 17
0.25 14 11 11.6 16 20
0.3 16 13 13.3 18 22
when D = 8Km (V2) Alumina
0.05 1.4 1.6 1.3 2.2 2.5
0.1 5.6 5 6 7 100.15 12 10.5 12.5 14 18
0.2 13 13 12 13 25
0.25 14 14 14 18 28
0.3 15 15 15 23 33
when D = 4Km (V2) Alumina- Titania
0.05 0.39 0.23 0.18 0.26 0.52
0.1 2.8 2.3 1.8 2.8 7.5
0.15 3 2.8 2.5 6 8.1
0.2 3.8 4.8 5 8.1 15
0.25 4.4 6.3 6.3 9.2 17
0.3 6.5 8 10 14 19
when D=6Km (V2) Alumina- Titania
0.05 0.7 0.59 0.28 0.32 0.8
0.1 3.7 3.5 2.8 3.7 11
0.15 9.2 9.2 7.8 8.5 14
0.2 10.1 9.8 10.1 11 200.25 10.2 10 12 14 22
0.3 11 11 16 16 24
when D = 8Km (V2) Alumina- Titania
0.05 0.4 0.6 0.375 0.75 0.9
0.1 3.8 4 4 4.2 8
0.15 9 9 8.5 10 15
0.2 10 11 11 12 20
0.25 11 12 13 16 26
0.3 12 13 15 18 29
when D = 4Km (V2) PSZ
0.05 2.8 2.7 1.8 3 4.5
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Table 4. Experimenta l results of evaluating coefficient of friction during under different process parameters for differentcoatings.
0.1 3.2 3 2.3 3.5 9.6
0.15 3.5 3.3 3 5.5 11
0.2 4 4.3 6.8 9.2 13
0.25 4.6 4.9 8.8 10 15
0.3 6.2 6.8 10 11 17
when D = 6Km (V2) PSZ
0.05 3.2 3.2 2.6 4.2 8.6
0.1 7.2 4.7 3.7 4.9 12
0.15 8 7.3 8 8.8 14
0.2 10 8.2 10 12 18
0.25 9.5 9.1 12 13 20
0.3 9 9.5 16 15 22
when D = 6Km (V2) PSZ
0.05 5 4.75 4.5 4.75 8
0.1 8 6.5 7 8 14
0.15 9 9 9 11 17
0.2 10 9.5 9 11 19
0.25 9 8.5 13 13.5 23
0.3 8 11 16 17 25
Sliding Distance
D=4km (V2)
PSZ
Coating
(V1)
Normal;
pressure P (V0)
0.05 0.1 0.15 0.2 0.25 0.3 Sliding
Velocity V in m/s
0.82 0.82 0.83 0.84 0.85 0.86 V = 2.5
0.83 0.829 0.838 0.849 0.858 0.868 V = 5
0.8 0.79 0.77 0.77 0.81 0.82 V = 7.5
D=6km PSZ
0.05 0.1 0.15 0.2 0.25 0.3
0.03 0.07 0.071 0.1 0.1 0.09
0.028 0.045 0.07 0.075 0.081 0.095
0.042 0.04 0.08 0.09 0.102 0.13
D=4km Alumina
0.05 0.1 0.15 0.2 0.25 0.3
0.075 0.072 0.07 0.071 0.067 0.065
0.07 0.068 0.068 0.067 0.065 0.063
0.078 0.074 0.074 0.073 0.071 0.07
D=6km Alumina0.05 0.1 0.15 0.2 0.25 0.3
0.072 0.07 0.069 0.07 0.068 0.067
0.071 0.071 0.072 0.07 0.067 0.66
0.068 0.067 0.072 0.062 0.061 0.058
D=8km Alumina
0.05 0.1 0.15 0.2 0.25 0.3
0.073 0.072 0.071 0.07 0.068 0.067
0.072 0.072 0.072 0.07 0.067 0.66
0.067 0.066 0.064 0.062 0.061 0.058
D=4km Alumina-
Titania (AT)
0.05 0.1 0.15 0.2 0.25 0.3
0.085 0.086 0.088 0.088 0.089 0.089
0.085 0.84 0.088 0.088 0.082 0.082
0.081 0.079 0.081 0.078 0.08 0.081
D=6km AT
0.05 0.1 0.15 0.2 0.25 0.30.081 0.078 0.078 0.082 0.083 0.084
0.082 0.083 0.084 0.085 0.086 0.085
0.08 0.078 0.078 0.075 0.079 0.082
D=8km AT
0.05 0.1 0.15 0.2 0.25 0.3
0.083 0.082 0.085 0.083 0.085 0.087
0.082 0.083 0.086 0.088 0.089 0.089
0.081 0.082 0.084 0.08 0.081 0.085
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4. GENETIC MODELS RESULTS AND DISCUSSION
Using GP simulation, percent porosity can be determined from the following
mathematical model (refer Table1.),
Where V3 =Thermal conductivity, V2 =Thermal diffusivity and V4=Toughness (refer table 1.)
Using GP simulation, Weight loss in can be determined from the following
mathematical model (refer Table3),
Where V3 =Hardness of coatings, V5 =Thermal conductivity, V4 =Thermal
diffusivity and V6= Toughness
where
Using GP simulation, Coefficient of Friction can be determined from the
following mathematical model ( refer Table 4.),
Where V4 =Thermal conductivity, V3 =Thermal diffusivity and V5= Toughness
Where V2
Using GP simulation, Rockwell Hardness number on C- scale can be
determined from the following mathematical model (refer Table2.),
Where V4 =Thermal conductivity, V1 =Thermal diffusivity and V0= Toughness
The percentage deviation of GP (expected) and experimental results for Normal
grinding forces simulation of the Grinding Machining process are shown on Figure 1
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and the Tangential grinding forces are presented in Figure 2. Whereas results of
surface roughness Ra during grinding and lapping operations are shown in figure 3
and figure 4 respectively. The Discipulus GP technique was able to simulate these
output variables within an average of 1.9% of their measured value, with no value
exceeding a 5% deviation.
Figure 1. Percentage deviation curve between the best models regarding individual generation and experimental results ofpercentage porosity.
Figure 2. Percentage deviation curve between the best models regarding individual generation and experimental results of wearrate.
Figure 3. Percentage deviation curve between the best models regarding individual generation and experimental results of
coefficient of friction.
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Figure 4. Percentage deviation curve between the best models regarding individual generation and
experimental results of hardness
4 CONCLUSIONGenetic programming (GP) is a highly versatile and useful tool for identifying
relationships in data for which a more precise theoretical construct is unavailable. The
experimental data in this research were in fact the environment to which the
population of models had to be adapted as much as possible. The models presented
are a result of the self-organization and stochastic processes taking place during
simulated evolution. In the research the genetic programming was used for predicting
the mechanical and tribological characteristics. In the proposed concept the
mathematical models for verifying the machinability are subject to adaptation. After
many trials, with the help of validation and testing data, the fittest model reliability is
98%. Thus, in this case the reliability was almost nearly 100% since some of
genetically developed models of mechanical and tribological parameters of ceramic
oxide coatings, out of many successful solutions are presented here. The accuracies of
solutions obtained by GP depend on applied evolutionary parameters and also on the
number of measurements and the accuracy of measurement. In general, more
measurements supply more information to evolution which improves the structures of
models and we have provided enough data.
In this paper, the genetic programming was used for predicting the mechanical and
tribological characteristics for verifying the experimental results of Controlling
parameters subject to adaptation. Its reliability is 98% in different parameters
prediction. In the testing phase, the genetically produced model gives the same result
as actually found out during the experiment, thereby with the reliability of cent
percent. It is inferred from our research findings that the genetic programming
approach could be well used for the prediction of Mechanical and tribological
characteristics of ceramic coatings without conducting the experiments. This helps to
establish efficient planning and optimizing of process for the quality production of
ceramic coatings depending upon the functional requirements by developing a
mathematical model.
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