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首页> 外文期刊>IEEE Transactions on Signal Processing >On Doubly Selective Channel Estimation Using Superimposed Training and Discrete Prolate Spheroidal Sequences
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On Doubly Selective Channel Estimation Using Superimposed Training and Discrete Prolate Spheroidal Sequences

机译:基于叠加训练和离散球状序列的双选择性信道估计

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摘要

Channel estimation and data detection for frequency-selective time-varying channels are considered using superimposed training. We employ a discrete prolate spheroidal basis expansion model (DPS-BEM) to describe the time-varying channel. A periodic (nonrandom) training sequence is arithmetically added (superimposed) at low power to the information sequence at the transmitter before modulation and transmission; therefore, there is no loss in data transmission rate compared to time-multiplexed (TM) training. We first estimate the channel using DPS-BEM and only the first-order statistics of the observations. In this estimator the unknown information sequence acts as interference resulting in a poor signal-to-noise-and-interference ratio (SNIR) for channel estimation. We then apply a data-dependent superimposed training sequence, to either totally or partially cancel out the effects of the unknown information sequence at the receiver on channel estimation. In total cancellation, at certain frequencies, the information-bearing components are nulled. To compensate for this information loss, we investigate a partially-data-dependent (PDD) superimposed training scheme where a tradeoff is made between interference cancellation and frequency integrity. Design of certain parameters for PDD superimposed training is also investigated. Finally, a deterministic maximum likelihood (DML) approach is used iteratively to enhance channel estimation and data detection. Computer simulation examples show that the proposed approaches are competitive with the conventional TM training without incurring data-rate loss.
机译:使用叠加训练考虑了频率选择性时变信道的信道估计和数据检测。我们采用离散的球面椭球基扩展模型(DPS-BEM)来描述时变信道。在调制和传输之前,以低功率将周期性的(非随机)训练序列以低功率算术添加(叠加)到发射机的信息序列中;因此,与时分复用(TM)训练相比,数据传输速率没有损失。我们首先使用DPS-BEM和仅观测值的一阶统计量来估计信道。在该估计器中,未知信息序列充当干扰,导致信道估计的信噪比(SNIR)较差。然后,我们应用与数据相关的叠加训练序列,以完全或部分抵消未知信息序列在接收器上对信道估计的影响。在完全消除的情况下,在某些频率下,信息承载部分为空。为了补偿此信息丢失,我们研究了部分数据依赖(PDD)叠加训练方案,其中在干扰消除和频率完整性之间进行了权衡。还研究了用于PDD叠加训练的某些参数的设计。最后,迭代使用确定性最大似然(DML)方法来增强信道估计和数据检测。计算机仿真实例表明,所提出的方法与传统的TM训练具有竞争性,并且不会造成数据速率损失。

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