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首页> 外文期刊>Microwave Theory and Techniques, IEEE Transactions on >Optimal Sizing of Two-Stage Cascaded Sparse Memory Polynomial Model for High Power Amplifiers Linearization
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Optimal Sizing of Two-Stage Cascaded Sparse Memory Polynomial Model for High Power Amplifiers Linearization

机译:大功率放大器线性化的两阶段级联稀疏记忆多项式模型的最佳尺寸

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摘要

The nonlinearities and memory effects of power amplifiers (PAs) can be compensated by multistage cascaded digital predistortion with low complexity. Compared with full multistage models, sparse multistage models may have the same linearization performances while their complexities are even lower. However, the choice of the model structure is very difficult, especially for the sparse models. For instance, if there aren$(K+1)(L+1)$nfull models, thenn$2^{K+L-2}$ndifferent corresponding sparse models exist. An algorithm with the optimal search space definition is proposed in this paper to search for the optimal cascaded sparse model structure. The search criterion represents tradeoff between the modeling accuracy and identification complexity with a weight coefficient. A method to determine the value of the weight coefficient is proposed in this paper. The sparse model solution found by the proposed algorithm is evaluated with a three-way Doherty PA using a long term evolution-advanced signal. It is also compared with the solution of full model structure search.
机译:功率放大器(PA)的非线性和存储效应可以通过低复杂度的多级级联数字预失真来补偿。与完整的多级模型相比,稀疏的多级模型可能具有相同的线性化性能,而复杂度甚至更低。但是,模型结构的选择非常困难,尤其是对于稀疏模型。例如,如果不存在 $(K + 1)(L + 1)$ 完整模型,thenn $ 2 ^ {K + L -2} $ 存在不同的对应稀疏模型。提出了一种具有最优搜索空间定义的算法,以搜索最优的级联稀疏模型结构。搜索标准表示权重系数在建模精度和识别复杂度之间的权衡。提出了一种确定权重系数值的方法。通过使用长期演进高级信号的三向Doherty PA评估由所提出算法找到的稀疏模型解决方案。还将其与完整模型结构搜索的解决方案进行比较。

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