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Random Process Simulation for stochastic fatigue analysisA simulation technique is described which directly synthesizes the extrema of a random process and is more efficient than the Gaussian simulation method. Such a technique is particularly useful in stochastic fatigue analysis because the required stress range moment E(R sup m), is a function only of the extrema of the random stress process. The family of autoregressive moving average (ARMA) models is reviewed and an autoregressive model is presented for modeling the extrema of any random process which has a unimodal power spectral density (psd). The proposed autoregressive technique is found to produce rainflow stress range moments which compare favorably with those computed by the Gaussian technique and to average 11.7 times faster than the Gaussian technique. The autoregressive technique is also adapted for processes having bimodal psd's. The adaptation involves using two autoregressive processes to simulate the extrema due to each mode and the superposition of these two extrema sequences. The proposed autoregressive superposition technique is 9 to 13 times faster than the Gaussian technique and produces comparable values for E(R sup m) for bimodal psd's having the frequency of one mode at least 2.5 times that of the other mode.
Document ID
19880013270
Acquisition Source
Legacy CDMS
Document Type
Thesis/Dissertation
Authors
Larsen, Curtis E.
(NASA Lyndon B. Johnson Space Center Houston, TX, United States)
Date Acquired
September 5, 2013
Publication Date
March 1, 1988
Subject Category
Statistics And Probability
Report/Patent Number
S-576
NASA-TM-100464
NAS 1.15:100464
Accession Number
88N22654
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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