ARMA modeling

Approved for public release; distribution is unlimited === This thesis estimates the frequency response of a network where the only data is the output obtained from an Autoregressive-moving average (ARMA) model driven by a random input. Models of random processes and existing methods for solving...

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Main Author: Kayahan, Gurhan
Other Authors: Hippenstiel, Ralph
Format: Others
Language:en_US
Published: Dece
Subjects:
Online Access:http://hdl.handle.net/10945/22912
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spelling ndltd-nps.edu-oai-calhoun.nps.edu-10945-229122017-06-15T16:03:44Z ARMA modeling Kayahan, Gurhan Hippenstiel, Ralph Tummala, Murali Naval Postgraduate School (U.S.) Electrical and Computer Engineering ARMA modeling Yule-Walker equations Cholesky decomposition Approved for public release; distribution is unlimited This thesis estimates the frequency response of a network where the only data is the output obtained from an Autoregressive-moving average (ARMA) model driven by a random input. Models of random processes and existing methods for solving ARMA models are examined. The estimation is performed iteratively by using the Yule-Walker Equations in three different methods for the AR part and the Cholesky factorization for the MA part. The AR parameters are estimated initially, then MA parameters are estimated assuming that the AR parameters have been compensated for. After the estimation of each parameter set, the original time series is filtered via the inverse of the last estimate of the transfer function of an AR model or MA model, allowing better and better estimation of each model's coefficients. The iteration refers to the procedure of removing the MA or AR part from the random process in an alternating fashion allowing the creation of an almost pure AR or MA process, respectively. As the iteration continues the estimates are improving. When the iteration reaches a point where the coefficients converse the last VIA and AR model coefficients are retained as final estimates. http://archive.org/details/armamodeling00kaya Lieutenant Junior Grade, Turkish Navy December 1988 2012-11-27T18:06:00Z 2012-11-27T18:06:00Z 1988-12 Thesis http://hdl.handle.net/10945/22912 en_US Copyright is reserved by the copyright owner 76 p. application/pdf
collection NDLTD
language en_US
format Others
sources NDLTD
topic ARMA modeling
Yule-Walker equations
Cholesky decomposition
spellingShingle ARMA modeling
Yule-Walker equations
Cholesky decomposition
Kayahan, Gurhan
ARMA modeling
description Approved for public release; distribution is unlimited === This thesis estimates the frequency response of a network where the only data is the output obtained from an Autoregressive-moving average (ARMA) model driven by a random input. Models of random processes and existing methods for solving ARMA models are examined. The estimation is performed iteratively by using the Yule-Walker Equations in three different methods for the AR part and the Cholesky factorization for the MA part. The AR parameters are estimated initially, then MA parameters are estimated assuming that the AR parameters have been compensated for. After the estimation of each parameter set, the original time series is filtered via the inverse of the last estimate of the transfer function of an AR model or MA model, allowing better and better estimation of each model's coefficients. The iteration refers to the procedure of removing the MA or AR part from the random process in an alternating fashion allowing the creation of an almost pure AR or MA process, respectively. As the iteration continues the estimates are improving. When the iteration reaches a point where the coefficients converse the last VIA and AR model coefficients are retained as final estimates. === http://archive.org/details/armamodeling00kaya === Lieutenant Junior Grade, Turkish Navy
author2 Hippenstiel, Ralph
author_facet Hippenstiel, Ralph
Kayahan, Gurhan
author Kayahan, Gurhan
author_sort Kayahan, Gurhan
title ARMA modeling
title_short ARMA modeling
title_full ARMA modeling
title_fullStr ARMA modeling
title_full_unstemmed ARMA modeling
title_sort arma modeling
publishDate Dece
url http://hdl.handle.net/10945/22912
work_keys_str_mv AT kayahangurhan armamodeling
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