A plethora of demanding services and use cases mandate a revolutionary shift in the management of future wireless network resources. Indeed, when tight quality of service demands of applications are combined with increased complexity of the network, legacy network management routines will become unfeasible in 6G. Artificial Intelligence (AI) is emerging as a fundamental enabler to orchestrate the network resources from bottom to top. AI-enabled radio access and AI-enabled core will open up new opportunities for automated configuration of 6G. On the other hand, there are many challenges in AI-enabled networks that need to be addressed. Long convergence time, memory complexity, and complex behaviour of machine learning algorithms under uncertainty as well as highly dynamic channel, traffic and mobility conditions of the network contribute to the challenges. In this paper, we survey the state-of-art research in utilizing machine learning techniques in improving the performance of wireless networks. In addition, we identify challenges and open issues to provide a roadmap for the researchers.
翻译:大量要求很高的服务和使用案例要求在未来无线网络资源管理方面发生革命性转变。事实上,如果应用程序服务要求质量紧,加上网络复杂性的提高,6G将无法实施遗留的网络管理常规。人工智能(AI)正在成为从下到上协调网络资源的基本推动者。AI驱动的无线电接入和AI驱动的核心将为6G自动配置开辟新的机会。另一方面,AI驱动的网络存在许多挑战,需要加以解决。在不确定性下机器学习算法的长期趋同时间、记忆复杂性和复杂行为以及网络高度动态的频道、流量和流动性条件,这些都对挑战起到了推波助澜的作用。在本论文中,我们调查了在利用机器学习技术改进无线网络运行方面的最新研究。此外,我们还查明了为研究人员提供路线图的挑战和开放问题。