OneAI - Novel Multipurpose Deep Learning Algorithms for UWB Wireless Networks

A. Abbasi, Huaping Liu
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引用次数: 1

Abstract

In this paper, novel multipurpose deep learning algorithms are proposed for ultra-wideband (UWB) wireless networks that are capable of identifying the channel environment, estimating the SNR level, and performing ToA estimation, simultaneously. UWB technology is among the rapid-growing solutions for the next generation of deep learning-based wireless communication and localization systems. Existing deep learning algorithms for UWB wireless networks have addressed the various signal processing tasks individually in separate deep learning modules. This, however, increases the computational complexity, power consumption, and overall latency of the models. In this paper, unlike the existing methods, the desired signal processing tasks are performed in one single deep learning module. The proposed model consists of a main deep learning module as the core of the model that extracts low-level information from the signal and several shallow learning networks to extract high-level information. We demonstrate that the low-level information that is extracted in the core deep learning module can be reused in all separate tasks. The performance of the proposed models is investigated against the standard IEEE 802.15.4a channel model by evaluating various metrics such as accuracy, area under the curve (AUC), precision, mean absolute error (MAE), and mean square error (MSE).
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一种新的UWB无线网络多用途深度学习算法
本文提出了一种新的多用途深度学习算法,用于超宽带(UWB)无线网络,该算法能够同时识别信道环境、估计信噪比水平和执行ToA估计。超宽带技术是下一代基于深度学习的无线通信和定位系统快速发展的解决方案之一。现有的超宽带无线网络深度学习算法在单独的深度学习模块中分别解决了各种信号处理任务。然而,这增加了模型的计算复杂性、功耗和总体延迟。在本文中,与现有方法不同,所需的信号处理任务在单个深度学习模块中执行。该模型由一个主要的深度学习模块作为模型的核心,从信号中提取低级信息,以及几个浅层学习网络提取高级信息。我们证明了在核心深度学习模块中提取的底层信息可以在所有单独的任务中重用。通过评估各种指标,如精度、曲线下面积(AUC)、精度、平均绝对误差(MAE)和均方误差(MSE),根据标准IEEE 802.15.a信道模型对所提出模型的性能进行了研究。
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