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首页> 外文期刊>IEEE transactions on wireless communications >Doubly-Selective Channel Estimation Using Data-Dependent Superimposed Training and Exponential Basis Models
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Doubly-Selective Channel Estimation Using Data-Dependent Superimposed Training and Exponential Basis Models

机译:使用数据相关的叠加训练和指数基础模型进行双选通道估计

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摘要

Channel estimation for single-user frequency- selective time-varying channels is considered using superimposed training. The time-varying channel is assumed to be well- approximated by a complex exponential basis expansion model (CE-BEM). A periodic (non-random) training sequence is arithmetically added (superimposed) at low power to the information sequence at the transmitter before modulation and transmission. In existing first-order statistics-based channel estimators, the information sequence acts as interference resulting in a poor signal-to-noise ratio (SNR). In this paper a data-dependent superimposed training sequence is used to cancel out the effects of the unknown information sequence at the receiver on channel estimation. A performance analysis is presented. We also consider the issue of superimposed training power allocation. Several illustrative computer simulation examples are presented.
机译:使用叠加训练来考虑单用户频率选择时变信道的信道估计。假设时变信道是通过复杂的指数基础扩展模型(CE-BEM)很好地近似的。在调制和传输之前,将低功率的周期性(非随机)训练序列算术添加到发射机的信息序列中(叠加)。在现有的基于一阶统计的信道估计器中,信息序列充当干扰,导致较差的信噪比(SNR)。在本文中,依赖于数据的叠加训练序列用于抵消接收器处未知信息序列对信道估计的影响。进行了性能分析。我们还考虑了叠加训练权分配的问题。给出了几个说明性的计算机仿真示例。

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