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A Novel Blind mmWave Channel Estimation Algorithm Based on ML-ELM

机译:一种基于ML-ELM的新型盲MMWAVE信道估计算法

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The millimeter wave (mmWave) with wide frequency spectrum can fulfill the demand of escalating communication system capacity. However, the large bandwidth of the mmWave channel leads to a large increase in the dimension of the received signal, which results to the increased computational complexity for channel estimation. In this letter, we propose a novel blind channel estimation algorithm based on Manifold Learning-Extreme Learning Machine (ML-ELM) in mmWave communication system. In the proposed ML-ELM algorithm, Manifold Learning (ML) is employed to reduce the feature dimension of received signal, and Extreme Learning Machine (ELM) with one-shot training is applied for the estimated Channel State Information (CSI). The ELM channel estimator is trained using the channel fading features extracted by ML algorithm. The CSI estimated by ML-ELM algorithm is more accurate, and the computational complexity satisfied the real-time requirements. Simulation results show that the proposed ML-ELM algorithm without any pilot aided achieves better MSE performance of CSI compared with the non-blind channel estimation algorithms in higher SNR scenarios, and better compared with pilot-based LS algorithm in lower SNR scenarios.
机译:具有宽频谱的毫米波(MMWAVE)可以满足通信系统容量升级的需求。然而,MMWAVE通道的大带宽导致接收信号的尺寸的大幅增加,这导致对信道估计的增加的计算复杂度。在这封信中,我们提出了一种基于MMWAVE通信系统中歧管学习 - 极端学习机(ML-ELM)的新型盲信道估计算法。在所提出的ML-ELM算法中,采用歧管学习(ML)来减少接收信号的特征尺寸,并且对估计的信道状态信息(CSI)施加具有单次训练的极端学习机(ELM)。使用ML算法提取的频道衰落功能培训ELM信道估计器。 ML-ELM算法估计的CSI更准确,计算复杂性满足实时要求。仿真结果表明,与较高SNR场景中的非盲信道估计算法相比,该提出的ML-ELM算法与较高的SNR场景中的非盲信道估计算法相比,CSI的更好的MSE性能,与下SNR场景中的基于试点的LS算法更好。

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