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Long Short-Term Memory Network for Wireless Channel Prediction

机译:用于无线信道预测的长短期内存网络

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摘要

In modern wireless systems, channel prediction is an effective way to overcome the feedback delay of channel state information (CSI). When the receiver performs adaptive transmission based on the feedback CSI, the channel prediction algorithm can reduce the system overhead by predicting the future CSI. In this paper, we provide a long short-term memory (LSTM) network for wireless channel prediction. This method can get a smaller prediction error than other intelligence methods. Experiments show that the LSTM model has a lower normalized mean square error (NMSE) and less running time than support vector machine, artificial neural network, and recurrent neural network prediction approaches.
机译:在现代无线系统中,信道预测是克服信道状态信息(CSI)的反馈延迟的有效方法。当接收器基于反馈CSI执行自适应传输时,信道预测算法可以通过预测未来的CSI来减少系统开销。在本文中,我们为无线信道预测提供了长期短期存储器(LSTM)网络。此方法可以获得比其他智能方法更小的预测误差。实验表明,LSTM模型具有比支持向量机,人工神经网络和经常性神经网络预测方法更低的归一化均线误差(NMSE)和较少的运行时间。

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