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Dataset Reduction for Neural Network Based Digital Predistorters under Strong Nonlinearities

机译:基于神经网络的基于神经网络的数字预失真器的数据集减少

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The artificial neural networks (ANN) are gaining momentum in the digital predistorters (DPD) thanks to their inherently good approximation capabilities. Under strong or complex power amplifier nonlinearities, the size of the ANN can increase and lead to long training periods which are unaffordable in fast-changing waveform scenarios like those proposed for 5G or 6G. In this work we combine the orthogonal matching pursuit technique together with dataset length reduction methods, to significantly shorten the ANN DPD coefficients update time.
机译:由于其固有的良好近似能力,人工神经网络(ANN)正在获得数字预失真器(DPD)中的动力。在强大或复杂的功率放大器非线性下,ANN的尺寸可以增加并导致长期训练期,在快速变化的波形情景中不适应,如提出的5G或6G。在这项工作中,我们将正交匹配的追求技术与数据集长度减少方法组合在一起,以显着缩短ANN DPD系数更新时间。

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