Network automation is gaining significant attention in the development of B5G networks, primarily for reducing operational complexity, expenditures and improving network efficiency. Concurrently operating closed loops aiming for individual optimization targets may cause conflicts which, left unresolved, would lead to significant degradation in network Key Performance Indicators (KPIs), thereby resulting in sub-optimal network performance. Centralized coordination, albeit optimal, is impractical in large scale networks and for time-critical applications. Decentralized approaches are therefore envisaged in the evolution to B5G and subsequently, 6G networks. This work explores pervasive intelligence for conflict resolution in network automation, as an alternative to centralized orchestration. A Q-Learning decentralized approach to network automation is proposed, and an application to network slice auto-scaling is designed and evaluated. Preliminary results highlight the potential of the proposed scheme and justify further research work in this direction.
翻译:在开发B5G网络时,网络自动化日益受到重视,主要是为了减少业务复杂性、开支和提高网络效率。同时,为个别优化目标而运行的闭路电视可能会造成冲突,而这种冲突仍未解决,会导致网络关键业绩指标严重退化,从而导致网络业绩低于最佳水平。在大型网络和时间紧迫的应用中,集中协调虽然是最佳的,但并不切实际。因此,在向B5G网络演变的过程中设想了分散做法,随后又设想了6G网络网络。这项工作探索了在网络自动化中解决冲突的无处不在的情报,作为集中协调的替代办法。提议对网络自动化采取Q-学习分散化办法,并设计和评价了网络切片自动标定的应用。初步结果突出了拟议办法的潜力,并证明在这方面开展进一步研究工作是合理的。