基于卡尔曼滤波的空间信道模型自适应多步信道预测

Yijing Liu, Lihua Li
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引用次数: 2

摘要

在时分双工(TDD)系统中,基站(BS)通过信道估计获得上行信道状态信息(CSI)后,利用信道互易获取下行信道状态信息(CSI)。然而,由于移动站(MS)的移动性,快速变化的信道增益可能导致发射端csi过时。此外,在没有任何反馈机制的情况下,如果不存在完美的信道互反,则BS无法利用MS端的信道估计信息对下行信道CSI进行校正。本文提出了一种新的自适应多步信道预测机制来解决这些问题。通过推导预测误差表达式,BS可以自适应预测前方多步的CSI,同时使均方误差(Mean Squared error, MSE)保持在一定的阈值以内。其余样本的CSI可以通过线性插值得到。相应的,在很大程度上减轻了BS端的复杂性。此外,该方案还考虑了空间信道模型,以反映真实的传输场景。仿真结果表明,该方法可以有效地降低算法复杂度,同时使MSE保持在一定的阈值以内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive multi-step channel prediction in spatial channel model using Kalman filter
In Time Division Duplex (TDD) System, the downlink Channel State Information (CSI) can be acquired by using the channel reciprocity, after Base Station (BS) has acquired uplink CSI through channel estimation. Nevertheless, due to the mobility of Mobile Station (MS), the rapidly varying channel gain may result in the outdated-CSI at transmitter end. Besides, without any feedback mechanism, BS cannot correct the downlink CSI using channel estimation information at MS end, if there exist no perfect channel reciprocity. This paper proposes a novel adaptive multi-step channel prediction mechanism to combat these problems. By deriving the expression of prediction error, BS can adaptively predict CSI of multi-step ahead while keeping the Mean Squared Error (MSE) under a certain threshold. CSI of the rest samples can be acquired through linear interpolation. The complexity at BS end is largely alleviated correspondingly. Moreover, the proposed scheme takes Spatial Channel Model into consideration to reflect real transmission scenario. Simulation results illustrate that the proposed scheme can effectively reduce the complexity while maintaining the MSE under a certain threshold.
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