AI-Empowered Propagation Prediction and Optimization for Reconfigurable Wireless Networks

Fusheng Zhu, Weiwen Cai, Zhigang Wang, Fang Li
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引用次数: 1

Abstract

Vehicular ad-hoc network (VANET) is one of the most important components to realizing intelligent connected vehicles, which is a high-commercial-value vertical application of the fifth-generation (5G) mobile communication system and beyond communications. VANET requires both ultrareliable low latency and high-data rate communications. In order to evolve towards the reconfigurable wireless networks (RWNs), the 5G mobile communication system is expected to adapt the key parameters of its radio nodes rapidly. However, the current propagation prediction approaches are difficult to balance accuracy and efficiency, which makes the current network unable to perform autonomous optimization agilely. In order to break through this bottleneck, an accurate and efficient propagation prediction and optimization method empowered by artificial intelligence (AI) is proposed in this paper. Initially, a path loss model based on a multilayer perception neural network is established at 2.6 GHz for three base stations in an urban environment. Not like empirical models using environment types or deterministic models employing three-dimensional environment models, this AI-empowered model explores the environment feature by introducing interference clutters. This critical innovation makes the proposed model so accurate as ray tracing but much more efficient. Then, this validated model is utilized to realize a coverage prediction for 20 base stations only within 1 minute. Afterward, key parameters of these base stations, such as transmission power, elevation, and azimuth angles of antennas, are optimized using simulated annealing. This whole methodology paves the way for evolving the current 5G network to RWNs.
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基于ai的可重构无线网络传播预测与优化
车载自组织网络(VANET)是实现智能网联汽车的重要组成部分之一,是第五代(5G)移动通信系统及超越通信的高商业价值垂直应用。VANET需要超可靠的低延迟和高数据速率通信。为了向可重构无线网络(RWNs)演进,5G移动通信系统需要快速适应其无线电节点的关键参数。然而,目前的传播预测方法难以平衡准确性和效率,这使得当前网络无法灵活地进行自主优化。为了突破这一瓶颈,本文提出了一种基于人工智能(AI)的准确高效的传播预测与优化方法。首先,针对城市环境下的三个基站,在2.6 GHz频段建立了基于多层感知神经网络的路径损耗模型。与使用环境类型的经验模型或使用三维环境模型的确定性模型不同,这种人工智能支持的模型通过引入干扰杂波来探索环境特征。这一关键的创新使得所提出的模型与光线追踪一样精确,但效率更高。然后,利用该验证模型在1分钟内实现了对20个基站的覆盖预测。然后,利用模拟退火技术对这些基站的发射功率、天线仰角和方位角等关键参数进行优化。整个方法为将当前的5G网络发展为RWNs铺平了道路。
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