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Resource Allocation Scheme for Guarantee of QoS in D2D Communications Using Deep Neural Network

机译:深神经网络D2D通信QoS保证资源分配方案

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In this letter, we propose a hybrid resource allocation scheme for multi-channel underlay device-to-device (D2D) communications. In our proposed scheme, the transmit power of D2D user equipment (DUE) allocated to each channel is controlled in order to maximize the sum rate of the DUEs for a given Quality of Service (QoS) constraints. We consider two QoS constraints such that the interference caused on cellular user equipment (CUE) is kept to be less than a predefined level and the rate of individual DUE is managed to be larger than a predefined threshold. In order to solve the drawbacks associated with previous deep neural network (DNN)-based approaches in which QoS constraints could be violated with high probability, a heuristic equally reduced power (ERP) scheme, is utilized together with a DNN-based scheme. By means of simulations under various environments, we verify that the proposed scheme provides a near-optimal sum rate while guaranteeing the QoS constraints with a low computation time.
机译:在这封信中,我们提出了一种混合资源分配方案,用于多通道底层设备到设备(D2D)通信。在我们所提出的方案中,控制分配给每个信道的D2D用户设备(由于)的发射功率,以最大化给定的服务质量(QoS)约束的频率的总和率。我们考虑两个QoS约束,使得在蜂窝用户设备(提示)上对的干扰保持小于预定级别,并且各个作为的速率被管理大于预定阈值。为了解决与以前的深神经网络(DNN)相关联的缺点,其中基于高概率违反了QoS约束,启发式等级降低的功率(ERP)方案与基于DNN的方案一起使用。通过各种环境下的仿真,我们验证了所提出的方案提供了近最佳的总和速率,同时保证了低计算时间的QoS约束。

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