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A Sparse Based Adaptive Channel Estimator For Wireless Channel

机译:用于无线通道的基于稀疏的自适应信道估计器

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摘要

These days with the growth of wireless communication strategies focus on enhanced data rates, system capacity and service quality have also gained a lot of interest. To encounter these issues, proper channel modeling and precise assessment of state information of the channel are imperative for the design of the communication system. Again, factors like channel fading as well as Doppler shifts arising due to user mobility increase the complexity in the channel parameter estimation problem. Hence this paper presents an efficient channel estimator for a MIMO-OFDM system based on sparse modeling for estimation of wireless channel parameters. It uses a sigmoid-based least-mean mixed norm approach to estimate Jake’s outdoor channel model. The proposed channel estimator performs better as compared to other algorithms that prove its efficacy. The performance of the system is evaluated by the Mean Square Error (MSE) and Bit Error Rate (BER) level.
机译:如今,随着无线通信战略的增长,重点关注增强的数据速率,系统能力和服务质量也获得了很多兴趣。为了遇到这些问题,对于通信系统的设计,对信道的状态信息的适当频道建模和精确评估是必不可少的。同样,由于用户移动性引起的频道衰落等因素以及由于用户移动性而导致的多普勒移位提高了信道参数估计问题的复杂性。因此,本文提出了一种基于稀疏建模的用于估计无线信道参数的稀疏建模的高效信道估计。它使用基于SIGMOID的最小均值混合规范方法来估计杰克的户外频道模型。与除了证明其功效的其他算法相比,所提出的信道估计器更好地执行更好。系统的性能由均方误差(MSE)和误码率(BER)级别评估。

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