Naveen Naraharisetti, P. Roblin, Christophe Quindroit, M. Rawat, S. Gheitanchi
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引用次数: 13
摘要
本文报道了最近报道的记忆多项式或记忆样条模型的准精确逆(QEI)在线性化功率放大器(PA)的数字预失真器(DPD)设计中的首次实验应用。间接学习体系结构通过交换任何PA模型中的输入和输出变量来提取DPD的系数,与间接学习体系结构相比,直接从PA模型中执行DPD提取。使用该方案的一个优点是,PA的输出噪声不包含在回归矩阵中,从而提高了性能。由于DPD的性能取决于PA模型的精度,因此本文使用b样条来提取PA模型。新的DPD算法依赖于PA模型的QEI所需的任意数量的内存延迟。通过一个实时应用对模型的性能进行了评价。采用10 MHz带宽的LTE (Long Term Evolution)信号与间接学习架构中使用的记忆多项式(memory polynomial, MP) DPD模型进行性能比较。测量结果表明,当使用QEI模型进行DPD时,在归一化均方误差(NMSE)和相邻通道功率比(ACPR)方面有明显的改善。注意,这在实际的DPD系统中不需要任何迭代就可以实现。当PA模型更准确地表示PA行为时,可能会得到更好的结果。
Quasi-exact inverse PA model for digital predistorter linearization
This paper reports the first experimental application of the recently reported quasi-exact inverse (QEI) for memory-polynomial or memory-spline models in the design of a digital predistorter (DPD) linearizing a power amplifier (PA). In comparison to indirect learning architecture, where the coefficients of the DPD are extracted by swapping the input and output variable in any PA model, the DPD extraction is performed from the PA model directly. One of the advantages of using this scheme is that the output noise of the PA is not included in the regression matrix, thus improving the performance. In this paper, B-splines are used to extract the PA model since the performance of the DPD depends on the accuracy of the PA model. The new DPD algorithm relies on an arbitrary number of memory delays as needed for the QEI of the PA model. The evaluation of the model's performance is conducted on a real time application. A Long Term Evolution (LTE) signal of 10 MHz bandwidth is used to compare the performance with a memory polynomial (MP) DPD model used in indirect learning architecture. The measurement results demonstrate that there is a noticeable improvement in terms of Normalised Mean Square Error (NMSE) and Adjacent Channel Power Ratio(ACPR) when using the QEI model for DPD. Note that this is achieved without any iteration as in practical DPD systems. Better results are possible when the PA model represents the PA behavior more accurately.