Spectrum analysis by autoregressive methods: Performance on application to stationary signals

In order to develop a method capable of determining the time variant spectrum of time series, various existing approaches have been investigated. Although the Fourier-based methods are superior in their computational efficiency, their inherent characteristics may sometimes limit applications. The AR...

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Main Authors: Kamata, Minoru, Ngamsritragul, Panyarak
Other Authors: Mechanical Engineering
Format: Article
Language:English
Published: The Japan Society of Mechanical Engineers 2011
Subjects:
Online Access:http://kb.psu.ac.th/psukb/handle/2010/7191
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Institution: Prince of Songkhla University
Language: English
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spelling th-psu.2010-71912011-04-04T19:12:46Z Spectrum analysis by autoregressive methods: Performance on application to stationary signals Kamata, Minoru Ngamsritragul, Panyarak Mechanical Engineering Signal Analysis Spectrum Analysis Time Series Analysis Signal Processing AR Method In order to develop a method capable of determining the time variant spectrum of time series, various existing approaches have been investigated. Although the Fourier-based methods are superior in their computational efficiency, their inherent characteristics may sometimes limit applications. The AR method gives the best results even for small data sets. However, insufficient information is available for determining its applicability. In this report, a brief review, as well as the performance, of various AR methods applied to a certain class of stationary time series is systematically documented. The covariance method is found to be the best solution for the determination of AR coefficients, and many trials using sinusoidal data sets indicate the usefullness and applicability of AR-based spectrum analysis. 2011-04-04T13:25:47Z 2011-04-04T13:25:47Z 1996 Article JSME international journal. Ser. C, Dynamics, control, robotics, design and manufacturing 39-C(2), 179-187, 1996-06-15 1340-8062 http://kb.psu.ac.th/psukb/handle/2010/7191 en JSME international journal. Ser. C, Dynamics, control, robotics, design and manufacturing; application/pdf The Japan Society of Mechanical Engineers
institution Prince of Songkhla University
building Khunying Long Athakravi Sunthorn Learning Resources Center
country Thailand
collection PSU Knowledge Bank
language English
topic Signal Analysis
Spectrum Analysis
Time Series Analysis
Signal Processing
AR Method
spellingShingle Signal Analysis
Spectrum Analysis
Time Series Analysis
Signal Processing
AR Method
Kamata, Minoru
Ngamsritragul, Panyarak
Spectrum analysis by autoregressive methods: Performance on application to stationary signals
description In order to develop a method capable of determining the time variant spectrum of time series, various existing approaches have been investigated. Although the Fourier-based methods are superior in their computational efficiency, their inherent characteristics may sometimes limit applications. The AR method gives the best results even for small data sets. However, insufficient information is available for determining its applicability. In this report, a brief review, as well as the performance, of various AR methods applied to a certain class of stationary time series is systematically documented. The covariance method is found to be the best solution for the determination of AR coefficients, and many trials using sinusoidal data sets indicate the usefullness and applicability of AR-based spectrum analysis.
author2 Mechanical Engineering
author_facet Mechanical Engineering
Kamata, Minoru
Ngamsritragul, Panyarak
format Article
author Kamata, Minoru
Ngamsritragul, Panyarak
author_sort Kamata, Minoru
title Spectrum analysis by autoregressive methods: Performance on application to stationary signals
title_short Spectrum analysis by autoregressive methods: Performance on application to stationary signals
title_full Spectrum analysis by autoregressive methods: Performance on application to stationary signals
title_fullStr Spectrum analysis by autoregressive methods: Performance on application to stationary signals
title_full_unstemmed Spectrum analysis by autoregressive methods: Performance on application to stationary signals
title_sort spectrum analysis by autoregressive methods: performance on application to stationary signals
publisher The Japan Society of Mechanical Engineers
publishDate 2011
url http://kb.psu.ac.th/psukb/handle/2010/7191
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