Channel Estimation and Data Detection with Fuzzy C-Means Based EM Approach in MIMO System

Kirti Dasani, Anshul Shrotriya
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引用次数: 1

Abstract

Classical wireless communication technologies are threatened with so many challenges for meeting the desires of ubiquity and mobility for the cellular systems. Hostile wireless channels features and restricted frequency bandwidths are obstacles in future generation systems. In order to deal with these limitations, different advanced signal processing approaches, such as expectation-maximization (EM) algorithm, SAGE algorithm, Baum-Welch algorithm, Kalman filters and their extensions etc. were proposed. In this paper, estimation of unknown channel parameter and detection of data at receiver end has been performed. MIMO Rayleigh and Rician channels are taken for wireless communication. To find the initial point for EM algorithm FCM clustering algorithm is used. In this work, algorithm is implemented using MATLAB R2012a. The performance matrices of the algorithm are bit error rate (BER) and mean square error (MSE) at different values of signal to noise ratio.
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MIMO系统中基于模糊c均值的EM方法的信道估计和数据检测
传统的无线通信技术在满足蜂窝系统的普遍性和移动性要求方面面临着诸多挑战。恶劣的无线信道特征和受限的频率带宽是未来发电系统的障碍。针对这些局限性,提出了期望最大化(EM)算法、SAGE算法、Baum-Welch算法、卡尔曼滤波及其扩展等先进的信号处理方法。本文完成了未知信道参数的估计和接收端数据的检测。无线通信采用MIMO瑞利和瑞利信道。为了寻找EM算法的初始点,采用了FCM聚类算法。在本工作中,算法使用MATLAB R2012a实现。算法的性能矩阵是不同信噪比下的误码率(BER)和均方误差(MSE)。
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