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Road- Map of Project
Define
•Identify Customer and project CTQ
•Develop Team Charter
•Develop process Map
•Get approval for Project
Measure
•Select CTQ Characteristic
•Data Collection Plan (DCP)
•Conduct MSA
•Conduct Basic Data Analysis ( To see frequency of Defect)
Analyze
•Identify Potential X’s through statistical tools.
•Conduct Statistical tests to see is relationship exists between X and Y
Improve
•Screen for Vital X’s effecting Y
•Discover Variable Relationship
•Establish Operating Tolerance
Control
•Define Process capability
•Establish Control plan
Define
Define Project Charter
Business Case
Jeddah Cable company manufactures wires and cable products used for construction , energy ,signal process
,transportation, communication and oil and gas sectors, present directly in 10 distribution locations from Malaysia to U.K
with direct offices in every major city in the GCC. From the months of august and September 2012 , there is an
increase in the shorted % of drums , the shorted % for every month should be 1.3% but from past 2 months its more
than 2% which creates lot of scrap and also re-work which is a business loss for the company.
Problem Statement
Shorted Reports for the months of August and September 2012 have been reviewed, the shorted % during these 2
months is 2% which is very high the shorted % should be 1.3% if this is not achieved ,there is more of scrap and re-
work which again is a waste of time and money .Moreover the customers are also dissatisfied because of the delayed
delivery dates. This is creating business loss and needs to be addressed immediately.
Goal Statement
The main aim of this project is to decrease the shorted from 2% to 1.3% to avoid business loss and re-work time
with increased performance.
Project Charter…
In scope
Quality Department, Production Department.
Define
Out scope
New Hires From the month of October
Project Plan
Project Team
Sponsor – Hilal
Champion Meer vajithulla
MBB – Dheerendra S Negi
Mentor – Dheerendra S Negi
BB – Shaik Noor Ahmed
Target Date Actual Date
Start Date 1 Oct’12 1 oct’12
Define 7 Oct ‘12 7 Oct ‘12
Measure 14 Oct ‘12 14 Oct ‘12
Analyze 21 Oct ‘12 21 Oct ‘12
Improve 28 Oct ‘12 28 Oct ‘12
Control 5 nov’12 5 nov’12
Define Voice Of Customer (VOC)
Customer VOC CTQ
Quality manager Shorted % should be less
than 1.3% for all the months
so that quality target at the
end of the year can be
achieved.
Shorted % should be less
than 1.3% every month.
Production manager To avoid re-work and
wastage of scrap the shorted
% should be maintained
Shorted % should be less
than 1.3% every month
Customer service manager To avoid delayed delivery of
the cables and to increase
the customer satisfaction we
should avoid shorted cables.
. Shorted % should be less
than 1.3% every month
Define ARMI
Key
Stakeholders
ARMI Worksheet
Define Measure Analyze Improve Control
Hilal I I I I I
Kareem I I I I I
Sharif I & A I & A I & A I & A I & A
ramana I & M I & M I & M I & M I & M
Shaik Noor
Ahmed
R & M R & M R & M R & M R & M
Communication Plan
Information Or Activity Target Audience Information Channel Who When
Project Status Leadership E-mails Hilal BI-Weekly
Tollgate Review BB,LBB,MBB & Champion E-mails or Meetings Hilal As per Project Plan
Project Deliverables or Activities Project Team Emails, Meetings Hilal Weekly
A – Approval of teams decision outside their charter / authorities, i.e. Sponsor
R – Resource of the team, the one whose expertise may be needed on a irregular / ad hoc basis
M – Member of the team, with the authority & periphery of the charter
I – Interested party, one who needs to kept informed on the findings & directions, if in the later
phase found to be as a worthy outcome
d
Define
CTQ TreeDefine
Maintaining
shorted % as
1.3% every
month
CTQs
Improving the quality of the
cable by avoiding shorted .
(Project Y)
Decreasing the scrap during re-
work
Meeting the targets during the
year end
Avoiding re-work and machine
hours
(Project Y)
d
Define
SIPOC
Process
 Raw material
received to the
machine
 operator loads the
machine with the raw
material
 operator starts the
machine
 process is done
and the insulation is
done on the cable
 after the quantity of
Xlpe is consumed
completely the
operator slows down
the machine
 Operator stops the
machine
Outputs
o received material
o material is loaded
o Machine started
o Processing is done
o Machine is slowed
down
o Machine is stopped
Customers
Finished cable is
ready
Suppliers
•Sabic.
Inputs
 Xlpe
Labour
Machiene
Row material
d
DefineDefine
Data Collection Plan m
MEASURE
What question do you want to answer?
What is the current shorted % that we have
KPI Operational Definition Defect Def
Performance
Std
Specification Limit
Opportunity
LSL USL
shorted % of every
month should be
1.3%
Cable is shorted whenever
ther e is high voltage test
done ,this should not happen
the total shorted
% should not be
more than 1.3%
<1.3% NA 1.3 Monthly %
How would you gauge the current AHT?
Process wise & Team wise current AHT of Reach out customer
care
KPI
Data
Type
Data Items
Needed
Unit
Plan to collect Data
Plan to
sample
What Database
or Container
will be used to
record this
data?
Is this an
existing
database
or new?
If new,
When will
the
database
be ready
for use?
When is
the
planned
start date
for data
collection?
Total number of
drums produced
Continuo
us
Total drums
produced
No of
drums
Excel sheet Existing NA 14-Nov-12
Record the
total
number of
shorted
drums.
Define
Validate Measurement
System Gage R&R ANOVA Method
Gage R&R
%Contribution
Source VarComp (of VarComp)
Total Gage R&R 5.6 0.01
Repeatability 3.9 0.01
Reproducibility 1.6 0.00
Operater_1 0.3 0.00
Operater_1*Agent Name_1 1.3 0.00
Part-To-Part 42843.7 99.99
Total Variation 42849.3 100.00
Process tolerance = 320
Study Var %Study Var %Tolerance
Source StdDev (SD) (6 * SD) (%SV) (SV/Toler)
Total Gage R&R 2.361 14.17 1.14 4.43
Repeatability 1.981 11.89 0.96 3.71
Reproducibility 1.285 7.71 0.62 2.41
Operater_1 0.577 3.46 0.28 1.08
Operater_1*Agent Name_1 1.147 6.88 0.55 2.15
Part-To-Part 206.987 1241.92 99.99 388.10
Total Variation 207.001 1242.00 100.00 388.13
Number of Distinct Categories = 123
 The above test was conducted with 2 using 3 samples.
 Gage failed even 2nd time as not meeting criteria of below mentioned:-
 % Contribution of total Gage R&R is less than Part to Part
 % Tolerance of Gage R&R to that of the total variation is less than 10%
 No. of distinct categories is more than 4
Measure
Measure: Normality
11
 Normality: P value >
0.005
 Shape: Normal
 Measure of central
tendency :Data is
normal therefore we will
consider it as Mean-
83%
 Since the P value for Anderson Darling test is > 0.05, therefore this indicates that the data is Normal
 The Minimum Internal Quality has been reported as 56% & Maximum has been reported as 100%. The
Standard deviation is 7, indicating that there is more variation in the process
 The aim of the project is to improve the avg. daily Quality from 84% to 98% or above
Measure
Measure Process Stability
 According to P Value, we can see, there is no Cluster, Mixture, Oscillation & Trend.
 This data is stable.
 The outlier have been note down & would be investigating & to find out for any special reason
Measure Process Capability
 Based on Capability Sixpack:-
CPK (-0.59) it shows, our process is not doing as per the client expectation
 Process is not capable to perform as per the client expectation, therefore
required a significant improvement.
Cause & Effect Diagram (Ishikawa)
Shorted of drums happen mainly due to measurements,
material,personnel,environment ,methods and machines
Analyze
S.
N.
Project Potential
Causes
Operational Definition Data
Type
Test to be Performed
1
Shorted
%
Training
duration
Operators and Q.C inspectors should be trained on the
shorted drums.
Continuou
s
Mamm whitney
2 Shorted
% packing The drums should be solidly packed to avoid shorted
Continuou
s
Correlation Regression
3 Shorted
% traverse
A cable should be in a good traverse so that it does not
comes in contact with the drum flange
Continuou
s Mann-whitney
4 Shorted
%
Machine
loose
tension
Machine tension should be high as lots of shorted
happen due to cable is in the take up process
Continuou
s
Mann –whitney
5
Shorted
% Xlpe
Xlpe should be heated before it goes for the assembly
process
Continous Correlation Regression
6 Shorted
% Conductor
s overlap
The conductors during assembly process should not
overlap amongst others to avoid shorted
continous Correlation regression
Analyze
Hypothesis TestAnalyze
Shorted % Vs Supervisor
Mood median test for Collection
Chi-Square = 6.78 DF = 5 P = 0.238
Team Individual 95.0% CIs
Leader N<= N> Median Q3-Q1 -----+---------+---------+----
-----+-
Anish 27 30 8884 3762 (----*----------)
Biky 22 36 9434 3897 (-----*------)
Gaurav 15 17 9009 4486 (--------------*--------------)
Mohit 35 24 8263 4812 (-----*--------)
Nitin 27 20 8614 3761 (----------*------)
Pankaj 26 25 8597 3125 (------*--------)
-----+---------+---------+---------+-
8000 9000 10000 11000
Overall median = 8839
Greater than
0.05
Above Hypothesis test shows shorted and Team leaders are independent of each other so we
conclude Shorted Has No Impact on the process
Hypothesis TestAnalyze
Shorted Quality Score versus Trainer
Mood Median Test: Quality Score versus Trainer
Mood median test for Quality Score
Chi-Square = 219.72 DF = 7 P = 0.000
Individual 95.0% CIs
Trainer N<= N> Median Q3-Q1 ---+---------+---------+----
-----+---
Gagan 275 181 0.7900 0.0700 *
Kishore 153 291 0.8400 0.0900 *
Lalit 243 154 0.7900 0.0700 *
Praveen 242 147 0.7900 0.0700 *
Ruhani 151 288 0.8400 0.0900 (------------*
Sudesh 152 292 0.8400 0.0900 *
Varun 218 146 0.7900 0.0700 *
Vinay 257 181 0.7900 0.0700 *
---+---------+---------+---------+---
0.795 0.810 0.825 0.840
Overall median = 0.7900
Greater than
0.05
Above Hypothesis test shows shorted and Shifts are independent of each other so we conclude
Shift Has No Impact on the collection of the process
Hypothesis TestAnalyze
Shorted % Vs Experience [YC XC]
Regression Analysis: Quality Score versus
Experience
The regression equation is
Quality Score = 0.7099 + 0.005302 Experience
S = 0.0533682 R-Sq = 25.6% R-Sq(adj) =
25.6%
Analysis of Variance
Source DF SS MS F P
Regression 1 3.3028 3.30277 1159.61
0.000
Error 3369 9.5955 0.00285
Total 3370 12.8982
Hypothesis TestAnalyze
Age & Quality Score of shorted
Correlations: Quality Score, Age
Pearson correlation of Quality Score and Age = -0.029
P-Value = 0.094
The age and quality scores are plotted and there is no impact.
Analyze Box Plot for Quality
After plotting the box plot we found out that there is huge variation in shorted cables.
Hypothesis TestAnalyze
shorted Vs Utilization
General Linear Model: Collection versus Shifts
Factor Type Levels
Utilization fixed 246
Source DF Seq SS Adj SS Adj MS F P
Utilization 245 2394882512 2394882512 9775031 1.13
0.292
Error 58 501128672 501128672 8640150
Total 303 2896011184
S = 2939.41 R-Sq = 82.70% R-Sq(adj) = 9.60%
Greater than
0.05
Above Hypothesis test shows shorted and Utilization are independent of each other so we
conclude Utilization Has No Impact on the shorted of the process
Hypothesis TestAnalyze
shorted Vs Accounts Worked
General Linear Model: Collection versus Work
Factor Type Levels
Work fixed 23
Analysis of Variance for Collection, using Adjusted SS for Tests
Source DF Seq SS Adj SS Adj MS F P
Work 229 2420959614 2420959614 10571876 1.65 0.32
Error 74 475051570 475051570 6419616
Total 303 2896011184
S = 2533.70 R-Sq = 13.60% R-Sq(adj) = 32.83%
Greater than
0.05
Above Hypothesis test shows shorted and Accounts worked are not dependent of each other so
we conclude Accounts worked do not have significant Impact on the shorted of the process
Hypothesis TestAnalyze
shorted Vs Average Payment Size (APS)
Correlations: Collection, Average Payment Size
Pearson correlation of Collection and Average Payment Size = -0.003
P-Value = 0.961
Regression Analysis: Collection versus Average Payment Size
The regression equation is
Collection = 9194 - 0.14 Average Payment Size
Predictor Coef SE Coef T P
Constant 9193.5 502.5 18.30 0.000
Average Payment Size -0.144 2.937 -0.05 0.961
S = 3096.67 R-Sq = 0.0% R-Sq(adj) = 0.0%
Analysis of Variance
Source DF SS MS F P
Regression 1 23115 23115 0.00 0.961
Residual Error 302 2895988068 9589364
Total 303 2896011184
Above Hypothesis test shows shorted and APS are independent of each other so we conclude
APS do not have significant Impact on the shorted of the process
P- Value for
both correlation
and
Regression is
greater than
0.05
Hypothesis TestAnalyze
shorted Vs Gender
Mood median test for Collection
Chi-Square = 1.44 DF = 1 P = 0.230
Individual 95.0% CIs
Gender N<= N> Median Q3-Q1 -------+---------+---------+-------
--
Female 23 31 9240 3995 (------*--------------------)
Male 129 121 8686 3863 (-----*----)
-------+---------+---------+---------
8800 9600 10400
Overall median = 8839
Greater than
0.05
Above Hypothesis test shows shorted and Gender are independent of each other so we
conclude that gender do not have significant Impact on the shorted of the process
Hypothesis TestAnalyze
shorted Vs Marital Status
Mood median test for Collection
Chi-Square = 0.37 DF = 1 P = 0.543
Marital Individual 95.0% CIs
Status N<= N> Median Q3-Q1 ----+---------+---------+---------
+--
Married 48 53 8912 3338 (----------------*----------------)
Unmarried 104 99 8686 4173 (----------*----------)
----+---------+---------+---------+--
8400 8800 9200 9600
Overall median = 8839
Greater than
0.05
Above Hypothesis test shows shorted and Marital Statusare independent of each other so we
conclude that gender do not have significant Impact on the shorted of the process
Hypothesis TestAnalyze
shorted Vs Education
Mood median test for Collection
Chi-Square = 0.03 DF = 2 P = 0.987
Individual 95.0% CIs
Education N<= N> Median Q3-Q1 -------+---------+---------+--
-------
graduate 114 113 8820 3846 (-------*------)
postgraduate 15 15 8656 3308 (----------*--------------------)
Undegraduate 23 24 8866 3722 (-----------*----------------)
-------+---------+---------+---------
8400 9100 9800
Overall median = 8839
Greater than
0.05
Above Hypothesis test shows shorted and Education are independent of each other so we
conclude that Education do not have significant Impact on the shorted of the process
Hypothesis TestAnalyze
shorted Vs Experience
Mood median test for Collection
Chi-Square = 3.26 DF = 3 P = 0.353
Individual 95.0% CIs
Experience N<= N> Median Q3-Q1 --------+---------+---------+--
------
0 to 1 43 43 8827 3847 (--------*--------)
1 to 2 46 56 9222 4649 (---------------*------------)
2 to 3 49 36 8259 3654 (-----*----------)
3 and above 14 17 9165 3537 (--------------*---------------)
--------+---------+---------+--------
8400 9100 9800
Overall median = 8839
Greater than
0.05
Above Hypothesis test shows shorted and Experience are independent of each other so we
conclude that Experience do not have significant Impact on the shorted of the process
Hypothesis TestAnalyze
shorted Vs Experience Type
Mood median test for Collection
Chi-Square = 129.87 DF = 2 P = 0.000
Previous Individual 95.0% CIs
experience N<= N> Median Q3-Q1 -+---------+---------+--------
-+-----
C 53 85 9275 3473 (*-)
CS 13 67 11174 3222 (--*---)
obs 86 0 6125 2419 (-*-)
-+---------+---------+---------+-----
6000 8000 10000 12000
Overall median = 8839
Smaller than
0.05
Above Hypothesis test shows shorted and Experience Type are dependent of each other so we
conclude that Experience type do have significant Impact on the shorted of the process
Hypothesis TestAnalyze
shorted Vs Tenure
Mood Median Test: Collection versus Tenure
Mood median test for Collection
Chi-Square = 52.39 DF = 2 P = 0.000
Individual 95.0% CIs
Tenure N<= N> Median Q3-Q1 ------+---------+---------+----
-----+
0 to 1 years 111 48 7747 3493 (--*---)
2-3 years 25 61 9675 3369 (----*--------)
3 yrs + 16 43 10248 3908 (-----*-------)
------+---------+---------+---------+
8000 9000 10000 11000
Overall median = 8839
Smaller than
0.05
Above Hypothesis test shows shorted and Tenure are dependent of each other so we conclude
that Tenure do have significant Impact on the shorted of the process
Box Plot Demonstration of shorted
and trainer
Analyze
After plotting boxplot for trainers we found out that sudesh,ruhani,and kishore have huge
variation compared to others.
S No. Vital Cause Data Type Test performed P- Value
1 supervisors discrete Moods median test 0.238
2 Age of operator discrete
Pearson
correalation
0094
3 experience discrete Moods Median 0.006
4 education discrete Moods median 0.987
4 Marital status discrete Moods median 0
Results of validation of potential X’s
impacting AHT
Analyze
Improve Vital X’s effecting our Y (collection)
Low Cost
High Cost
HighImpact
LowImpact
•Tenure
•Experience Background
•Team Leader
•Process Knowledge
•Utilization
•Accounts Worked
•RPC
•APS
•Gender
•Marital Status
•Education
Training of operators- Training
of operators can be provided as it does
not cost anything , the managers and
engineers can easily train them .
•Shift
•Experience
Machine issues-
machines can be costly
because it involves lots of
money to change them.
BrainstormingImprove
Quality Function DeploymentImprove
Priority
Priorityweightage
Implementrecreationalactivitycalendar
Implementinhouseskillimprovement
trainingcalendar
Hiringteamtoscreenexperiencedprofilesfor
hiring
Implement>1yearexperienceincallingfor
telecomprocessintheJobdescription
Evaluatetheremunerationgridwith
leadershipinvolvingHR,Compensationand
Benefit&Recruitmentteam
Implemettherevisedgrid
Monitorweeklytypingspeedoftheassociates
hiremoreexperiencedengineers
Conductmonthlytypingassesment
IdentifyconsistentTypingtestfailures&
recommendprocessimprovementplan
RefertobenchpostnoresultinPIP
ConductsessionwithTraining,HR&
Recruitmentteam
Implementchangesbasedontheprocess
requirement&floatthenewapprovedversion
Implementchangestothehiringassesment
thresholdsbasedontheprocessrequirement&
floatthenewapprovedversion
Conductassesmentforexistingtrainersto
qualifyforgivingtraining
Implementchangestotheculture&pre
processtrainingassesmentthresholdsbasedon
theprocessrequirement
Changestotheculture&preprocesstraining
assesmentthresholdstobeapprovedfrom
Clientbeforeimplementation
LinktheHalfyearlyassementscoretothe
associateGoalform
Conductprocesstest
IdentifyscenariobasedtrainingneedfromAH
Tperspective
Conductprocesstrainingrefresherforbottom
performers
Evaluaterefreshertrainingmonthlyscores
Recommendallassementfailuresforprocess
improvementplan
RefertobenchpostnoresultinPIP
Linkthequaterlyassementscoretothe
associateGoalform
TotalPriorityWeightage
Totalpriorityscore
Introduce technical
training program for the
operators
4 4 4 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 32 8
Experienced people to be
hired by recruitment team
4 0 0 4 4 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 32 8
Offer good package to
experienced candidates as
per the market standards
4 0 0 0 0 4 4 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 32 8
maintenance team should
have experienced
engineers so that there
should not be any machine
break downs
5 0 0 0 0 0 0 5 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 25 5
evaluate the operator on
monthly basis
5 0 0 0 0 0 0 0 5 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 25 5
Failure Mode Effect AnalysisImprove
• Please find attached FMEA for
JEDDAH
BOM Comparison Post ImprovementImprove
Variable N N* Mean SE Mean StDev Minimum Q1 Median
Old BOM 304 0 3858.8 75.8 1322.3 342.9 2894.8 3729.5 4684.7
New BOM 304 0 4804.4 89.8 1565.9 422.3 3648.6 4692.6 5832.8
This Box-Plot
Demonstration clearly
shows Our new BOM
performance is
significantly better than
old BOM
Shorted Comparison Post
Improvement
Improve
Mann-Whitney Test and CI: Old Collection,
New Collection
N Median
Old Collection 304 8839
New Collection 304 12464
Point estimate for ETA1-ETA2 is -3994
95.0 Percent CI for ETA1-ETA2 is (-4853,-3191)
W = 69925.0
Test of ETA1 = ETA2 vs ETA1 < ETA2 is significant at 0.0000
Mann Whitney test has shown that there has been significant improvement in the median of the
new shorted
P-Value is
less than 0.05
shorted Comparison Post
Improvement
Improve
Descriptive Statistics: Old shorted , New shorted
Variable Mean TrMean StDev Minimum Q1 Median Q3 Maximum
Old shorted 9170 9114 3092 745 7301 8839 11130 19083
New shorted 16689 15250 12032 1183 9283 12464 19333 84275
This Box-Plot
Demonstration clearly
shows Our new shorted
performance is
significantly better than
old shorted
Control Chart of Training post
Improvement
Control
This Control chart shows our TOS process is under control with improvement i.e, we have sustained this
improvement now.
Control Chart of BOM post
Improvement
Improve
Above Control Chart shows our BOM process is under statistical control. That means we have
sustained our improvement in BOM
Shorted Comparison Post
Improvement
Improve
This Control chart clearly shows that our shorted process is working under control. That is we have
sustained the improvement that we achieved in our collection
Mean has been shifted from 682 to 519 sec. It means significant improvement has been done. 42
I
Improve
Shorted decreasedCONTROL
We have statistically proved that our shorted has
decrease and our process in under statistical Control

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Six sigma-black-belt-project-sample

  • 2. Road- Map of Project Define •Identify Customer and project CTQ •Develop Team Charter •Develop process Map •Get approval for Project Measure •Select CTQ Characteristic •Data Collection Plan (DCP) •Conduct MSA •Conduct Basic Data Analysis ( To see frequency of Defect) Analyze •Identify Potential X’s through statistical tools. •Conduct Statistical tests to see is relationship exists between X and Y Improve •Screen for Vital X’s effecting Y •Discover Variable Relationship •Establish Operating Tolerance Control •Define Process capability •Establish Control plan Define
  • 3. Define Project Charter Business Case Jeddah Cable company manufactures wires and cable products used for construction , energy ,signal process ,transportation, communication and oil and gas sectors, present directly in 10 distribution locations from Malaysia to U.K with direct offices in every major city in the GCC. From the months of august and September 2012 , there is an increase in the shorted % of drums , the shorted % for every month should be 1.3% but from past 2 months its more than 2% which creates lot of scrap and also re-work which is a business loss for the company. Problem Statement Shorted Reports for the months of August and September 2012 have been reviewed, the shorted % during these 2 months is 2% which is very high the shorted % should be 1.3% if this is not achieved ,there is more of scrap and re- work which again is a waste of time and money .Moreover the customers are also dissatisfied because of the delayed delivery dates. This is creating business loss and needs to be addressed immediately. Goal Statement The main aim of this project is to decrease the shorted from 2% to 1.3% to avoid business loss and re-work time with increased performance.
  • 4. Project Charter… In scope Quality Department, Production Department. Define Out scope New Hires From the month of October Project Plan Project Team Sponsor – Hilal Champion Meer vajithulla MBB – Dheerendra S Negi Mentor – Dheerendra S Negi BB – Shaik Noor Ahmed Target Date Actual Date Start Date 1 Oct’12 1 oct’12 Define 7 Oct ‘12 7 Oct ‘12 Measure 14 Oct ‘12 14 Oct ‘12 Analyze 21 Oct ‘12 21 Oct ‘12 Improve 28 Oct ‘12 28 Oct ‘12 Control 5 nov’12 5 nov’12
  • 5. Define Voice Of Customer (VOC) Customer VOC CTQ Quality manager Shorted % should be less than 1.3% for all the months so that quality target at the end of the year can be achieved. Shorted % should be less than 1.3% every month. Production manager To avoid re-work and wastage of scrap the shorted % should be maintained Shorted % should be less than 1.3% every month Customer service manager To avoid delayed delivery of the cables and to increase the customer satisfaction we should avoid shorted cables. . Shorted % should be less than 1.3% every month
  • 6. Define ARMI Key Stakeholders ARMI Worksheet Define Measure Analyze Improve Control Hilal I I I I I Kareem I I I I I Sharif I & A I & A I & A I & A I & A ramana I & M I & M I & M I & M I & M Shaik Noor Ahmed R & M R & M R & M R & M R & M Communication Plan Information Or Activity Target Audience Information Channel Who When Project Status Leadership E-mails Hilal BI-Weekly Tollgate Review BB,LBB,MBB & Champion E-mails or Meetings Hilal As per Project Plan Project Deliverables or Activities Project Team Emails, Meetings Hilal Weekly A – Approval of teams decision outside their charter / authorities, i.e. Sponsor R – Resource of the team, the one whose expertise may be needed on a irregular / ad hoc basis M – Member of the team, with the authority & periphery of the charter I – Interested party, one who needs to kept informed on the findings & directions, if in the later phase found to be as a worthy outcome d Define
  • 7. CTQ TreeDefine Maintaining shorted % as 1.3% every month CTQs Improving the quality of the cable by avoiding shorted . (Project Y) Decreasing the scrap during re- work Meeting the targets during the year end Avoiding re-work and machine hours (Project Y) d Define
  • 8. SIPOC Process  Raw material received to the machine  operator loads the machine with the raw material  operator starts the machine  process is done and the insulation is done on the cable  after the quantity of Xlpe is consumed completely the operator slows down the machine  Operator stops the machine Outputs o received material o material is loaded o Machine started o Processing is done o Machine is slowed down o Machine is stopped Customers Finished cable is ready Suppliers •Sabic. Inputs  Xlpe Labour Machiene Row material d DefineDefine
  • 9. Data Collection Plan m MEASURE What question do you want to answer? What is the current shorted % that we have KPI Operational Definition Defect Def Performance Std Specification Limit Opportunity LSL USL shorted % of every month should be 1.3% Cable is shorted whenever ther e is high voltage test done ,this should not happen the total shorted % should not be more than 1.3% <1.3% NA 1.3 Monthly % How would you gauge the current AHT? Process wise & Team wise current AHT of Reach out customer care KPI Data Type Data Items Needed Unit Plan to collect Data Plan to sample What Database or Container will be used to record this data? Is this an existing database or new? If new, When will the database be ready for use? When is the planned start date for data collection? Total number of drums produced Continuo us Total drums produced No of drums Excel sheet Existing NA 14-Nov-12 Record the total number of shorted drums. Define
  • 10. Validate Measurement System Gage R&R ANOVA Method Gage R&R %Contribution Source VarComp (of VarComp) Total Gage R&R 5.6 0.01 Repeatability 3.9 0.01 Reproducibility 1.6 0.00 Operater_1 0.3 0.00 Operater_1*Agent Name_1 1.3 0.00 Part-To-Part 42843.7 99.99 Total Variation 42849.3 100.00 Process tolerance = 320 Study Var %Study Var %Tolerance Source StdDev (SD) (6 * SD) (%SV) (SV/Toler) Total Gage R&R 2.361 14.17 1.14 4.43 Repeatability 1.981 11.89 0.96 3.71 Reproducibility 1.285 7.71 0.62 2.41 Operater_1 0.577 3.46 0.28 1.08 Operater_1*Agent Name_1 1.147 6.88 0.55 2.15 Part-To-Part 206.987 1241.92 99.99 388.10 Total Variation 207.001 1242.00 100.00 388.13 Number of Distinct Categories = 123  The above test was conducted with 2 using 3 samples.  Gage failed even 2nd time as not meeting criteria of below mentioned:-  % Contribution of total Gage R&R is less than Part to Part  % Tolerance of Gage R&R to that of the total variation is less than 10%  No. of distinct categories is more than 4 Measure
  • 11. Measure: Normality 11  Normality: P value > 0.005  Shape: Normal  Measure of central tendency :Data is normal therefore we will consider it as Mean- 83%  Since the P value for Anderson Darling test is > 0.05, therefore this indicates that the data is Normal  The Minimum Internal Quality has been reported as 56% & Maximum has been reported as 100%. The Standard deviation is 7, indicating that there is more variation in the process  The aim of the project is to improve the avg. daily Quality from 84% to 98% or above Measure
  • 12. Measure Process Stability  According to P Value, we can see, there is no Cluster, Mixture, Oscillation & Trend.  This data is stable.  The outlier have been note down & would be investigating & to find out for any special reason
  • 13. Measure Process Capability  Based on Capability Sixpack:- CPK (-0.59) it shows, our process is not doing as per the client expectation  Process is not capable to perform as per the client expectation, therefore required a significant improvement.
  • 14. Cause & Effect Diagram (Ishikawa) Shorted of drums happen mainly due to measurements, material,personnel,environment ,methods and machines Analyze
  • 15. S. N. Project Potential Causes Operational Definition Data Type Test to be Performed 1 Shorted % Training duration Operators and Q.C inspectors should be trained on the shorted drums. Continuou s Mamm whitney 2 Shorted % packing The drums should be solidly packed to avoid shorted Continuou s Correlation Regression 3 Shorted % traverse A cable should be in a good traverse so that it does not comes in contact with the drum flange Continuou s Mann-whitney 4 Shorted % Machine loose tension Machine tension should be high as lots of shorted happen due to cable is in the take up process Continuou s Mann –whitney 5 Shorted % Xlpe Xlpe should be heated before it goes for the assembly process Continous Correlation Regression 6 Shorted % Conductor s overlap The conductors during assembly process should not overlap amongst others to avoid shorted continous Correlation regression Analyze
  • 16. Hypothesis TestAnalyze Shorted % Vs Supervisor Mood median test for Collection Chi-Square = 6.78 DF = 5 P = 0.238 Team Individual 95.0% CIs Leader N<= N> Median Q3-Q1 -----+---------+---------+---- -----+- Anish 27 30 8884 3762 (----*----------) Biky 22 36 9434 3897 (-----*------) Gaurav 15 17 9009 4486 (--------------*--------------) Mohit 35 24 8263 4812 (-----*--------) Nitin 27 20 8614 3761 (----------*------) Pankaj 26 25 8597 3125 (------*--------) -----+---------+---------+---------+- 8000 9000 10000 11000 Overall median = 8839 Greater than 0.05 Above Hypothesis test shows shorted and Team leaders are independent of each other so we conclude Shorted Has No Impact on the process
  • 17. Hypothesis TestAnalyze Shorted Quality Score versus Trainer Mood Median Test: Quality Score versus Trainer Mood median test for Quality Score Chi-Square = 219.72 DF = 7 P = 0.000 Individual 95.0% CIs Trainer N<= N> Median Q3-Q1 ---+---------+---------+---- -----+--- Gagan 275 181 0.7900 0.0700 * Kishore 153 291 0.8400 0.0900 * Lalit 243 154 0.7900 0.0700 * Praveen 242 147 0.7900 0.0700 * Ruhani 151 288 0.8400 0.0900 (------------* Sudesh 152 292 0.8400 0.0900 * Varun 218 146 0.7900 0.0700 * Vinay 257 181 0.7900 0.0700 * ---+---------+---------+---------+--- 0.795 0.810 0.825 0.840 Overall median = 0.7900 Greater than 0.05 Above Hypothesis test shows shorted and Shifts are independent of each other so we conclude Shift Has No Impact on the collection of the process
  • 18. Hypothesis TestAnalyze Shorted % Vs Experience [YC XC] Regression Analysis: Quality Score versus Experience The regression equation is Quality Score = 0.7099 + 0.005302 Experience S = 0.0533682 R-Sq = 25.6% R-Sq(adj) = 25.6% Analysis of Variance Source DF SS MS F P Regression 1 3.3028 3.30277 1159.61 0.000 Error 3369 9.5955 0.00285 Total 3370 12.8982
  • 19. Hypothesis TestAnalyze Age & Quality Score of shorted Correlations: Quality Score, Age Pearson correlation of Quality Score and Age = -0.029 P-Value = 0.094 The age and quality scores are plotted and there is no impact.
  • 20. Analyze Box Plot for Quality After plotting the box plot we found out that there is huge variation in shorted cables.
  • 21. Hypothesis TestAnalyze shorted Vs Utilization General Linear Model: Collection versus Shifts Factor Type Levels Utilization fixed 246 Source DF Seq SS Adj SS Adj MS F P Utilization 245 2394882512 2394882512 9775031 1.13 0.292 Error 58 501128672 501128672 8640150 Total 303 2896011184 S = 2939.41 R-Sq = 82.70% R-Sq(adj) = 9.60% Greater than 0.05 Above Hypothesis test shows shorted and Utilization are independent of each other so we conclude Utilization Has No Impact on the shorted of the process
  • 22. Hypothesis TestAnalyze shorted Vs Accounts Worked General Linear Model: Collection versus Work Factor Type Levels Work fixed 23 Analysis of Variance for Collection, using Adjusted SS for Tests Source DF Seq SS Adj SS Adj MS F P Work 229 2420959614 2420959614 10571876 1.65 0.32 Error 74 475051570 475051570 6419616 Total 303 2896011184 S = 2533.70 R-Sq = 13.60% R-Sq(adj) = 32.83% Greater than 0.05 Above Hypothesis test shows shorted and Accounts worked are not dependent of each other so we conclude Accounts worked do not have significant Impact on the shorted of the process
  • 23. Hypothesis TestAnalyze shorted Vs Average Payment Size (APS) Correlations: Collection, Average Payment Size Pearson correlation of Collection and Average Payment Size = -0.003 P-Value = 0.961 Regression Analysis: Collection versus Average Payment Size The regression equation is Collection = 9194 - 0.14 Average Payment Size Predictor Coef SE Coef T P Constant 9193.5 502.5 18.30 0.000 Average Payment Size -0.144 2.937 -0.05 0.961 S = 3096.67 R-Sq = 0.0% R-Sq(adj) = 0.0% Analysis of Variance Source DF SS MS F P Regression 1 23115 23115 0.00 0.961 Residual Error 302 2895988068 9589364 Total 303 2896011184 Above Hypothesis test shows shorted and APS are independent of each other so we conclude APS do not have significant Impact on the shorted of the process P- Value for both correlation and Regression is greater than 0.05
  • 24. Hypothesis TestAnalyze shorted Vs Gender Mood median test for Collection Chi-Square = 1.44 DF = 1 P = 0.230 Individual 95.0% CIs Gender N<= N> Median Q3-Q1 -------+---------+---------+------- -- Female 23 31 9240 3995 (------*--------------------) Male 129 121 8686 3863 (-----*----) -------+---------+---------+--------- 8800 9600 10400 Overall median = 8839 Greater than 0.05 Above Hypothesis test shows shorted and Gender are independent of each other so we conclude that gender do not have significant Impact on the shorted of the process
  • 25. Hypothesis TestAnalyze shorted Vs Marital Status Mood median test for Collection Chi-Square = 0.37 DF = 1 P = 0.543 Marital Individual 95.0% CIs Status N<= N> Median Q3-Q1 ----+---------+---------+--------- +-- Married 48 53 8912 3338 (----------------*----------------) Unmarried 104 99 8686 4173 (----------*----------) ----+---------+---------+---------+-- 8400 8800 9200 9600 Overall median = 8839 Greater than 0.05 Above Hypothesis test shows shorted and Marital Statusare independent of each other so we conclude that gender do not have significant Impact on the shorted of the process
  • 26. Hypothesis TestAnalyze shorted Vs Education Mood median test for Collection Chi-Square = 0.03 DF = 2 P = 0.987 Individual 95.0% CIs Education N<= N> Median Q3-Q1 -------+---------+---------+-- ------- graduate 114 113 8820 3846 (-------*------) postgraduate 15 15 8656 3308 (----------*--------------------) Undegraduate 23 24 8866 3722 (-----------*----------------) -------+---------+---------+--------- 8400 9100 9800 Overall median = 8839 Greater than 0.05 Above Hypothesis test shows shorted and Education are independent of each other so we conclude that Education do not have significant Impact on the shorted of the process
  • 27. Hypothesis TestAnalyze shorted Vs Experience Mood median test for Collection Chi-Square = 3.26 DF = 3 P = 0.353 Individual 95.0% CIs Experience N<= N> Median Q3-Q1 --------+---------+---------+-- ------ 0 to 1 43 43 8827 3847 (--------*--------) 1 to 2 46 56 9222 4649 (---------------*------------) 2 to 3 49 36 8259 3654 (-----*----------) 3 and above 14 17 9165 3537 (--------------*---------------) --------+---------+---------+-------- 8400 9100 9800 Overall median = 8839 Greater than 0.05 Above Hypothesis test shows shorted and Experience are independent of each other so we conclude that Experience do not have significant Impact on the shorted of the process
  • 28. Hypothesis TestAnalyze shorted Vs Experience Type Mood median test for Collection Chi-Square = 129.87 DF = 2 P = 0.000 Previous Individual 95.0% CIs experience N<= N> Median Q3-Q1 -+---------+---------+-------- -+----- C 53 85 9275 3473 (*-) CS 13 67 11174 3222 (--*---) obs 86 0 6125 2419 (-*-) -+---------+---------+---------+----- 6000 8000 10000 12000 Overall median = 8839 Smaller than 0.05 Above Hypothesis test shows shorted and Experience Type are dependent of each other so we conclude that Experience type do have significant Impact on the shorted of the process
  • 29. Hypothesis TestAnalyze shorted Vs Tenure Mood Median Test: Collection versus Tenure Mood median test for Collection Chi-Square = 52.39 DF = 2 P = 0.000 Individual 95.0% CIs Tenure N<= N> Median Q3-Q1 ------+---------+---------+---- -----+ 0 to 1 years 111 48 7747 3493 (--*---) 2-3 years 25 61 9675 3369 (----*--------) 3 yrs + 16 43 10248 3908 (-----*-------) ------+---------+---------+---------+ 8000 9000 10000 11000 Overall median = 8839 Smaller than 0.05 Above Hypothesis test shows shorted and Tenure are dependent of each other so we conclude that Tenure do have significant Impact on the shorted of the process
  • 30. Box Plot Demonstration of shorted and trainer Analyze After plotting boxplot for trainers we found out that sudesh,ruhani,and kishore have huge variation compared to others.
  • 31. S No. Vital Cause Data Type Test performed P- Value 1 supervisors discrete Moods median test 0.238 2 Age of operator discrete Pearson correalation 0094 3 experience discrete Moods Median 0.006 4 education discrete Moods median 0.987 4 Marital status discrete Moods median 0 Results of validation of potential X’s impacting AHT Analyze
  • 32. Improve Vital X’s effecting our Y (collection) Low Cost High Cost HighImpact LowImpact •Tenure •Experience Background •Team Leader •Process Knowledge •Utilization •Accounts Worked •RPC •APS •Gender •Marital Status •Education Training of operators- Training of operators can be provided as it does not cost anything , the managers and engineers can easily train them . •Shift •Experience Machine issues- machines can be costly because it involves lots of money to change them.
  • 34. Quality Function DeploymentImprove Priority Priorityweightage Implementrecreationalactivitycalendar Implementinhouseskillimprovement trainingcalendar Hiringteamtoscreenexperiencedprofilesfor hiring Implement>1yearexperienceincallingfor telecomprocessintheJobdescription Evaluatetheremunerationgridwith leadershipinvolvingHR,Compensationand Benefit&Recruitmentteam Implemettherevisedgrid Monitorweeklytypingspeedoftheassociates hiremoreexperiencedengineers Conductmonthlytypingassesment IdentifyconsistentTypingtestfailures& recommendprocessimprovementplan RefertobenchpostnoresultinPIP ConductsessionwithTraining,HR& Recruitmentteam Implementchangesbasedontheprocess requirement&floatthenewapprovedversion Implementchangestothehiringassesment thresholdsbasedontheprocessrequirement& floatthenewapprovedversion Conductassesmentforexistingtrainersto qualifyforgivingtraining Implementchangestotheculture&pre processtrainingassesmentthresholdsbasedon theprocessrequirement Changestotheculture&preprocesstraining assesmentthresholdstobeapprovedfrom Clientbeforeimplementation LinktheHalfyearlyassementscoretothe associateGoalform Conductprocesstest IdentifyscenariobasedtrainingneedfromAH Tperspective Conductprocesstrainingrefresherforbottom performers Evaluaterefreshertrainingmonthlyscores Recommendallassementfailuresforprocess improvementplan RefertobenchpostnoresultinPIP Linkthequaterlyassementscoretothe associateGoalform TotalPriorityWeightage Totalpriorityscore Introduce technical training program for the operators 4 4 4 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 32 8 Experienced people to be hired by recruitment team 4 0 0 4 4 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 32 8 Offer good package to experienced candidates as per the market standards 4 0 0 0 0 4 4 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 32 8 maintenance team should have experienced engineers so that there should not be any machine break downs 5 0 0 0 0 0 0 5 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 25 5 evaluate the operator on monthly basis 5 0 0 0 0 0 0 0 5 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 25 5
  • 35. Failure Mode Effect AnalysisImprove • Please find attached FMEA for JEDDAH
  • 36. BOM Comparison Post ImprovementImprove Variable N N* Mean SE Mean StDev Minimum Q1 Median Old BOM 304 0 3858.8 75.8 1322.3 342.9 2894.8 3729.5 4684.7 New BOM 304 0 4804.4 89.8 1565.9 422.3 3648.6 4692.6 5832.8 This Box-Plot Demonstration clearly shows Our new BOM performance is significantly better than old BOM
  • 37. Shorted Comparison Post Improvement Improve Mann-Whitney Test and CI: Old Collection, New Collection N Median Old Collection 304 8839 New Collection 304 12464 Point estimate for ETA1-ETA2 is -3994 95.0 Percent CI for ETA1-ETA2 is (-4853,-3191) W = 69925.0 Test of ETA1 = ETA2 vs ETA1 < ETA2 is significant at 0.0000 Mann Whitney test has shown that there has been significant improvement in the median of the new shorted P-Value is less than 0.05
  • 38. shorted Comparison Post Improvement Improve Descriptive Statistics: Old shorted , New shorted Variable Mean TrMean StDev Minimum Q1 Median Q3 Maximum Old shorted 9170 9114 3092 745 7301 8839 11130 19083 New shorted 16689 15250 12032 1183 9283 12464 19333 84275 This Box-Plot Demonstration clearly shows Our new shorted performance is significantly better than old shorted
  • 39. Control Chart of Training post Improvement Control This Control chart shows our TOS process is under control with improvement i.e, we have sustained this improvement now.
  • 40. Control Chart of BOM post Improvement Improve Above Control Chart shows our BOM process is under statistical control. That means we have sustained our improvement in BOM
  • 41. Shorted Comparison Post Improvement Improve This Control chart clearly shows that our shorted process is working under control. That is we have sustained the improvement that we achieved in our collection
  • 42. Mean has been shifted from 682 to 519 sec. It means significant improvement has been done. 42 I Improve
  • 43. Shorted decreasedCONTROL We have statistically proved that our shorted has decrease and our process in under statistical Control