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首页> 外文期刊>IEEE transactions on wireless communications >Efficient Prediction of Link Outage in Mobile Optical Wireless Communications
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Efficient Prediction of Link Outage in Mobile Optical Wireless Communications

机译:高效预测移动光学无线通信中的链路中断

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摘要

Optical wireless networks, especially those relying on visible light communications, suffer from severe deterioration in signal's quality when the line-of-sight (LOS) link is absent due to user's mobility. In order to enable efficient resource management within such networks, reliable prediction of LOS link outage is essential. Towards this objective, this article proposes a data-driven approach based on deep machine learning techniques to predict the outage events in an LOS link. First, we present a framework to generate sufficient data representing the channel gain in mobile optical wireless networks that consist of visible light communications in the downlink and infrared communications in the uplink. Using the developed dataset, we propose a channel predictor that forecasts the burst outages or signal recoveries in the upcoming frames using a deep recurrent neural network that implements long-short-term-memory (LSTM) units. To achieve this goal, we propose a low-complexity approach to reduce the data sparsity due to the user's mobility by abstracting and densifying the channel state sequence. For a one second prediction interval, the proposed prediction framework achieves an event hit rate of 91.55% for abrupt outages with an average event timing error of 79 ms, and 83.19% for recoveries from outages with 145 ms timing error. This timing error is on the same order of magnitude with the coherence time of the optical wireless channel. Therefore, this predictor is very useful in developing efficient resource management strategies in such optical networks.
机译:光学无线网络,尤其是依赖可见光通信的网络,当由于用户的移动性而非不存在视线(LOS)链路时,仍然对信号质量的严重劣化。为了在这种网络中实现高效的资源管理,可靠地预测LOS链接中断是必不可少的。对于此目标,本文提出了一种基于深度机器学习技术的数据驱动方法,以预测LOS链路中的中断事件。首先,我们介绍了一种框架,以生成表示移动光学无线网络中的信道增益的足够数据,该通道增益包括在上行链路中的下行链路和红外通信中由可见光通信组成。使用开发的数据集,我们提出了一种频道预测因子,其预测即将介绍帧中的突发中断或信号恢复使用,该频帧使用深频的神经网络实现长期内存(LSTM)单元。为实现这一目标,我们提出了一种低复杂性的方法,通过抽象和致密信道状态序列来降低数据稀疏性。对于一个第二预测间隔,所提出的预测框架实现了91.55%的事件命中率,对于79毫秒的平均事件定时误差,83.19%,从带有145 ms时序误差的中断。该定时误差与光纤无线信道的相干时间相同的幅度。因此,该预测变量对于在这种光网络中开发有效的资源管理策略非常有用。

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