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首页> 外文期刊>IEEE transactions on wireless communications >Predicting Device-to-Device Channels From Cellular Channel Measurements: A Learning Approach
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Predicting Device-to-Device Channels From Cellular Channel Measurements: A Learning Approach

机译:从蜂窝通道测量预测设备到设备通道:学习方法

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摘要

Device-to-device (D2D) communication, which ena- bles a direct connection between users while bypassing the cellular channels to base stations (BSs), is a promising way to offload the traffic from conventional cellular networks. In D2D communication, optimizing the resource allocation requires the knowledge of D2D channel gains. However, such knowledge is hard to obtain at reasonable signaling costs. In this paper, we show this problem can be circumvented by tapping into the information provided by the estimated cellular channels between the users and surrounding BSs as these channels are estimated anyway for a normal operation of the network. While the cellular and D2D channel gains exhibit independent fast fading behavior, we show that average gains of the cellular and D2D channels share a non-explicit relation, which is rooted into the network topology, terrain, and buildings setup. We propose a deep learning approach to predict the D2D channel gains from seemingly independent cellular channels. Our results show a high degree of convergence between the true and predicted D2D channel gains. Moreover, we demonstrate the robustness of the proposed scheme against environment changes and inaccuracies during the offline training. The predicted gains allow to reach a near-optimal capacity in many radio resource management algorithms.
机译:设备到设备(D2D)通信,其在绕过蜂窝通道(BSS)的同时将用户之间直接连接,是从传统蜂窝网络卸载流量的有希望的方式。在D2D通信中,优化资源分配需要D2D频道增益的知识。然而,这种知识难以以合理的信号成本获得。在本文中,我们示出了通过利用用户和周围BS之间提供的估计蜂窝通道提供的信息来规避这个问题,因为无论如何估计网络的正常操作。虽然蜂窝和D2D通道增益表现出独立的快速衰落行为,但我们表明蜂窝和D2D通道的平均收益共享非显式关系,植根于网络拓扑,地形和建筑物设置。我们提出了一种深入的学习方法来预测看似独立的蜂窝通道的D2D信道。我们的结果显示了真实和预测的D2D频道增益之间的高收敛程度。此外,我们展示了在离线培训期间展示了拟议方案对环境变化和不准确的稳健性。预测的增益允许在许多无线电资源管理算法中达到近乎最佳容量。

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