2x1维维纳滤波信道估计的噪声方差优化方法

Yun Rui, Mingqi Li, Xiaodong Zhang, L. Tang, Songlin Feng
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引用次数: 3

摘要

提出了一种用于OFDM系统时频分离(2倍1D)维纳滤波信道估计的噪声方差优化方法。根据维纳滤波理论,噪声方差是实现最优解的必要条件。对于2次一维维纳滤波信道估计,分别在时间维和频率维上进行两次维纳滤波。但是,该方法需要考虑由第一滤波器引起的各种噪声方差对第二滤波器的影响。该方法根据第一滤波器信道估计的均方误差(MSE)对第二滤波器使用的噪声方差进行优化。本文给出了信道估计的精确均方误差。此外,采用不同的噪声方差优化准则对信道估计性能进行了评价。仿真结果表明,该方法的性能优于未进行噪声方差优化的2倍一维滤波方法,并与维纳二维滤波方法非常接近。
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A Noise Variance Optimization Method for 2x1-Dimensional Wiener Filtered Channel Estimation
A noise variance optimization method is proposed for the time and frequency dimension separate (2 times 1D) Wiener-filtered channel estimation of OFDM based systems. According to Wiener-filter theory, the noise variance is necessary to achieve optimal solution. For 2 times 1D Wiener-filtered channel estimation, the Wiener-filtering will be applied twice respectively in time and frequency dimension. However, the effect of variety of noise variance induced by the first filter should be considered on the second filter in this method. In the proposed method, the noise variance used by the second filter is optimized according to the mean square error (MSE) of channel estimation by the first filter. The exact MSE of channel estimation is derived in this paper. Moreover, the channel estimation performance is evaluated with different noise variance optimizing criteria. The simulation results show that the performance of the proposed method is better than the 2 times 1D filters method without noise variance optimization, and is very close to that of the Wiener 2D filter.
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