使用生成对抗网络的无线电地图估计及其相关业务方面

S. K. Vankayala, Swaraj Kumar, Ishaan Roy, D. Thirumulanathan, Seungil Yoon, Ignatius Samuel Kanakaraj
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引用次数: 7

摘要

无线地图广泛应用于5G通信系统的网络资源管理。然而,由于需要从许多设备收集测量数据,因此在实践中频繁更新无线电地图既昂贵又效率低下。在本文中,我们提出了一种高度精确的深度学习技术来预测平面域上任意点相对于发射机的传播路径损失。我们的建议采用生成对抗网络来产生精确的路径损失估计,它非常接近光线追踪模拟,但计算效率更高。在商业化方面,我们的建议的使用为公司提供了三重好处:根据环境变化动态估计无线电地图,无线电地图生成的零接触自动化,更重要的是,端到端基于人工智能的网络规划解决方案的开发。
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Radio Map Estimation Using a Generative Adversarial Network and Related Business Aspects
Radio maps are widely used in the network resource management of 5G communication systems. However, a frequent radio map update is expensive and inefficient in practice because of the need to collect measurements from many devices. In this paper, we propose a highly accurate deep learning technique to predict the propagation path loss from any point on a planar domain with respect to the transmitter. Our proposal adopts a generative adversarial network to yield precise path loss estimations which are very close to ray tracing simulations but are computationally more efficient.The use of our proposal offers a three-fold benefits to a firm in terms of commercialization: Dynamic estimation of radio map corresponding to the changes in the environment, zero-touch automation of radio map generation, and more importantly, the development of end-to-end AI based network planning solution.
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