ITAINov 25, 2020

Deep Learning-based Resource Allocation For Device-to-Device Communication

arXiv:2011.12757v11 citations
AI Analysis

This work addresses the problem of efficient resource allocation for D2D communication in cellular systems, which is important for improving spectral efficiency and QoS for network operators and users, representing an incremental improvement over existing methods.

This paper proposes a deep learning framework to optimize resource allocation in multi-channel cellular systems with device-to-device (D2D) communication. It aims to maximize spectral efficiency while maintaining cellular user QoS by optimizing channel assignment and transmit power levels for D2D users. The framework achieves near-optimal performance with low computation time, demonstrating real-time capability.

In this paper, a deep learning (DL) framework for the optimization of the resource allocation in multi-channel cellular systems with device-to-device (D2D) communication is proposed. Thereby, the channel assignment and discrete transmit power levels of the D2D users, which are both integer variables, are optimized to maximize the overall spectral efficiency whilst maintaining the quality-of-service (QoS) of the cellular users. Depending on the availability of channel state information (CSI), two different configurations are considered, namely 1) centralized operation with full CSI and 2) distributed operation with partial CSI, where in the latter case, the CSI is encoded according to the capacity of the feedback channel. Instead of solving the resulting resource allocation problem for each channel realization, a DL framework is proposed, where the optimal resource allocation strategy for arbitrary channel conditions is approximated by deep neural network (DNN) models. Furthermore, we propose a new training strategy that combines supervised and unsupervised learning methods and a local CSI sharing strategy to achieve near-optimal performance while enforcing the QoS constraints of the cellular users and efficiently handling the integer optimization variables based on a few ground-truth labels. Our simulation results confirm that near-optimal performance can be attained with low computation time, which underlines the real-time capability of the proposed scheme. Moreover, our results show that not only the resource allocation strategy but also the CSI encoding strategy can be efficiently determined using a DNN. Furthermore, we show that the proposed DL framework can be easily extended to communications systems with different design objectives.

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