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Adaptive Filtering Techniques using Cyclic Prefix in OFDM Systems for Multipath Fading Channel Prediction

机译:OFDM系统中使用循环前缀的自适应滤波技术用于多径衰落信道预测

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This paper presents adaptive channel prediction techniques for wireless orthogonal frequency division multiplexing (OFDM) systems using cyclic prefix (CP). The CP not only combats intersymbol interference, but also precludes requirement of additional training symbols. The proposed adaptive algorithms exploit the channel state information contained in CP of received OFDM symbol, under the time-invariant and time-variant wireless multipath Rayleigh fading channels. For channel prediction, the convergence and tracking characteristics of conventional recursive least squares (RLS) algorithm, numeric variable forgetting factor RLS (NVFF-RLS) algorithm, Kalman filtering (KF) algorithm and reduced Kalman least mean squares (RK-LMS) algorithm are compared. The simulation results are presented to demonstrate that KF algorithm is the best available technique as compared to RK-LMS, RLS and NVFF-RLS algorithms by providing low mean square channel prediction error. But RK-LMS and NVFF-RLS algorithms exhibit lower computational complexity than KF algorithm. Under typical conditions, the tracking performance of RK-LMS is comparable to RLS algorithm. However, RK-LMS algorithm fails to perform well in convergence mode. For time-variant multipath fading channel prediction, the presented NVFF-RLS algorithm supersedes RLS algorithm in the channel tracking mode under moderately high fade rate conditions. However, under appropriate parameter setting in 2x1 space-time block-coded OFDM system, NVFF-RLS algorithm bestows enhanced channel tracking performance than RLS algorithm under static as well as dynamic environment, which leads to significant reduction in symbol error rate.
机译:本文提出了使用循环前缀(CP)的无线正交频分复用(OFDM)系统的自适应信道预测技术。 CP不仅可以消除符号间的干扰,而且还不需要额外的训练符号。所提出的自适应算法在时不变和时变无线多径瑞利衰落信道下利用接收到的OFDM符号的CP中包含的信道状态信息。对于信道预测,常规递归最小二乘(RLS)算法,数字变量遗忘因子RLS(NVFF-RLS)算法,卡尔曼滤波(KF)算法和精简卡尔曼最小均方(RK-LMS)算法具有收敛性和跟踪特性。比较。仿真结果表明,与RK-LMS,RLS和NVFF-RLS算法相比,KF算法通过提供较低的均方信道预测误差,是最佳的可用技术。但是RK-LMS和NVFF-RLS算法的计算复杂度比KF算法低。在典型条件下,RK-LMS的跟踪性能可与RLS算法媲美。但是,RK-LMS算法在收敛模式下无法很好地执行。对于时变多径衰落信道预测,在适度的高衰落率条件下,所提出的NVFF-RLS算法取代了信道跟踪模式下的RLS算法。但是,在2x1空时分组编码OFDM系统中,在适当的参数设置下,NVFF-RLS算法在静态和动态环境下都比RLS算法具有增强的信道跟踪性能,从而大大降低了符号错误率。

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