Investigation and development of DSP algorithms/hardware for real time power spectral density estimation

This research is concerned with the Power Spectrum Density Estimation with em- phasIze on the bigh-resolution algorithms and their real-time implementations. Tl-ie classical PSD estimation methods are fast and robust. but their resolutions may not be adequate when the record length is short. On the...

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Main Author: Sung-Yuan, Ko
Other Authors: Russell, D. D.
Language:en
Published: Cranfield University 2010
Online Access:http://hdl.handle.net/1826/4197
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spelling ndltd-CRANFIELD1-oai-dspace.lib.cranfield.ac.uk-1826-41972013-04-19T15:25:39ZInvestigation and development of DSP algorithms/hardware for real time power spectral density estimationSung-Yuan, KoThis research is concerned with the Power Spectrum Density Estimation with em- phasIze on the bigh-resolution algorithms and their real-time implementations. Tl-ie classical PSD estimation methods are fast and robust. but their resolutions may not be adequate when the record length is short. On the other hand when the record length is short the autoregressive parametric methods have higher resolution capability, but they may have spurious peaks if the order of the model is chosen too high in the attempt to increase the resolution when the SNR is low. An algorithm is proposed to combine the spectrum of the classical method and the autoregressive model. This allows the overestimation of the order of the autoregressive model. The spuriot-is peaks that result are then suppressed by the low values in the spectrum of the classical nict liods. I'lic wide specl ral mairilobe of the classical method, on the other liand, serves to indicate the area where the true signals are located. This alleviates the difficult order selection problem of the parametric methods. An adaptive version of this method is also proposed. It is based on the adaptive autoregressive and adaptive maximum eigenvector concept. It can track a slowly changing environment. With I lie combination of these txN, o methods. it is shown that it. has the high-resolution performance of AR method ýN, ith improved performance in the noisy environment.Cranfield UniversityRussell, D. D.2010-01-26T11:40:10Z2010-01-26T11:40:10Z1993Thesis or dissertationDoctoralPhDhttp://hdl.handle.net/1826/4197en
collection NDLTD
language en
sources NDLTD
description This research is concerned with the Power Spectrum Density Estimation with em- phasIze on the bigh-resolution algorithms and their real-time implementations. Tl-ie classical PSD estimation methods are fast and robust. but their resolutions may not be adequate when the record length is short. On the other hand when the record length is short the autoregressive parametric methods have higher resolution capability, but they may have spurious peaks if the order of the model is chosen too high in the attempt to increase the resolution when the SNR is low. An algorithm is proposed to combine the spectrum of the classical method and the autoregressive model. This allows the overestimation of the order of the autoregressive model. The spuriot-is peaks that result are then suppressed by the low values in the spectrum of the classical nict liods. I'lic wide specl ral mairilobe of the classical method, on the other liand, serves to indicate the area where the true signals are located. This alleviates the difficult order selection problem of the parametric methods. An adaptive version of this method is also proposed. It is based on the adaptive autoregressive and adaptive maximum eigenvector concept. It can track a slowly changing environment. With I lie combination of these txN, o methods. it is shown that it. has the high-resolution performance of AR method ýN, ith improved performance in the noisy environment.
author2 Russell, D. D.
author_facet Russell, D. D.
Sung-Yuan, Ko
author Sung-Yuan, Ko
spellingShingle Sung-Yuan, Ko
Investigation and development of DSP algorithms/hardware for real time power spectral density estimation
author_sort Sung-Yuan, Ko
title Investigation and development of DSP algorithms/hardware for real time power spectral density estimation
title_short Investigation and development of DSP algorithms/hardware for real time power spectral density estimation
title_full Investigation and development of DSP algorithms/hardware for real time power spectral density estimation
title_fullStr Investigation and development of DSP algorithms/hardware for real time power spectral density estimation
title_full_unstemmed Investigation and development of DSP algorithms/hardware for real time power spectral density estimation
title_sort investigation and development of dsp algorithms/hardware for real time power spectral density estimation
publisher Cranfield University
publishDate 2010
url http://hdl.handle.net/1826/4197
work_keys_str_mv AT sungyuanko investigationanddevelopmentofdspalgorithmshardwareforrealtimepowerspectraldensityestimation
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