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Data-aided autoregressive sparse channel tracking for OFDM systems

机译:OFDM系统的数据辅助自回归稀疏通道跟踪

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In order to meet future communication system requirements, channel estimation over fast fading and frequency selective channels is crucial. In this paper, Space Alternated Generalized Expectation Maximization Maximum a Posteriori (SAGE-MAP) based channel estimation algorithm is proposed for Orthogonal Frequency Division Multiplexing (OFDM) systems for Autoregressive (AR) modeled time-varying sparse channels. Also, an initialization algorithm has been developed from the widely used sparse approximation algorithm Orthogonal Matching Pursuit (OMP), since the performance of SAGE algorithm strictly depends on initialization. The results show that multipath delay positions can be tracked successfully for every time instant using the proposed SAGE-MAP based approach.
机译:为了满足未来的通信系统要求,通过快速衰落和频率选择性通道的信道估计至关重要。本文在空间交替的广义期望最大化最大值是用于自回归(AR)建模的时变稀疏信道的正交频分复用(OFDM)系统提出了基于后验的信道估计算法。此外,已经从广泛使用的稀疏近似算法(OMP)中开发了初始化算法,因为Sage算法严格的性能严格依赖于初始化。结果表明,可以使用基于Sage-Map的方法成功地跟踪多径延迟位置。

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