基于USRP的MIMO-OFDM系统中神经网络预失真技术的评估

M. W. Gunawan, Naufal Ammar Priambodo, Melki Mario Gulo, A. Arifin, Yoedy Moegiharto, Hendy Briantoro
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引用次数: 2

摘要

MIMO OFDM是4G网络系统的关键技术。MIMO-OFDM系统提高了频谱效率,增加了系统的容量。USRP硬件到MIMO OFDM系统的实现吸引了一些研究人员进行实验。因此,我们在应用预失真技术的MIMO OFDM系统中进行了实验。在这个实验中,我们使用人工神经网络来评估预失真技术的性能。实验采用LabVIEW支持的USRP 2920硬件和Phyton软件。OFDM系统使用128个子载波来产生OFDM符号,MIMO系统在发射机和接收机侧使用2个天线。Tx和Rx之间没有障碍,也没有视线传输场景。使用人工神经网络算法的预失真技术的性能以接收机处的符号星座或误差矢量幅度(EVM)表示。并且文本或字符被用作系统的输入。从实验结果可以看出,Tx和Rx之间的距离影响误差矢量幅度(EVM),预失真技术产生误差矢量幅度的改善。Tx和Rx之间的距离越短,可以减少接收信号的失真。在发射机侧,预失真技术的性能表现为非线性功率放大器的线性化改进。因此,功率放大器的线性区域越宽,传输信号的带内失真就越小,这可以看作是误差向量幅值(EVM)的提高。
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Evaluations of the predistortion technique by neural network algorithm in MIMO-OFDM system using USRP
MIMO OFDM is the key technology of 4G network system. MIMO-OFDM system  enhances the spectrum efficiency and increases the capacity of the system. The implementation of USRP hardware to MIMO OFDM system has been attracted some researchers to conduct the experiments. So we conduct the experiments in a MIMO OFDM system that applies the predistortion technique.  In this experiment, we evaluate performances of the predistortion technique by using the artificial neural network.  USRP 2920 hardware which is supported by LabVIEW and Phyton software are used in this experiment. OFDM system uses 128 subcarriers to produce an OFDM symbol, and MIMO system uses 2 antennas at transmitter and receiver side. And no obstacles between Tx and Rx, or line of sight transmission scenarios. The performances of the predistortion technique using the artificial neural network algorithm are shown in symbol constellations or Error Vector Magnitude (EVM) at the receiver. And the texts or characters are used as the input of the system. From the experiment results can be seen that the distance between Tx and Rx affects the Error Vector Magnitude (EVM) and predistortion technique produces the Error vector magnitude (EVM) improvement. More shorter the distance between Tx and Rx can decrease distortions of the received signal,  At the transmitter side, the performance of predistortion technique is shown as the linearization improvement of  the non-linearity power amplifier. Therefore more wider the linear region of power amplifier results the decreasing in band distortion of transmitted signal, and can be seen as the Error Vector Magnitude (EVM) improvement.
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