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  1. B. 理工学域; 数物科学類・物質化学類・機械工学類・フロンティア工学類・電子情報通信学類・地球社会基盤学類・生命理工学類
  2. b 10. 学術雑誌掲載論文
  3. 1.査読済論文(工)

A cascade form predictor of neural and FIR filters and its minimum size estimation based on nonlinearity analysis of time series

http://hdl.handle.net/2297/5646
http://hdl.handle.net/2297/5646
8b4ccb5c-6a66-474f-a26b-7ac2f4374e47
名前 / ファイル ライセンス アクション
TE-PR-NAKAYAMA-K-364.pdf TE-PR-NAKAYAMA-K-364.pdf (774.3 kB)
Item type 学術雑誌論文 / Journal Article(1)
公開日 2017-10-03
タイトル
タイトル A cascade form predictor of neural and FIR filters and its minimum size estimation based on nonlinearity analysis of time series
言語
言語 eng
資源タイプ
資源タイプ識別子 http://purl.org/coar/resource_type/c_6501
資源タイプ journal article
著者 Khalaf, Ashraf A.M.

× Khalaf, Ashraf A.M.

WEKO 10123

Khalaf, Ashraf A.M.

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Nakayama, Kenji

× Nakayama, Kenji

WEKO 353
e-Rad 00207945
研究者番号 00207945

Nakayama, Kenji

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提供者所属
内容記述タイプ Other
内容記述 金沢大学大学院自然科学研究科情報システム
書誌情報 IEICE transactions on fundamentals of electronics, communications and computer sciences

巻 E81-A, 号 3, p. 364-373, 発行日 1998-03-01
ISSN
収録物識別子タイプ ISSN
収録物識別子 0916-8516
NCID
収録物識別子タイプ NCID
収録物識別子 AA0086650X
抄録
内容記述タイプ Abstract
内容記述 Time series prediction is very important technology in a wide variety of fields. The actual time series contains both linear and nonlinear properties. The amplitude of the time series to be predicted is usually continuous value. For these reasons, we combine nonlinear and linear predictors in a cascade form. The nonlinear prediction problem is reduced to a pattern classification. A set of the past samples x(n - 1), . . . , x(n - N) is transformed into the output, which is the prediction of the next coming sample x(n). So, we employ a multi-layer neural network with a sigmoidal hidden layer and a single linear output neuron for the nonlinear prediction. It is called a Nonlinear Sub-Predictor (NSP). The NSP is trained by the supervised learning algorithm using the sample x(n) as a target. However, it is rather difficult to generate the continuous amplitude and to predict linear property. So, we employ a linear predictor after the NSP. An FIR filter is used for this purpose, which is called a Linear Sub-Predictor (LSP). The LSP is trained by the supervised learning algorithm using also i(n) as a target. In order to estimate the minimum size of the proposed predictor, we analyze the nonlinearity of the time series of interest. The prediction is equal to mapping a set of past samples to the next coming sample. The multi-layer neural network is good for this kind of pattern mapping. Still, difficult mappings may exist when several sets of very similar patterns are mapped onto very different samples. The degree of difficulty of the mapping is closely related to the nonlinearity. The necessary number of the past samples used for prediction is determined by this nonlinearity. The difficult mapping requires a large number of the past samples. Computer simulations using the sunspot data and the artificially generated discrete amplitude data have demonstrated the efficiency of the proposed predictor and the nonlinearity analysis.
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著者版フラグ
出版タイプ VoR
出版タイプResource http://purl.org/coar/version/c_970fb48d4fbd8a85
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