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A Comparison of Filter-based Approaches for Model-based PrognosticsModel-based prognostics approaches use domain knowledge about a system and its failure modes through the use of physics-based models. Model-based prognosis is generally divided into two sequential problems: a joint state-parameter estimation problem, in which, using the model, the health of a system or component is determined based on the observations; and a prediction problem, in which, using the model, the stateparameter distribution is simulated forward in time to compute end of life and remaining useful life. The first problem is typically solved through the use of a state observer, or filter. The choice of filter depends on the assumptions that may be made about the system, and on the desired algorithm performance. In this paper, we review three separate filters for the solution to the first problem: the Daum filter, an exact nonlinear filter; the unscented Kalman filter, which approximates nonlinearities through the use of a deterministic sampling method known as the unscented transform; and the particle filter, which approximates the state distribution using a finite set of discrete, weighted samples, called particles. Using a centrifugal pump as a case study, we conduct a number of simulation-based experiments investigating the performance of the different algorithms as applied to prognostics.
Document ID
20140006574
Acquisition Source
Ames Research Center
Document Type
Conference Paper
Authors
Daigle, Matthew John
(California Univ. Santa Cruz, CA, United States)
Saha, Bhaskar
(Palo Alto Research Center, Inc. Palo Alto, CA, United States)
Goebel, Kai
(NASA Ames Research Center Moffett Field, CA, United States)
Date Acquired
June 3, 2014
Publication Date
March 3, 2012
Subject Category
Mechanical Engineering
Physics (General)
Report/Patent Number
ARC-E-DAA-TN4577
Meeting Information
Meeting: 2012 IEEE Aerospace Conference
Location: Big Sky, MT
Country: United States
Start Date: March 3, 2012
Sponsors: Institute of Electrical and Electronics Engineers
Funding Number(s)
CONTRACT_GRANT: NAS2-03144
Distribution Limits
Public
Copyright
Public Use Permitted.
Keywords
prognostics
centrifigal pump
nonlinear filtering
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