论文标题

D2D链接中基于AI的渠道预测:经验验证

AI-Based Channel Prediction in D2D Links: An Empirical Validation

论文作者

Simmons, Nidhi, Gomes, Samuel B. Ferreira, Yacoub, Michel Daoud, Simeone, Osvaldo, Cotton, Simon L, Simmons, David E.

论文摘要

由人工智能(AI)推动的设备对设备(D2D)通信将是一项联盟技术,它将改善系统性能并支持高级无线网络(5G,6G及以后)中的新服务。在本文中,将基于AI的深度学习技术应用于在5.8 GHz下运行的D2D链接,目的是为有关预测接收的信号强度变化的以下问题提供潜在的答案:i)预测频道连贯时间的函数的效果如何? ii)目标预测性能所需的最小输入样本数量是多少?为此,考虑了各种测量环境和方案,包括室内开放式场所,室外开放空间,视线线(LOS),非LOS(NLOS)和移动方案。探索了四个深度学习模型,即短期短期记忆网络(LSTMS),封闭式复发单元(GRU),卷积神经网络(CNNS)以及密集或馈电网络(FFNS)。线性回归用作基线模型。据观察,GRU和LSTM具有等效性能,并且与CNN,FFN和线性回归相比,两者都优质。这表明GRUS和LSTMS能够更好地说明D2D数据集中的时间依赖性。我们还提供有关在通道相干时间的最小输入长度的建议。例如,为了预测未来的17和23 ms,在室内和室外LOS环境中,建议输入长度为25 ms。这表明大部分学习是在通道的连贯性时间内完成的,并且很大的输入长度可能并不总是有益的。

Device-to-Device (D2D) communication propelled by artificial intelligence (AI) will be an allied technology that will improve system performance and support new services in advanced wireless networks (5G, 6G and beyond). In this paper, AI-based deep learning techniques are applied to D2D links operating at 5.8 GHz with the aim at providing potential answers to the following questions concerning the prediction of the received signal strength variations: i) how effective is the prediction as a function of the coherence time of the channel? and ii) what is the minimum number of input samples required for a target prediction performance? To this end, a variety of measurement environments and scenarios are considered, including an indoor open-office area, an outdoor open-space, line of sight (LOS), non-LOS (NLOS), and mobile scenarios. Four deep learning models are explored, namely long short-term memory networks (LSTMs), gated recurrent units (GRUs), convolutional neural networks (CNNs), and dense or feedforward networks (FFNs). Linear regression is used as a baseline model. It is observed that GRUs and LSTMs present equivalent performance, and both are superior when compared to CNNs, FFNs and linear regression. This indicates that GRUs and LSTMs are able to better account for temporal dependencies in the D2D data sets. We also provide recommendations on the minimum input lengths that yield the required performance given the channel coherence time. For instance, to predict 17 and 23 ms into the future, in indoor and outdoor LOS environments, respectively, an input length of 25 ms is recommended. This indicates that the bulk of the learning is done within the coherence time of the channel, and that large input lengths may not always be beneficial.

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