Title: GSGC ISS Engineering Outreach Projects
1GSGC ISS Engineering Outreach Projects
- ISS Payload Rack Data Trending Analysis
- E. Armanios, PI
- Richard Cross, GRA
SE SG Regional Meeting, Lexington
Kentucky November 11, 2006
2One of Two GSGC ISS Engineering outreach projects
funded
- Quantifying Uncertainty in ISS Thermal Model
- Dr. Andrew Makeev, PI
- In collaboration with JSFC
3- Debbie V. Nguy February 2, 2005
- Johnson Space Center, Houston
- RELEASE J05-002
- NASA PLANS UNIQUE SPACE STATION PARTNERSHIP WITH
SEVEN UNIVERSITIES
- The grant opportunity was announced by NASA
through the 2004 Aerospace Workforce Development
Competition - Award to seven universities Georgia Institute
of Technology, Massachusetts Institute of
Technology, Montana State University, Purdue
University, University of Alabama-Huntsville,
University of Mississippi and University of
Wyoming.
4Challenge
- The five EXPRESS racks
- EXpedite the PRocessing of Experiments to ISS
- Provide onboard experiments with
- Power, data connectivity, temperature control
- Sensors on these racks return a large amount of
real time data - Could the Storage size be reduced?
- Could it be used to assess health of experimental
packages and predict failure?
5EXPRESS Rack
6EXPRESS Rack
7Objectives
- Reduce data storage requirement by summarizing
mean trends and scatter - Data summary must retain enough information for
analysis purposes - Analyze EXPRESS rack data
- Identify departures from nominal sensor readings
- Locate correlations between sensor channels
8Summary Approach
- Summary Methods
- Mean time-series are summarized with multi-layer
perceptron neural networks trained with Bayesian
regularization. - Bayesian formulation allows the calculation of
confidence intervals for sensor output and
prevents over-fitting of data - Scatter information retained by storing Hessian
matrix from training - This matrix can be used to estimate the variance
in the sensor data
9Analysis Overview
- Analysis Methods
- Deviations from nominal operation detected
through calculation of confidence bounds on mean
time-series - Feature identification by testing the
significance of the rate of change - Neural network model facilitates calculation of
correlations between various sensor outputs
10Sample Analysis Raw Data
EXPRESS Rack 1 Temperature data from sensor
TS13 Data covers day 350 of 2004 to day 20 of 2005
111st Derivative Significance Analysis
12Simultaneous Significance Comparison
- Timing of significant events can be compared for
various sensor readings - Consider Lab Thermal System
Possibly significant system-wide event
13Sensor Correlation Findings
- Strong correlations were found in the temperature
readings - This result is expected since the various parts
of the rack are thermally connected through the
cooling system - Small correlations between the rack temperatures
and lab temperatures were found - Some small correlations were found between power
system (ELC, EMU, AFC2, Space currents, RFCA
flow) and lab and rack thermal systems
14Useful Results from Summary
- Storing the mean trends requires negligible disk
space - 49.2K vs. 14.7MB
- 0.3 the original database size
- Storing scatter information (Hessian matrix from
training) requires more space - Still a big reduction, 851K vs. 14.7MB
- This is an upper bound on required storage space
- Networks could be iteratively trained to identify
smallest possible network that correctly captures
data
15Conclusions
- EXPRESS Rack data can be effectively compressed
and stored - Numerous analyses are possible
- Identification of significant deviations from
normal operation - Identification of significant features
- System-wide event identification
- Correlation analyses
16Acknowledgements
- Mr. Rick Cissom, Payload Operations Project
Manager, NASA MSFC - Dr. Craig Cruzen, ISS Payload Operations
Director, NASA MSFC
17(No Transcript)
18Feedback
We found our discussions about the research that
you and your colleagues have been performing on
ISS Payload Rack Data Trending to be informative.
We were impressed with the research your staff
has provided in the NASA Engineering Outreach
Program We look forward to working with you and
your staff. In addition, if there any assistance
that our organization can provide regarding
educational outreach and fostering your students
interest in Americas Space Program, please do
not hesitate to contact us .
19Spin-off
- Initiation of GSGC- MSFC Mentoring
- Senior Design Project in Space Systems
- Briefings on MSFC projects
- Review of student team design projects
20WednesdayMarch 29, 20063-4p.m.Montgomery
Knight Bldg.Design Lab, Rm. 442The Robotic
Lunar Exploration Program (RLEP)Mr. Raymond
EcholsRobotic Lunar Exploration Program - 2,
Lander Mission Mission Operations LeadMarshall
Space Flight Center
21International Space Station (ISS) Operations and
ResearchDr. Craig CruzenInternational Space
Station ProgramPayload Operations
DirectorMarshall Space Flight Center
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23Follow-up
- Dr. Craig Cruzen Mr. Raymond Echols
- Space Systems Senior Design Project review panel
- ESMD Senior design project advisors