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Narrow-band interference excision in spread-spectrum systems using self-orthogonalizing transform-domain adaptive filters

机译:使用自正交变换域自适应滤波器的扩频系统中的窄带干扰切除

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摘要

Among many transform-domain interference excision techniques, transform-domain adaptive filtering has many advantages. It is based on a true optimization of some particular performance parameters such as the bit-error rate (BER). Moreover, it is insensitive to jammer frequency. However, transform-domain adaptive filtering also has the drawback of being incapable of tracking a rapidly changing interference because most adaptive algorithms require time to converge to the optimal solution. In this paper, a self-orthogonalizing transform-domain least mean square (SO-TRLMS) algorithm is used to speed up the convergence. Compared to a traditional transform-domain least mean square (TRLMS) algorithm, the SO-TRLMS algorithm can significantly improve the convergence rate of the LMS algorithm, thus making the transform-domain adaptive filtering technique more suitable for real-time processing. In order to show how the system performance is affected by various factors such as interference power and the transform used, this paper presents an analytical result for the BER performance that is applicable for arbitrary orthogonal linear transforms. Simulation results are also presented to demonstrate the validity of the analysis.
机译:在许多变换域干扰消除技术中,变换域自适应滤波具有许多优点。它基于对某些特定性能参数(如误码率(BER))的真正优化。而且,它对干扰频率不敏感。但是,变换域自适应滤波也具有无法跟踪快速变化的干扰的缺点,因为大多数自适应算法都需要时间才能收敛到最佳解决方案。本文采用自正交变换域最小均方(SO-TRLMS)算法来加快收敛速度​​。与传统的变换域最小均方(TRLMS)算法相比,SO-TRLMS算法可以显着提高LMS算法的收敛速度,从而使变换域自适应滤波技术更适合于实时处理。为了显示系统性能如何受到各种因素(例如,干扰功率和所使用的变换)的影响,本文提供了适用于任意正交线性变换的BER性能的分析结果。仿真结果也被提出来证明分析的有效性。

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