Adaptive Filter Array with Self-tracking Capability of Time-Variant System Parameters

碩士 === 國立臺灣科技大學 === 電子工程技術研究所 === 86 === Most of the conventional methods dealing with adaptive filters in a nonstationary environment are commonly accomplished by fine tuning an adjustable parameter to track the time-variant characteristics of the unknown systems. In this thesis,...

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Main Authors: Chou Yu-hsing, 周宇行
Other Authors: Tzong-yeu Leou
Format: Others
Language:zh-TW
Published: 1998
Online Access:http://ndltd.ncl.edu.tw/handle/62089597828958881483
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spelling ndltd-TW-086NTUST4270532015-10-13T17:30:24Z http://ndltd.ncl.edu.tw/handle/62089597828958881483 Adaptive Filter Array with Self-tracking Capability of Time-Variant System Parameters 具有自動追蹤時變系統參數能力之調適濾波器陣列 Chou Yu-hsing 周宇行 碩士 國立臺灣科技大學 電子工程技術研究所 86 Most of the conventional methods dealing with adaptive filters in a nonstationary environment are commonly accomplished by fine tuning an adjustable parameter to track the time-variant characteristics of the unknown systems. In this thesis, a new approach has been proposed to deal with the time-variant system estimation by adaptive filter array, which collects the necessary information from a collection of adaptive filters with multiple adjustable parameters of similar values and yields better estimate of these adjustable parameters in order to track the time- variant characteristics. The goal of this adaptive filer array is to adjust the parameters according to the time- variant characteristics of the unknown system, but in the meantime, the extra computation requirement incurred is limited. In this thesis, a LRLS adaptive filter formed by adjusting order and forgetting factor has been applied in the tracking and estimation of time-variant system. Tzong-yeu Leou 柳宗禹 1998 學位論文 ; thesis 0 zh-TW
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description 碩士 === 國立臺灣科技大學 === 電子工程技術研究所 === 86 === Most of the conventional methods dealing with adaptive filters in a nonstationary environment are commonly accomplished by fine tuning an adjustable parameter to track the time-variant characteristics of the unknown systems. In this thesis, a new approach has been proposed to deal with the time-variant system estimation by adaptive filter array, which collects the necessary information from a collection of adaptive filters with multiple adjustable parameters of similar values and yields better estimate of these adjustable parameters in order to track the time- variant characteristics. The goal of this adaptive filer array is to adjust the parameters according to the time- variant characteristics of the unknown system, but in the meantime, the extra computation requirement incurred is limited. In this thesis, a LRLS adaptive filter formed by adjusting order and forgetting factor has been applied in the tracking and estimation of time-variant system.
author2 Tzong-yeu Leou
author_facet Tzong-yeu Leou
Chou Yu-hsing
周宇行
author Chou Yu-hsing
周宇行
spellingShingle Chou Yu-hsing
周宇行
Adaptive Filter Array with Self-tracking Capability of Time-Variant System Parameters
author_sort Chou Yu-hsing
title Adaptive Filter Array with Self-tracking Capability of Time-Variant System Parameters
title_short Adaptive Filter Array with Self-tracking Capability of Time-Variant System Parameters
title_full Adaptive Filter Array with Self-tracking Capability of Time-Variant System Parameters
title_fullStr Adaptive Filter Array with Self-tracking Capability of Time-Variant System Parameters
title_full_unstemmed Adaptive Filter Array with Self-tracking Capability of Time-Variant System Parameters
title_sort adaptive filter array with self-tracking capability of time-variant system parameters
publishDate 1998
url http://ndltd.ncl.edu.tw/handle/62089597828958881483
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