Title: Military Aircraft Cost Database
1Military Aircraft Cost Database Archive and
Retrieval
Michael J. Clark Air Force Cost Analysis
Agency Saroja Raman NAVAIR Cost Department
June 2002
2OUTLINE
- Background
- Structure
- Demo
- Validation/Verification
- Material Cost Analysis
- Objective/Goal
- Process
- Results
- Future MACDAR Endeavors
3Description
- Military Aircraft Cost Database Archive and
Retrieval (MACDAR) - Cost database which currently includes five
military fixed wing aircraft - F-14
- F-15
- F-16
- F/A-18
- A/V-8B
- Time span from early 1970s through early 1990s
- Tried to capture A/B variant through E/F variant
4Purpose
- Provide a central location for military aircraft
cost data down to a WBS level 4 that is
consistent across all platforms. - Use data for regression analysis and CER
development in support of JSF, F-22, and UCAV
production cost estimates.
5History
- Air Force Cost Analysis Agency (AFCAA) initiated
MACDAR project in 1991. - Team of government and contractor personnel
collected low-level cost data. - Labor and material cost data collected for EMD as
well as Production. - Organized data into excel workbooks.
- Included evaluation of Foreign Military Sales
(FMS). - Validation Verification (VV) effort performed
by NAVAIR and AFCAA began in 1998. - Labor databases (recurring and non-recurring)
have been validated and are currently in use. - VV of recurring material databases to be
completed by end of FY02.
6Structure
- Five platforms included in MACDAR
- F-14, F-15, F-16, F/A-18, AV-8B
-
- Four excel workbooks for each platform
- Example
- F-14 rec. labor hrs
- F-14 non-rec. labor hrs
- F-14 rec. matl
- F-14 non.rec. matl
- Four workbooks do NOT capture total cost of
Aircraft.
7Structure
- Standard MACDAR WBS Structure developed, to
provide consistency across platforms. - Total Aircraft System
- Air Vehicle
- Airframe
- fuselage, wing, empennage, etc.
- Subsystems
- electrical, environmental control, hydraulics,
etc. - Propulsion
- Avionics H/W
- radar, navigation, controls displays, etc.
- Avionics S/W
- Mapping Schemes developed for each contractor.
- Can be changed by user
8Structure
- Standard MACDAR Functional Categories developed,
to provide consistency across platforms. - Mapping Schemes developed for each contractor.
- Can be changed by user.
Material Databases Engineering
Tooling General Material
Subcontractor
Labor Databases Engineering Tooling
Manufacturing QA
9Structure
- Each workbook contains labor hour data or
material cost data organized - by year
- by WBS
- by functional category (engr, tooling, mfg, gen.
mat etc.) - Raw data, mapping schemes and normalization sheet
included in every workbook. - Workbooks also include some technical/programmatic
information. - For example weight and quantity
- Pivot tables provide output. Pivot on a WBS
element and a functional category and receive
cost data for EMD and Production years.
10DEMO
11MACDAR DEMOLABOR
12MACDAR DEMOLABOR
13MACDAR DEMOLABOR
14MACDAR DEMOMATERIAL
15MACDAR DEMOMATERIAL
16MACDAR DEMOMATERIAL
17Validation Verification
- Ensure cost data accurate and database
functioning properly - Validate MACDAR data against Contractor Cost Data
Reports (CCDRs) - Identify missing costs
- Verify databases operating properly
- Ensure pivot tables provide correct output
-
- Perform corrections
- Correct database operating errors
- Use various sources of data to fill in missing
costs -
18Challenges
- Purchased equipment and avionics data difficult
to obtain, at low levels. - Difficult to validate data from the 1970s.
- Five databases to validate, each with its own
unique problems. - Past CCDRs had their own inherent problems.
-
19Accomplishments
- All labor databases, both recurring and
non-recurring, have been validated. - Three out of five, recurring material databases,
have been validated and verified. - All five recurring material databases to be
completed by the end of FY02. -
20MATERIAL COST DATA LEARNING CURVE ANALYSIS
21Objective
- Obtain a better understanding of military
aircraft material costs in order to more
accurately predict material costs for future
military aircraft. -
22Goal
- Obtain learning curve slopes for various aircraft
material costs. - Start at lowest level possible (WBS level 3 or 4)
and work up to a higher level (Total Aircraft).
23Material Costs Studied
- Raw Material/Purchased Parts (RMPP)
- aluminum, steel, titanium, composites
- nuts, bolts, valves, hydraulic fittings, wires,
cables - Airframe structural parts made up primarily of
RMPP - Purchased Equipment (PE)
- manufactured and assembled items, procured from
outside sources by the prime contractor - typically higher in dollar value and more complex
than a purchased part - Subsystems (electrical, hydraulic,etc) fall under
PE - Avionics
- Radar, displays, communications, etc.
24Material Cost Areas Evaluated
- Airframe RMPP /lb (AUW)
- Purchased Equipment /lb (AUW)
- Subsystems
- Landing Gear
- Avionics
- Aircraft RMPP PE /lb (AUW)
- Total Aircraft Procurement /lb (AUW)
- Additional costs (engineering and tooling
recurring material ) included.
25Normalization Process
- Cost data pulled directly from MACDAR Material
Databases - MACDAR provides unit cost data (Lot Average
Cost), in raw TY. - Escalated cost data to Constant Year FY01 using
NAVAIR Commodity Indices. - May obtain different results with OSD Indices
- Divided RMPP and PE Cost Data by AUW to obtain
/lb. -
26Analysis Process
- Ran /lb against Aircraft Quantity Lot Midpoints.
Included FMS quantities. - Ran numerous iterations
- Ran each material category with and without EMD
- Ran Learn only
- Ran Learn with Rate
- Looked at Prime only material
- Looked at Prime Subcontractor material
27Perform scatter plots
Enter data into COSTAT
Learning Curve Analysis
Learning and Rate Analysis
Evaluate stats plot Good?
Evaluate stats plot Good?
No
No
Disregard
Disregard
Yes
Yes
No
Evaluate Slope lt 100
Check learn rate results
Evaluate Slope Learn lt 100 and Rate lt 100
Investigate further
No
Yes
Yes
Publish Results
Publish Results
28Results
- Airframe RMPP /lb
- obtained fairly good results when looking at one
variant. - some slopes in the mid to low 80s
- Purchased Equipment /lb and Avionics
- results not as good. Poor stats, possibly due to
- changes in configuration
- upgrades
- changes in vendor
- most slopes in the mid 90s
- Aircraft RMPP PE /lb
- obtained fairly good results
- some slopes in the mid to low 80s
- rate effect seen on one aircraft
- Total Aircraft Procurement /lb
- obtained fairly good results.
- some slopes in the mid to low 80s.
29ResultsLearn only
30ResultsLearn and Rate
31ResultsSummary
- Steep slopes exhibited in some aircraft.
- Inconsistency seen among aircraft, leads to high
uncertainty in material learning curves. - Caution should be used when using slopes. May
best be considered via risk analysis. - Additional data points may decrease variability
and uncertainty. -
32Future MACDAR Endeavors
- Increase scope and include newer platforms
- F/A-18 E/F, F-22, V-22
- Cargo and bomber platforms
- Modification programs
33Back-up Slides
34Escalation
35Escalation Indices
- Number of different indices available
- OSD indices
- most widely known and accepted
- Broad based.
- Mandated by OSD for budgets.
- DRI WEFA maintains one of the largest privately
available collections of economic and financial
data. - NAVAIR developed their own indices
- Utilize DRI Indexes more specific to Military
Aircraft and its commodities. - MACDAR uses the Fixed Wing Airframe Material
Commodity Index and the Fixed Wing Electronic
Material Commodity Index
36Escalation Comparison OSD APN vs. Fixed Wing
Airframe Material
37Escalation Comparison OSD APN vs. Fixed Wing
Airframe Material
38Escalation Comparison Impact on Learning Curve
Slopes
39Results Graphs
40Results
41Results
42Results
43Results
44Results