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Predistortion system implementation based on analog Neural Networks for linearizing High Power Amplifiers transfer characteristics

机译:基于模拟神经网络的预失真系统实现大功率放大器传输特性线性化

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In order to correct non-linearities due to High Power Amplifiers (HPA) operating near saturation in telecommunication transceivers, a new adaptive predistortion system based on analog Neural Networks (NNs) was developed. Based on size, consumption and bandwidth considerations, Multi-Layer Perceptron (MLP) type NNs were implemented in a 0.6 μm CMOS ASIC. The NNs parameters are digitally updated with a computer, depending on simulation conditions (temperature drifts, ageing variations). The interface between the analog part and the software updating system is integrated in an analogdigital PCB including a FPGA, 6 analog-to-digital converters and 62 digital-to-analog converters. This paper describes the realization of each part of the breadboard system and presents experimental validation results of the whole predistortion module.
机译:为了校正由于高功率放大器(HPA)在电信收发器中接近饱和而导致的非线性,开发了一种基于模拟神经网络(NN)的新型自适应预失真系统。基于大小,消耗和带宽的考虑,多层感知器(MLP)类型的NN在0.6μmCMOS ASIC中实现。根据模拟条件(温度漂移,老化变化),使用计算机对NNs参数进行数字更新。模拟部分和软件更新系统之间的接口集成在一个模拟数字PCB中,该PCB包括一个FPGA,6个模数转换器和62个数模转换器。本文介绍了面包板系统各部分的实现,并给出了整个预失真模块的实验验证结果。

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