Dynamic Resource Management in Next Generation Networks with Dense User Traffic

Aysun Aslan, Gulce Bal, C. Toker
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引用次数: 1

Abstract

With the era of the fifth generation (5G) networks, supporting all mobile service users who have different Quality of Service (QoS) requirements becomes the main challenge. To manage and satisfy the heterogeneous requirements, network slicing concept can be a solution over a common physical infrastructure. Splitting the network into slices which have different properties (e.g., bandwidth requirements, delay tolerance, user density, etc.) allows to schedule and optimize the requests under the constraint of limited resources. The network has to decide to accept or reject the requests, and scale up/down the slices by considering the user density in accepted requests, and then, schedule the accepted requests to serve them in an order. In this paper, it is verified that slicing the network and scaling up/down the slices by using deep reinforcement learning (DRL) algorithms with consideration of user density, improve the speed of satisfaction of users with respect to the classical baseline scheduling algorithms.
下一代用户流量密集网络中的动态资源管理
随着第五代(5G)网络时代的到来,支持所有具有不同服务质量(QoS)需求的移动业务用户成为主要挑战。为了管理和满足异构需求,网络切片概念可以作为公共物理基础设施的解决方案。将网络分割成具有不同属性(例如,带宽要求,延迟容忍度,用户密度等)的片,可以在有限资源的约束下调度和优化请求。网络必须决定接受或拒绝请求,并通过考虑接受请求中的用户密度来向上/向下扩展切片,然后调度接受的请求以顺序为它们提供服务。本文验证了在考虑用户密度的情况下,使用深度强化学习(deep reinforcement learning, DRL)算法对网络进行切片并对切片进行上下缩放,相对于经典的基线调度算法,提高了用户满意度的速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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