|
马上注册,结交更多好友,享用更多功能,让你轻松玩转社区。
您需要 登录 才可以下载或查看,没有账号?注册
x
Detection Guided NLMS Estimation of Sparsely Parametrized Channels
Abstract—We consider the normalized least mean square
(NLMS) estimation of a channel, which may be well approximated
by a finite impulse response model with sparsely separated
active or nonzero taps. Previously reported analyses imply that
the convergence rate of the NLMS estimator should be greatly
enhanced if only the active taps are estimated. We propose an
NLMS estimator, which incorporates a least squares based active
tap detection method. Simulations demonstrate that the NLMS
estimator has significantly faster convergence than the standard
NLMS estimator for colored as well as white input signals. Furthermore,
for sparse channels, this improved convergence speed is
accompanied by a lower computational cost. |
|