面向基于无人机的智能室内网络的通用混合 LiFi-WiFi UniPHY 学习框架

Rizwana Ahmad , Dil Nashin Anwar , Haythem Bany Salameh , Hany Elgala , Moussa Ayyash , Sufyan Almajali , Reyad El-Khazali
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引用次数: 0

摘要

无人飞行器(UAV)技术的进步以及室内混合 LiFi-WiFi 网络(HLWN)的发展,有望开发出具有成本效益、高能效、适应性强、可靠、快速和按需支持 HLWN 的室内飞行网络(IFN)。要实现这一目标,能够同时进行控制通信、数据传输和传感的统一物理层(UniPHY)至关重要。然而,传统的基于块的解码器是为 LiFi 和 WiFi 单独设计的,在复杂的混合 LiFiWiFi UniPHY 系统中表现不佳。在本研究中,我们为UniPHY提出了一种基于卷积神经网络(CNN)的端到端学习框架,经过训练后可用于LiFi-WiFi混合传输,从而提高误差性能并简化无人机硬件。在这项工作中,对所提出框架的性能进行了评估,并与传统的基于独立块的通信系统进行了比较。此外,还全面总结了用于高效训练我们的学习框架的最优超参数。结果表明,在采用最佳超参数的情况下,所提出的基于 CNN 的框架优于传统的基于区块的方法,在 LiFi 信道和 WiFi 信道上分别实现了约 7 dB 和 23 dB 的信噪比增益。此外,我们还评估了损失和准确性的复杂性和训练收敛性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized hybrid LiFi-WiFi UniPHY learning framework towards intelligent UAV-based indoor networks

Advancements in unmanned aerial vehicle (UAV) technology, along with indoor hybrid LiFi-WiFi networks (HLWN), promise the development of cost-effective, energy-efficient, adaptable, reliable, rapid, and on-demand HLWN-capable indoor flying networks (IFNs). To achieve this, a unified physical layer (UniPHY) capable of simultaneous control communication, data transfer, and sensing is crucial. However, traditional block-based decoders, designed independently for LiFi and WiFi, perform poorly in complex and hybrid LiFi-WiFi-enabled UniPHY systems. In this study, we propose an end-to-end learning framework based on convolutional neural networks (CNNs) for UniPHY, which can be trained to serve hybrid LiFi-WiFi transmissions to improve error performance and simplify UAV hardware. In this work, the performance of the proposed framework is assessed and compared with that of the conventional independent block-based communication system. Furthermore, a comprehensive summary of optimal hyper-parameters for efficient training of our learning framework has been provided. It is shown that, with optimal hyper-parameters, the proposed CNN-based framework outperforms the conventional block-based approach by providing a signal-to-noise ratio gain of approximately 7 dB for the LiFi channel and 23 dB for the WiFi channel. In addition, we evaluate the complexity and training convergence for loss and accuracy.

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