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A new digital predistortion using indirect learning with constrained feedback bandwidth for wideband power amplifiers

机译:一种新的数字间接失真技术,它使用间接学习和受约束的反馈带宽,用于宽带功率放大器

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Digital predistortion (DPD) is one of the most effective techniques to mitigate the power amplifier (PA) nonlinear distortion. The DPD feedback bandwidth is often restricted by the nonideal electronic components, e.g., the anti-aliasing filter, which introduces bandwidth mismatch between model basis function and feedback signal thus degrades the linearization performance. This paper presents a new DPD solution for wideband PA systems with constrained feedback bandwidth. By including a linear operation into the PA identification, the PA model can be accurately estimated. Subsequently, the DPD parameters are extracted using the PA model estimated output and PA input signal by applying indirect learning algorithm. Experiments demonstrate a 23-dB adjacent channel leakage ratio improvement is acquired on a 100-MHz Long Term Evolution-advanced signal with the feedback bandwidth reduced from 500 MHz to 140 MHz.
机译:数字预失真(DPD)是减轻功率放大器(PA)非线性失真的最有效技术之一。 DPD反馈带宽通常受到非理想电子组件(例如抗混叠滤波器)的限制,该模型会在模型基函数和反馈信号之间引入带宽不匹配,从而降低线性化性能。本文为反馈功率受限的宽带功率放大器系统提供了一种新的DPD解决方案。通过将线性运算包括在PA识别中,可以准确地估计PA模型。随后,通过应用间接学习算法,使用PA模型估计的输出和PA输入信号提取DPD参数。实验表明,对于100 MHz长期演进高级信号,其反馈带宽从500 MHz降低至140 MHz,可以提高23 dB的相邻信道泄漏率。

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