Performance Improvement of Variable Stepsize NLMS
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概要
- 論文の詳細を見る
Improvement of the convergence characteristics of the NLMS algorithm has received attention in the area of adaptive filtering. A new variable stepsize NLMS method, in which the stepsize is updated optimally by using variances of the measured error signal and the estimated noise, is proposed. The optimal control equation of the stepsize has been derived from a convergence characteristic approximation. A new condition to judge convergence is introduced in this paper to ensure the fastest initial convergence speed by providing precise timing to start estimating noise level. And further, some adaptive smoothing devices have been added into the ADF to overcome the saturation problem of the identification error caused by some random deviations. By the simulation, the initial convergence speed and the identification error in precise identification mode is improved significantly by more precise adjustment of stepsize without increasing in computational cost. The results are the best ever reported performances. This variable stepsize NLMS-ADF also shows good effectiveness even in severe conditions, such as noisy or fast changing circumstances.
- 社団法人電子情報通信学会の論文
- 1995-08-25
著者
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HATA Masayasu
College of Engineering, Chubu University
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Takumi I
Nagoya Inst. Technol. Nagoya‐shi Jpn
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Takumi Ichi
Graduate School Of Engineering Nagoya Inst. Of Technol.
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Takumi Ichi
Graduate School Of Engineering Nagoya Institute Of Technology
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Takumi Ichi
The Department Of A. I. And Computer Science Nagoya Institute Of Technology
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Hata M
College Of Engineering Chubu University
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TAKUMI Ichi
Department of A.I. & Computer Science, Nagoya Institute of Technology
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HATA Masayasu
Department of Applied Information Technology, Aichi Prefectural University
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Tanpreeyachaya Jirasak
Department of Intelligence and Computer Science, Nagoya Institute of Technology
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Tanpreeyachaya Jirasak
Department Of Intelligence And Computer Science Nagoya Institute Of Technology
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