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Behavioral Modeling of Power Amplifiers With Modern Machine Learning Techniques

机译:利用现代机器学习技术对功率放大器进行行为建模

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In this study, modern machine learning (ML) methods are proposed to predict the dynamic non-linear behavior of wideband RF power amplifiers (PAs). Neural networks, k- nearest neighbor, and several tree-based ML algorithms are first adapted to handle complex-valued signals and then applied to the PA modeling problem. Their modeling performance is evaluated with measured data from two basestation PAs. Gradient boosting is seen to outperform the other ML approaches and to give comparable performance to the generalized memory polynomial (GMP) reference model in terms of both the normalized mean squared error (NMSE) and adjacent channel error power ratio (ACEPR). This is the first study int he open literature to consider modern ML approaches, besides neural networks, for PA behavioral modeling.
机译:在这项研究中,提出了现代机器学习(ML)方法来预测宽带RF功率放大器(PA)的动态非线性行为。神经网络,k最近邻和几种基于树的ML算法首先适用于处理复数值信号,然后应用于PA建模问题。利用来自两个基站PA的测量数据评估它们的建模性能。在归一化均方误差(NMSE)和相邻信道误差功率比(ACEPR)方面,梯度提升被认为优于其他ML方法,并具有与广义记忆多项式(GMP)参考模型相当的性能。这是首次公开文献,除了神经网络以外,还考虑了现代ML方法用于PA行为建模。

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