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Joint Signal Detection and Channel Estimation Using Differential Models via EM Algorithm for OFDM Mobile Communications

机译:OFDM移动通信中基于EM算法的差分模型联合信号检测和信道估计

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摘要

This paper proposes a new approach for the joint processing of signal detection and channel estimation based on the expectation-maximization (EM) algorithm in orthogonal frequency division multiplexing (OFDM) mobile communications. Conventional schemes based on the EM algorithm estimate a channel impulse response using Kalman filter, and employ the random walk model or the first-order autoregressive (AR) model to derive the process equation for the filter. Since these models assume that the time-variation of the impulse response is white noise without considering any autocorrelation property, the accuracy of the channel estimation deteriorates under fast-fading conditions, resulting in an increased packet error rate (PER). To improve the accuracy of the estimation of fast-fading channels, the proposed scheme employs a differential model that allows the correlated time-variation to be considered by introducing the first-and higher-order time differentials of the channel impulse response. In addition, this paper derives a forward recursive form of the channel estimation along both the frequency and time axes in order to reduce the computational complexity. Computer simulations of channels under fast multipath fading conditions demonstrate that the proposed method is superior in PER to the conventional schemes that employ the random walk model.
机译:本文提出了一种基于期望最大化算法的正交频分复用移动通信中信号检测与信道估计联合处理的新方法。基于EM算法的传统方案使用卡尔曼滤波器来估计信道脉冲响应,并采用随机游走模型或一阶自回归(AR)模型来推导滤波器的处理方程。由于这些模型假定脉冲响应的时变是白噪声而没有考虑任何自相关特性,因此在快速衰落的情况下,信道估计的精度会降低,从而导致增加的包错误率(PER)。为了提高快速衰落信道估计的准确性,提出的方案采用差分模型,该模型允许通过引入信道脉冲响应的一阶和高阶时间差分来考虑相关的时变。此外,本文还沿频率和时间轴推导了信道估计的前向递归形式,以降低计算复杂度。快速多径衰落条件下信道的计算机仿真表明,所提出的方法在PER方面优于采用随机游走模型的常规方案。

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