More Data Needed for Failure Rate Estimation, Validation, and Uncertainty ReductionThe currently planned schedule for advanced Environmental Control and Life Support System (ECLSS) development and test activities to support human exploration missions is unlikely to generate sufficient data to enable statistically-supportable, precise Orbital Replacement Unit (ORU) failure rate estimates to meet existing crew safety expectations. Accurate and precise failure rate estimates are critical for missions beyond Low Earth Orbit (LEO) because current risk mitigation approaches –namely regular resupply and rapid abort capabilities –will not be available. Safe operations will depend on mission planners’ ability to accurately forecast spares demand and efficiently provide the necessary resources. However, even after more than a decade of International Space Station (ISS) ECLSS operations, a significant amount of uncertainty remains in failure rate estimates. Uncertain or inaccurate failure rates result in increased risk and spares mass. A Bayesian estimation approach, such as the one currently implemented by the ISS Program, can reduce uncertainty by incorporating engineering judgement into failure rate estimates. However, experience on the ISS and with other complex systems shows that these prior failure rate estimates are often inaccurate. In addition, prior estimates are typically point values; some level of uncertainty must be added to convert these into probability distributions for Bayesian updating, and there are several potential methods for doing so. Due to the low rate of data collection, any inaccuracy in theseprior estimates currently hasa strong influence on the end result. This paper examines the challenges associated with failure rate estimation, validation, and uncertainty reduction in the context of ECLSS development for beyond-LEO missions. A variety of techniques for generating and updating Bayesian priors are discussed and evaluated using both real-world and simulated data. Potential solutions for improving failure rate estimation, including testing additional units, are analyzed and discussed, and a set of recommendations are provided for next-generation system development activities.
Document ID
20210017424
Acquisition Source
Langley Research Center
Document Type
Presentation
Authors
Andrew Owens (Langley Research Center Hampton, Virginia, United States)
William Cirillo (Langley Research Center Hampton, Virginia, United States)
Nicole Piontek (Binera, Inc. Columbia, Maryland, United States)
Chel Stromgren (Binera, Inc.)
Jason Cho (Binera, Inc.)
Date Acquired
June 11, 2021
Subject Category
Quality Assurance And Reliability
Report/Patent Number
ICES-2020-370
Meeting Information
Meeting: 50th International Conference on Environmental Systems
Location: Virtual
Country: US
Start Date: July 12, 2021
End Date: July 15, 2021
Sponsors: International Conference on Environmental Systems (ICES)