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Wireless link adaptation with outdated CSI — a hybrid data-driven and model-based approach

机译:具有过时CSI的无线链路自适应-混合数据驱动和基于模型的方法

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Link adaptation provides high spectral efficiency in wireless communications by selecting appropriate transmission parameters, e.g., the modulation and coding scheme (MCS), based on the instantaneous wireless channel. However, link adaptation suffers from impairments due to channel state information (CSI) feedback delay. In this paper, we extend the data-driven MCS selection scheme in our previous work to the case of outdated CSI, by assuming that CSI history is available to the system. We present two approaches that leverage the CSI history to optimally select the MCS for the current channel, i.e., i) an end-to-end (E2E) machine learning approach and ii) a hybrid data-driven and model-based approach. The E2E method uses the CSI history as input to a neural network for MCS selection. Conversely, the hybrid method uses a lower-dimensionality sufficient statistic for the instantaneous CSI, computed from the CSI history, as input to a neural network for MCS selection. We demonstrate that replacing the CSI history with the sufficient statistic comes without loss of generality. Moreover, by means of numerical experiments, we show that both approaches effectively compensate for the feedback delay. However, we advocate the hybrid approach as it comes with the additional benefits of i) a smaller neural network, which in turn requires a lower amount of data and training time, ii) improved explainability, and iii) better insights into optimization choices.
机译:通过基于瞬时无线信道选择适当的传输参数,例如调制和编码方案(MCS),链路自适应在无线通信中提供了高频谱效率。但是,由于信道状态信息(CSI)反馈延迟,链路自适应会受到损害。在本文中,通过假设CSI历史记录可供系统使用,我们将先前工作中的数据驱动的MCS选择方案扩展到了过时的CSI情况。我们提供了两种利用CSI历史记录来为当前通道最佳选择MCS的方法,即i)端到端(E2E)机器学习方法和ii)混合数据驱动和基于模型的方法。 E2E方法使用CSI历史记录作为神经网络的输入,以进行MCS选择。相反,混合方法使用从CSI历史记录计算出的瞬时CSI的较低维度的足够统计量作为神经网络的输入,以进行MCS选择。我们证明,用足够的统计量替换CSI历史记录不会失去一般性。此外,通过数值实验,我们表明两种方法都可以有效地补偿反馈延迟。但是,我们提倡使用混合方法,因为它具有以下附加优点:i)较小的神经网络,这反过来需要较少的数据量和训练时间; ii)改进的可解释性; iii)更好地了解优化选择。

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