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首页> 外文期刊>Communications, IET >Complexity-aware-normalised mean squared error ‘CAN’ metric for dimension estimation of memory polynomial-based power amplifiers behavioural models
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Complexity-aware-normalised mean squared error ‘CAN’ metric for dimension estimation of memory polynomial-based power amplifiers behavioural models

机译:基于复杂度的归一化均方误差“ CAN”度量,用于基于存储器多项式的功率放大器行为模型的尺寸估计

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摘要

The memory polynomial model is widely used for the behavioural modelling of radio-frequency non-linear power amplifiers having memory effects. One challenging task related to this model is the selection of its dimension which is defined by the non-linearity order and the memory depth. This study presents an approach suitable for the selection of the model dimension in memory polynomial-based power amplifiers’ behavioural models. The proposed approach uses a hybrid criterion that takes into account the model accuracy and its complexity. The proposed technique is tested on two memory polynomial-based behavioural models. Experimental validation carried out using experimental data of two Doherty power amplifiers, built using different transistor technologies and tested with two different signals, illustrates consistent advantages of the proposed technique as it significantly reduces the model dimension by more than 60% without compromising its accuracy.
机译:记忆多项式模型被广泛用于具有记忆效应的射频非线性功率放大器的行为建模。与该模型有关的一项具有挑战性的任务是选择其尺寸,该尺寸由非线性顺序和存储深度定义。这项研究提出了一种适合选择基于记忆多项式功率放大器的行为模型中模型尺寸的方法。所提出的方法使用了一种混合标准,该标准考虑了模型的准确性及其复杂性。在两个基于内存多项式的行为模型上对提出的技术进行了测试。使用两个使用不同晶体管技术构建并使用两个不同信号进行测试的Doherty功率放大器的实验数据进行的实验验证,说明了所提出技术的一致优势,因为它在不影响精度的情况下将模型尺寸显着减小了60%以上。

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