Modeling helicopter blade dynamics using a modified Myklestad-Prohl transfer matrix method
Approved for public release, distribution unlimited === Fundamental results developed by Wiener in the 1950's are combined with new work in the area of higher-order statistics to develop and explore a general model for nonlinear stochastic processes. The Wiener model is developed for discrete n...
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Language: | en_US |
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Monterey, California. Naval Postgraduate School
2014
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Online Access: | http://hdl.handle.net/10945/42794 |
Summary: | Approved for public release, distribution unlimited === Fundamental results developed by Wiener in the 1950's are combined with new work in the area of higher-order statistics to develop and explore a general model for nonlinear stochastic processes. The Wiener model is developed for discrete nonlinear systems and its orthogonality properties are analyzed to characterize its output statistics. An efficient structured procedure for computing the order statistics of the model output is formulated in both the time and frequency domains. Explicit formulas that exploit the structure of the Wiener model are given for computing the cumulants and polyspectra. A necessary condition for a discrete random process to be representable by the Wiener model is discussed. A computationally efficient procedure is given for matching the model output cumulants to estimated cumulants for a given process by minimizing the squared magnitude of the error. Examples of applying this procedure to given sets of data are presented. (AN) |
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