Network resource allocation for emergency management based on closed-loop analysis

Guda Blessed, Ibrahim Aliyu, James Agajo, Thiago Lima Sarmento, Cleverson Veloso Nahum, Lucas Novoa, Rebecca Aben-Athar, Mariano Moura, Lucas Matni, Aldebaro Klautau, Deena Mukundan, Divyani R Achari, Mehmet Karaca, Doruk Tayli, �zge Simay Demirci, V. Udaya Sankar, Sai Jnaneswar Juvvisetty, V.M.V.S. Aditya, Abhishek Dandekar, Shabnam Sultana, Jinsul Kim, Vishnu Ram OV
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Abstract

The telecommunication system being a critical pillar of emergency management, intelligent deployment and management of slices in an affected area will help emergency responders. Techniques such as automated management of Machine Learning (ML) pipelines across the edge and emergency responder devices, usage of hierarchical closed-loops, and offloading inference tasks closer to the edge can minimize latencies for first responders in case of emergencies. This study describes the major results from building a Proof of Concept (PoC) for network resource allocation for emergency management using a hierarchical autonomous Artificial Intelligence (AI)/ML-based closed-loops in the mobile network, organized by the Internal Telecommunication Union Focus Group on Autonomous Networks (ITU FG-AN). The background scenario for this PoC included the interaction between a higher closed-loop in the Operations Support System (OSS) and a lower closed-loop in Radio Access Network (RAN) to intelligently share RAN resources between the public and the emergency responder slice. Representation of closed-loop "controllers" in a declarative fashion (intent), triggering "imperative actions" in the "underlay" based on the intent, setup of a data pipeline between various components, and methods of "influencing" lower layer loops using specific logic/models, were some of the essential aspects investigated by various teams. The main conclusions are summarised in this paper, including the significant observations and limitations from the PoC as well as future directions.
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基于闭环分析的应急管理网络资源分配
电信系统作为应急管理的重要支柱,在受灾地区智能部署和管理切片将有助于应急响应人员。诸如跨边缘和紧急响应设备的机器学习(ML)管道的自动化管理、分层闭环的使用以及更靠近边缘的卸载推理任务等技术可以最大限度地减少紧急情况下第一响应者的延迟。本研究描述了由国际电信联盟自治网络焦点小组(ITU FG-AN)组织的在移动网络中使用分层自主人工智能(AI)/ ml闭环构建用于应急管理的网络资源分配的概念验证(PoC)的主要结果。该PoC的背景场景包括操作支持系统(OSS)中的高级闭环和无线接入网(RAN)中的低级闭环之间的交互,以便在公众和应急响应器之间智能地共享RAN资源。以声明式方式(意图)表示闭环“控制器”,在“底层”中基于意图触发“命令式操作”,在各个组件之间设置数据管道,以及使用特定逻辑/模型“影响”下层循环的方法,是各个团队研究的一些重要方面。本文总结了主要结论,包括PoC的重要观察结果和局限性以及未来的发展方向。
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