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Predistortion of non-linear satellite channels using neural networks: Architecture, algorithm and implementation

机译:使用神经网络对非线性卫星信道进行预失真:架构,算法和实现

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This paper presents the adaptive linearisation of a non-linear digital satellite communication down link. That link is made up a 16-QAM modulator, followed by a non-linear High Power Amplifier, on board the satellite. When using the amplifier with low input back-off for a maximum power efficiency, two kinds of distortions occur on the input signal: amplitude (AM/AM conversion) and phase (AM/PM conversion). The satellite payload is regenerative. So, we use a predistortion on board to linearize the amplifier. We present the predistortion architecture realized with Multi-Layer Perceptron (MLP) Neural Networks (NN). Two algorithms associated to that predistorter are shown and compared: the ordinary and the natural gradient. The major problem to implement that predistorter is to get enough bandwidth (100 Mbits/s data rate). A mixed analog/digital implementation is one solution to solve it. We analyze the implementation imperfections effects in comparison with the theoretical algorithm.
机译:本文介绍了非线性数字卫星通信下行链路的自适应线性化。该链路由卫星上的16-QAM调制器和非线性高功率放大器组成。当使用具有低输入回退的放大器以实现最大功率效率时,输入信号会发生两种失真:幅度(AM / AM转换)和相位(AM / PM转换)。卫星有效载荷是可再生的。因此,我们在板上使用了一个预失真来线性化放大器。我们介绍了使用多层感知器(MLP)神经网络(NN)实现的预失真架构。显示并比较了与该预失真器相关的两种算法:普通梯度和自然梯度。实现该预失真器的主要问题是获得足够的带宽(100 Mbits / s数据速率)。混合模拟/数字实现是解决该问题的一种解决方案。与理论算法相比,我们分析了实现的不完美效应。

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