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On improved DFT-based low-complexity channel estimation algorithms for LTE-based uplink NB-IoT systems

机译:基于LTE的上行NB-IoT系统的改进的基于DFT的低复杂度信道估计算法

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Channel estimation is crucial to achieving wide-area coverage for ultra-low-cost and low-power narrowband Internet of Things (NB-IoT) devices that are in coverage extremities. Radio coverage can be extended by repeatedly transmitting the same signal over a protracted period. In repetition dominated NB-IoT systems, existing channel estimators extensively used in the orthogonal frequency-division multiplexing (OFDM) system may be no longer applicable due to their considerable computational complexity and power consumption. In this paper, we propose narrowband demodulation reference signal (NDMRS)-assisted transform-domain low-complexity channel estimation algorithms named random sorting least squares (RS-LS), and de-noising LS (D-LS). Another sub-optimal estimator, stemming from the filtered channel estimates called linear minimum mean square error-approximation (LMMSE-A) is also studied. We first estimate initial channel response at pilot frequencies using the conventional LS method; and then, apply several additional operations in time-domain to suppress LS estimation error without exploiting extra frequency-band resources, and increasing significant computational complexity. Finally, channel estimates for the remaining OFDM symbols within an NB-IoT subframe are obtained by employing the time dimensional linear interpolation. Through several simulation examples, the viability of the proposed estimators is verified in comparison with the conventional IS, denoise, and optimal LMMSE estimators in terms of channel mean square error (MSE), block error rate (BLER), and throughput against signal-to-noise ratio (SNR) for Long Term Evolution (LTE)-based uplink NB-IoT systems.
机译:信道估计对于在覆盖范围内的超低成本和低功耗窄带物联网(NB-IoT)设备实现广域覆盖至关重要。通过在较长的时间内重复发送相同的信号,可以扩展无线电覆盖范围。在以重复为主的NB-IoT系统中,由于正交频分复用(OFDM)系统的计算量大且功耗大,可能不再适用于现有的信道估计器。在本文中,我们提出了窄带解调参考信号(NDMRS)辅助的变换域低复杂度信道估计算法,称为随机排序最小二乘(RS-LS)和去噪LS(D-LS)。还研究了基于滤波后的信道估计值的另一个次优估计量,称为线性最小均方误差近似值(LMMSE-A)。我们首先使用常规的LS方法估计导频处的初始信道响应。然后,在时域中应用几个额外的操作来抑制LS估计误差,而无需利用额外的频带资源,并增加了可观的计算复杂度。最终,通过采用时间维线性插值,获得了NB-IoT子帧内其余OFDM符号的信道估计。通过几个模拟示例,与常规IS,降噪和最佳LMMSE估计器相比,在信道均方误差(MSE),块误码率(BLER)和针对信号传输的吞吐量方面,验证了所提出估计器的可行性。基于长期演进(LTE)的上行链路NB-IoT系统的噪声比(SNR)。

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