In existing wireless networks, the control programs have been designed manually and for certain predefined scenarios. This process is complicated and error-prone, and the resulting control programs are not resilient to disruptive changes. Data-driven control based on Artificial Intelligence and Machine Learning (AI/ML) has been envisioned as a key technique to automate the modeling, optimization and control of complex wireless systems. However, existing AI/ML techniques rely on sufficient well-labeled data and may suffer from slow convergence and poor generalizability. In this article, focusing on digital twin-assisted wireless unmanned aerial vehicle (UAV) systems, we provide a survey of emerging techniques that can enable fast-converging data-driven control of wireless systems with enhanced generalization capability to new environments. These include SLAM-based sensing and network softwarization for digital twin construction, robust reinforcement learning and system identification for domain adaptation, and testing facility sharing and federation. The corresponding research opportunities are also discussed.
翻译:在现有的无线网络中,控制程序是人工设计的,并针对某些预先界定的情景设计。这一过程复杂且容易出错,因此产生的控制程序无法抵御破坏性的变化。基于人工智能和机器学习(AI/ML)的数据驱动控制被设想为使复杂无线系统的建模、优化和控制自动化的关键技术。然而,现有的AI/ML技术依赖于充分贴上良好标签的数据,并可能受到缓慢的趋同和普遍性差的影响。在本条中,侧重于数字双辅助无线无人驾驶飞行器(UAV)系统,我们提供了能够快速对无线系统进行数据驱动控制并增强对新环境的通用能力的新技术调查。这些技术包括基于SLAM的遥感和网络软化,用于数字双生建筑的网络、强有力的强化学习和系统识别以适应领域,以及测试设施的共享和组合。还讨论了相应的研究机会。