D3PicoNet:实现快速准确的室内d波段毫米波Picocell部署

Hem Regmi, Sanjib Sur
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引用次数: 0

摘要

我们提出了D3PicoNet,它允许网络部署人员在d波段(毫米波)频率上快速完成实际的室内现场调查。D3PicoNet在考虑主要反射对象的情况下,对给定环境的毫米波反射剖面进行建模。然后,它利用这个模型来确定优化反射器效率的地方。D3PicoNet了解环境,并在这样的位置部署d波段皮蜂窝,皮蜂窝可以在视距(LoS)受阻时提供非视距(NLoS)路径的覆盖。D3PicoNet的核心模块是一个深度学习网络,可以学习视觉深度图像与毫米波信号反射曲线之间的关系,并可以准确预测任何未观测位置的信号反射曲线,这使得D3PicoNet能够找到最佳部署位置,以最小的皮细胞数量最大化覆盖范围和数据速率。我们在两个具有多个室内环境的建筑物上实施并评估了D3PicoNet。D3PicoNet可以适应新的环境,允许它在其他室内环境中使用,只需最小的调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
D3PicoNet: Enabling Fast and Accurate Indoor D-Band Millimeter-Wave Picocell Deployment
We propose D3PicoNet, which allows network deployers to quickly complete realistic indoor site surveys at D-band (mmWave) frequency. D3PicoNet models the mmWave reflection profile of a given environment, considering the primary reflecting objects. It then utilizes this model to identify places that optimize the efficiency of the reflectors. D3PicoNet understands an environment and deploys D-band picocells at such locations that picocells provide coverage with Non-Line-of-Sight (NLoS) paths when Line-of-Sight (LoS) is obstructed. The core module of D3PicoNet is a deep learning network that learns the relationship between the visual depth images to the mmWave signal reflection profiles and can accurately predict signal reflection profiles at any unobserved location, which allows D3PicoNet to find the best deployment locations maximizing the coverage and data rate with a minimum number of picocells in an environment. We implement and evaluate D3PicoNet on two buildings with multiple indoor environments. D3PicoNet can adapt to new environments, allowing it to be used in other indoor environments with minimal adjustments.
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