Network Orchestration in Mobile Networks via a Synergy of Model-driven and AI-based Techniques

Yantong Wang, V. Friderikos
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引用次数: 2

Abstract

As data traffic volume continues to increase, caching of popular content at strategic network locations closer to the end user can enhance user experience and ease the utilization of highly congested links in the network. A key challenge in the area of proactive caching is finding the optimal locations to host the popular content items under various optimization criteria. These problems are combinatorial in nature and therefore finding optimal and/or near optimal decisions is computationally expensive. In this paper a framework is proposed to reduce the computational complexity of the underlying integer mathematical program by first predicting decision variables related to optimal locations using a deep convolutional neural network (CNN). The CNN is trained in an offline manner with optimal solutions and is then used to feed a much smaller optimization problems which is amenable for real-time decision making. Numerical investigations reveal that the proposed approach can provide in an online manner high quality decision making; a feature which is crucially important for real-world implementations.
通过模型驱动和基于人工智能技术的协同作用在移动网络中的网络编排
随着数据流量的不断增加,在靠近最终用户的战略网络位置缓存流行内容可以增强用户体验,并减轻网络中高度拥塞链接的使用。主动缓存领域的一个关键挑战是在各种优化标准下找到托管热门内容项的最佳位置。这些问题本质上是组合的,因此找到最优和/或接近最优的决策在计算上是昂贵的。本文提出了一个框架,通过首先使用深度卷积神经网络(CNN)预测与最优位置相关的决策变量来降低底层整数数学程序的计算复杂度。CNN以具有最优解的离线方式进行训练,然后用于提供更小的优化问题,这可以用于实时决策。数值研究表明,该方法可以在线提供高质量的决策;这个特性对现实世界的实现至关重要。
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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