基于强化学习的6G梁权重优化

Jinbo Zhao, Bin Zhang, Shiyuan Chang, Yihui Wang, Li Chen
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引用次数: 0

摘要

随着无线接入网架构的不断演进,人工智能在网络优化中发挥着越来越重要的作用。Native-AI将在未来6G系统中实现快速准确的优化、实时的策略调整和趋势预测。为了应对日益增长的用户密度和复杂的无线环境,波束权重优化成为提升通信容量、覆盖范围和抗干扰能力的关键因素之一。在本文中,我们建立了一个基于强化学习(RL)算法的智能网络模型,并在包含道路和建筑物的真实典型场景中对梁模式进行了优化。通过现场测试,研究了该智能算法对网络优化的潜在影响。现场测试使用的数据是ue的真实测量报告,包含ue的位置信息和不均匀分布。优化后的信号覆盖性能和接收信号质量均有明显提高。我们还分析了人工智能在当前5G系统中的局限性,并讨论了未来在原生人工智能和强化学习方面的工作。
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Beam Weights Optimization Based on Reinforcement Learning for 6G
With the continuous evolution of wireless radio access network architecture, artificial intelligence (AI) plays an increasingly significant role in network optimization. Native-AI will realize fast and accurate optimization, real-time policy adjustment and trend prediction in future 6G systems. To cope with the increasing user density and complex wireless environment, beam weights optimization becomes one of the key factors to promote the communication capacity, coverage and anti-interference ability. In this paper, we build an intelligent network model based on the reinforcement learning (RL) algorithm and optimize the beam pattern in a real typical scenario that contains both roads and buildings. A field test is conducted to investigate the potential impacts of the intelligent algorithm on network optimization. The data used in the field test are real measurement reports from UEs, which imply the location information and the uneven distribution of UEs. The coverage performance and received signal quality are significantly improved after optimization. We also analyze the limitations of AI in the current 5G systems and discuss the future work on native-AI and RL.
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