首页> 外文会议>India Conference (INDICON 2009), 2009 >Two-Dimensional Set Membership Normalized Least Mean Square Adaptive Channel Estimation for OFDM Systems
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Two-Dimensional Set Membership Normalized Least Mean Square Adaptive Channel Estimation for OFDM Systems

机译:OFDM系统的二维集合成员资格归一化最小均方自适应信道估计

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Orthogonal Frequency Division Multiplexing (OFDM) is seen as one of the most promising solution to broadband wireless communications. Its performance depends on the channel state information (CSI) which can be estimated using different channel estimation algorithms. This paper proposes a Set Member Feasibility (SMF) formulation to govern the updating of the adaptive-filter coefficients. Here, two-dimensional Set-Membership Normalized LMS (2D-SM-NLMS) algorithm is proposed. The 2D-RLS adaptive channel estimation algorithm is also simulated for comparison. Matlab simulations show that 2D-SM-NLMS and 2D-RLS algorithms have similar Bit Error Rate (BER) performance. But the proposed algorithm has computational complexity of O(N) which is less than that of conventional 2D-RLS algorithm having order O(N2) while compromising on the convergence speed.
机译:正交频分复用(OFDM)被视为宽带无线通信最有希望的解决方案之一。它的性能取决于可以使用不同的信道估计算法估计的信道状态信息(CSI)。本文提出了一种集合成员可行性(SMF)公式来控制自适应滤波器系数的更新。在此,提出了二维集合成员归一化LMS(2D-SM-NLMS)算法。还对2D-RLS自适应信道估计算法进行了仿真以进行比较。 Matlab仿真显示2D-SM-NLMS和2D-RLS算法具有相似的误码率(BER)性能。但是该算法的计算复杂度为O(N),小于传统的2D-RLS算法的阶数为O(N 2 ),同时影响了收敛速度。

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