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Novel Adaptive Nonlinear Predistorters Based on the Direct Learning Algorithm

机译:基于直接学习算法的新型自适应非线性预失真器

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The adaptive nonlinear predistorter is an effective technique to compensate for the nonlinear distortion existing in digital communication and control systems. However, available adaptive nonlinear predistorters using indirect learning are sensitive to measurement noise and do not perform optimally. Other available types are either slow to converge, complicated in structure and computationally expensive, or do not consider the memory effects in nonlinear systems such as a high power amplifier (HPA). In this paper, we first propose several novel adaptive nonlinear predistorters based on direct learning algorithms - the nonlinear filtered-x RLS (NFXRLS) algorithm, the nonlinear adjoint LMS (NALMS) algorithm, and the nonlinear adjoint RLS (NARLS) algorithm. Using these new learning algorithms, we design adaptive nonlinear predistorters for an HPA with memory effects or for an HPA following a linear system. Because of the direct learning algorithm, these novel adaptive predistorters outperform nonlinear predistorters that are based on the indirect learning method in the sense of normalized mean square error (NMSE), bit error rate (BER), and spectral regrowth. Moreover, our developed adaptive nonlinear predistorters are computationally efficient and/or converge rapidly when compared to other adaptive nonlinear predistorters that use direct learning, and furthermore can be easily implemented. We further simplify our proposed algorithms by exploring the robustness of our proposed algorithm as well as by examining the statistical properties of what we call the "instantaneous equivalent linear" (IEL) filter. Simulation results confirm the effectiveness of our proposed algorithms
机译:自适应非线性预失真器是补偿数字通信和控制系统中存在的非线性失真的有效技术。但是,使用间接学习的可用自适应非线性预失真器对测量噪声很敏感,并且不能达到最佳性能。其他可用类型要么收敛速度慢,结构复杂且计算量大,要么不考虑非线性系统(例如高功率放大器(HPA))中的存储效应。在本文中,我们首先基于直接学习算法提出了几种新颖的自适应非线性预失真器-非线性滤波x RLS(NFXRLS)算法,非线性伴随LMS(NALMS)算法和非线性伴随RLS(NARLS)算法。使用这些新的学习算法,我们为具有记忆效应的HPA或遵循线性系统的HPA设计了自适应非线性预失真器。由于采用了直接学习算法,这些新颖的自适应预失真器在基于均方误差(NMSE),误码率(BER)和频谱再生的意义上优于基于间接学习方法的非线性预失真器。此外,与使用直接学习的其他自适应非线性预失真器相比,我们开发的自适应非线性预失真器在计算效率方面和/或迅速收敛,并且可以轻松实现。通过探究我们提出的算法的鲁棒性以及检查所谓的“瞬时等效线性”(IEL)滤波器的统计特性,我们进一步简化了我们提出的算法。仿真结果证实了我们提出的算法的有效性

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