Open Radio Access Network (O-RAN) is an emerging paradigm, whereby virtualized network infrastructure elements from different vendors communicate via open, standardized interfaces. A key element therein is the RAN Intelligent Controller (RIC), an Artificial Intelligence (AI)-based controller. Traditionally, all data available in the network has been used to train a single AI model to use at the RIC. In this paper we introduce, discuss, and evaluate the creation of multiple AI model instances at different RICs, leveraging information from some (or all) locations for their training. This brings about a flexible relationship between gNBs, the AI models used to control them, and the data such models are trained with. Experiments with real-world traces show how using multiple AI model instances that choose training data from specific locations improve the performance of traditional approaches.
翻译:开放无线电接入网络(O-RAN)是一个新出现的范例,通过这种模式,来自不同供应商的虚拟网络基础设施要素通过开放、标准化的界面进行交流,其中的一个关键要素是RAN智能控制器(RIC),这是一个人工智能控制器,传统上,网络中所有可用数据都用于培训一个单一的AI模型,供RIC使用。在本文中,我们介绍、讨论和评价在不同区域中创建多个AI模型实例,利用来自某些(或所有)地点的信息进行培训,从而在GNB、用于控制这些模型的AI模型和这类模型中培训的数据之间建立灵活的关系。