A Modified Variable Error-Data Normalized Step-Size LMS Adaptive Filter Algorithm
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概要
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This letter proposes a new adaptive filtering method that uses the last L desired signal samples as an extra input vector, besides the existing input data, to reduce mean square error. We have improved the convergence rate by adopting the squared norm of the past error samples, in addition to the modified cost function. The modified variable error-data normalized step-size least mean square algorithm provides fast convergence, ensuring a small final misadjustment. Simulation results indicate its superior mean square error performance, while its convergence rate equals that of existing methods. In addition, the proposed algorithm shows superior tracking capability when the system is subjected to an abrupt disturbance.
- 2009-12-01
著者
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Hong Kwang-seok
Sungkyunkwan Univ.
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Park Chee‐hyun
Sungkyunkwan Univ.
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PARK Chee-Hyun
Sungkyunkwan University
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PARK Chee-Hyun
Sungkyunkwan Univ.
関連論文
- A Modified Variable Error-Data Normalized Step-Size LMS Adaptive Filter Algorithm
- A Variable Error Data Normalized Step-Size LMS Adaptive Filter Algorithm : Analysis and Simulations
- Squared Range Weighted Least Squares Source Localization Based on the Element-Wise and Vector-Wise Orthogonality Principles