The emergence of diverse network applications demands more flexible and responsive resource allocation for networks. Network slicing is a key enabling technology that provides each network service with a tailored set of network resources to satisfy specific service requirements. The focus of this paper is the network slicing of access networks realized by Passive Optical Networks (PONs). This paper proposes a learning-based Dynamic Bandwidth Allocation (DBA) algorithm for PON access networks, considering slice-awareness, demand-responsiveness, and allocation fairness. Our online convex optimization-based algorithm learns the implicit traffic trend over time and determines the most robust window allocation that reduces the average latency. Our simulation results indicate that the proposed algorithm reduces the average latency by prioritizing delay-sensitive and heavily-loaded ONUs while guaranteeing a minimal window allocation to all ONUs.
翻译:各种网络应用的出现要求为网络分配更加灵活和有求必应的资源分配。网络切片是一种关键的赋能技术,为每个网络服务提供一套量身定制的网络资源,以满足具体的服务要求。本文件的重点是被动光学网络实现的接入网络的网络切片。本文件建议为PON接入网络采用基于学习的动态宽带分配算法,同时考虑到切片认识、需求响应和分配公平性。我们的在线锥形优化算法随着时间的推移学习了隐性交通趋势,确定了最有力的窗口分配,从而降低了平均延时率。我们的模拟结果表明,拟议的算法通过优先考虑延迟敏感度和重载的ONUs,同时保证对所有ONUs进行最低限度的窗口分配,从而降低了平均延迟时间。