Title: Improving Properties of Steel Using Basic Tools of Quality
1Improving Properties of Steel Using Basic Tools
of Quality
- Case Study in Manufacturing
2Overview
- Project aimed to eliminate internal rejections of
a product used for exposed parts for several
major manufacturers. - Case study describes the use of a assortment of
quality improvement tools and strategies used to
bring this about. - Also describes how the inevitable issues that
occur while running a complicated industrial
experiment were handled.
3Shifting a Distribution
4Problem Description Limitations
- Yield strength (YS) of the steel sheets exceeded
specified maximum of 255 MPa 28 of the time.
Customer occasionally experienced splitting on
formed parts. - Ability to lower YS constrained by minimum
tensile strength (TS) requirement and tensile
strength after a post-stamping step. - High cost of failures prohibited generating
off-spec in trials. - Measurement system issues for some key process
variables
5Trade-off Between Yield Tensile Strength
6Process Map
Molten Steel
Slab Casting
Secondary Refining
Hot Rolling
Chem
Chem
- Temp1 (N)
- Temp2 (C)
- Temp3 (C)
- Cooling Practice (C)
- Ingredient A (C)
- Ingredient B (C)
- Ingredient C (C)
- Ingredient D (N)
- Ingredient E (N)
Pickle/ Cold Roll
Coating
Temper Rolling
Storage
Mech. Props
- Anneal T (C)
- Cooling Section Ts (C)
7Laws of Chemistry Physics Say
- Increasing Ingredient A increases YS TS.
- Increasing Ingredient B increases YS TS.
- Increasing Ingredient C increases YS TS.
- Impact of D and E depends upon level of the other
three. Generally, more of either increases YS
TS. - Higher hot rolling temps (especially T2 T3)
give lower YS TS. - Increment of A has bigger effect than one of B,
which is bigger than an increment of C.
8Laws of Management Say
- Cant change recipe outside current ranges
without customer approval. - Multiple customers. Cant make changes that
require multiple recipes. - Limited reapplication potential. Cant make
stuff that no one can use. - Heats of steel cost 10s of 1000s each. Make
each one count. - Arent you done yet?? (Dont take forever to fix
the product).
9Restrictions Imply
- Normal 2k factorials poor choiceslikely to make
lots of unusable steel. (Big sigma means
alarmingly bold settings or large n). - EVOP a possibility, if reasonably sure of the
factors included. Limited to 2 or 3, though, due
to length of time needed at each corner of the
design matrix. - Large standard deviation implies long trial
duration. What if we picked the wrong variables?
10Possible Courses of Action
- Change one factor at a time (OFAT). Rejected
because it would take too much time, also because
sub-optimal solutions are typical outcomes, even
in best-cases. - Change all suspected factors simultaneously to
better levels (All-FAT). Gives feel of
decisiveness, but what has been learned if
problem is solved? - Run factorial design with least risky candidate
variables. Include riskier variables in
subsequent iterations if necessary.
11Selected Factorial Approach
- Engineering knowledge allowed team to pick low
risk variables at meaningfully different levels
in 22 factorial HM Cooling Practice A B
normal and reduced Ingredient C addition. - Had data for one corner already and could begin
generating for the new cooling practice almost
immediately. New heats made on orders for
customer with less restrictive requirementsno
risk of making coils with no homes.
12Phase I Results
255 (13.5) 82
250 (10.6) 250
- Conclude
- All combos fail.
- Lo C better??
- U worse??
High
Ingredient C Level
248 (11.3) 248
245 (15.0) 138
Low
Flat
U-Profile
Cooling Practice
13Phase II Plan
- Stop adding Ingredient A to ladle. (Addition made
to assure TS after final part processing was
still OK. - Keep reduced level of C, since it made the
reducing A less risky (heats also slightly
cheaper to make, too). - Add more Ingredient B to minimize risk of failing
tensile strength standard. (Chose two higher
levels). - Use U-profile, since some still believed it was
better option.
14Phase II Design Layout
Phase I
248 (11.3) 248
Ingredient A Added
Phase II
No Ingredient A Addition
Highest B
Higher B
Base B
15Phase II Design YS Results
- Conclude
- No A addition
- meets spec.
- B adds strength.
- Omit A addition,
- use base B if TS
- is okay.
Phase I
248 (11.3) 248
Ingredient A Added
Phase II
242 (7.4) 14
235 (8.5) 31
244 (14.4) 17
No A Addition
Base B
Highest B
Higher B
16Phase II Design TS Results
- Conclude
- Base B will often
- fail TS Spec
- Middle B will rarely
- fail TS Spec.
- Use Middle B level
- in longer term trials.
Phase I
355 (7.7) 248
A Added
Phase II
353 (6.1) 14
346 (5.2) 31
358 (6.4) 17
No A Addition
Base B
Highest B
Higher B
17YS Distributions, Base vs New Recipe
New C Lower B Higher Ladle A no
Old C High B Base Ladle A yes
255 MPa max.
255 MPa max.
28 gt 255 MPa
5 gt 255 MPa
N 330
N 105
18TS Distributions, Base vs New Recipe
Old C High B Base Ladle A yes
New C Lower B Higher Ladle A no
340 MPa min.
340 MPa min.
N 330
N 105
19Final Steps to Attain YS Max
- Steelmakers changed practices allowing upper
limit for Ingredient A to be reduced by 25.
Effectively capped maximum YS near where we
wanted it. Still had 5 internal rejections,
though. - Measurement error for Ingredient A was known to
be high. Values above specific limit now
automatically rechecked. Heats that exceed limit
on second test are applied to orders for
customers where the 255 MPa does not apply. - Internal failures for YS rarely have rarely
occurred in the past year since these last
changes were made.
20Reducing Variation
21New Tensile Strength Issue
- Recall that YS has strong positive correlation to
TS. Small percentage (3-5) miss minimum
requirement since project was completed. - Low values occur tend to occur in sporadic
clusters at bottom of cycles noted on trend
plots. - Commonly believed to occur because of cyclical
pattern in values of Ingredient A, but
steelmakers cant do more than they already are,
and anything done to increase TS mean will raise
YS mean.
22What to Do?
- Look at other variables on the process map. Can
any of them be changed to move TS mean and not
the YS mean? - If the mean cant be moved, then variance has to
be reduced.
23Components of Variance
- Method attempts to quantify the amount of the
total observed variation associated with the
components included in the study. - Focuses efforts on understanding how to reduce
the biggest component first. - Moves on to next biggest if goal hasnt been
achieved, or if cost associated with reducing
biggest term is prohibitive or cant be done
immediately.
24Components of Variance Design
1
2
3
n
Heat
HM LU
1
2
1
2
1
2
1
2
I/N LUs
1
2
1
2
1
2
1
2
1 2
1 2
1 2
1 2
1 2
1 2
1 2
1 2
Lab MSE
25COV Results
- 77 of variance in heat-to-heat component.
- 16 of variance occurs between hot mill lineups.
- 7 of variance due to MSE.
- Note impact of Heat 3 on magnitude of
Heat-to-Heat.
26Are the Results Valid?
- Reality checkdoes strength level for heat make
sense? - If it does, then focus on root causes of variance
in the Steelmaking area. - If not, investigate further. In this case, we
found that material processed in unplanned manner
downstream. Low TS values processed on same LU,
and are the only ones that did. Steelmaking and
Coating are confounded. - Lesson Use common sense. Seeing neednt always
mean believing.
27Evaluation of Historical Data
- This type of data potentially has value,
especially if one is looking for trends in
processes or outputs. - Not generally a substitute for designed
experiments, though data mining software makes it
possible to extract more information than was
possible in the past. - Main interest here initially was in determining
ranges of potential key variables. Large ranges
could help identify variables likely to inflate
variance.
28Ingredient A Variation
- Found that hot mill temperature variation was
small consistent with COV results no smoking
gun at the hot mill. - The experiments from the previous year had
identified Ingredient A as a key factor in YS
TS. Small change had significant impact on
observed values. Range noted in historical data
was wide. - Extracted sets comprised of heats with the
highest and lowest 10 of Ingredient A values.
31 of coils from lowest A heats failed. 3 from
highest A heats failed.
29TS by Ingredient A Classification
Lowest A
Middle A
Highest A
30TS Cycles from High/Low Heats Generally Track
Each Other
Tensile Strength Trend by Ingredient A Level
Highest A
Lowest A
31Next Steps
- Controlling for Ingredient A level over time
suggests downstream origin for variance. It
wont be possible to eliminate heats with lowest
values of Ingredient A. - Task becomes identifying which coating line
variables have ranges most likely to impact TS,
quantifying the magnitudes of the effects, and
developing plans to reduce the impacts.
32Conclusion
- Case study has presented application of two
problem solving methods. - In the first, designed experiments were used to
shift a process average to nearly completely
eliminate internal rejections. Modification of
application practices completed the task. - The second application used tools aimed at
reducing variation when shifting the mean was not
an option. - Which set one uses first depends upon where
process is relative to where it needs to be.
33Questions?