The capacity sharing problem in Radio Access Network (RAN) slicing deals with the distribution of the capacity available in each RAN node among various RAN slices to satisfy their traffic demands and efficiently use the radio resources. While several capacity sharing algorithmic solutions have been proposed in the literature, their practical implementation still remains as a gap. In this paper, the implementation of a Reinforcement Learning-based capacity sharing algorithm over the O-RAN architecture is discussed, providing insights into the operation of the involved interfaces and the containerization of the solution. Moreover, the description of the testbed implemented to validate the solution is included and some performance and validation results are presented.
翻译:无线电接入网络(RAN)切片中的能力共享问题涉及各RAN节点现有能力在各RAN切片之间分配,以满足其交通需求并有效利用无线电资源。虽然文献中提出了若干能力共享算法解决办法,但实际实施仍是一个空白。本文讨论了在O-RAN结构中实施强化学习能力共享算法的问题,对所涉界面的运作和解决方案的集装箱化提供了深入了解。此外,还介绍了为验证解决方案而实施的测试台的说明,并介绍了一些绩效和验证结果。