Rule based reasoning for network management

A. D. Paola, S. Fiduccia, S. Gaglio, L. Gatani, G. Re, A. Pizzitola, M. Ortolani, P. Storniolo, A. Urso
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引用次数: 13

Abstract

This paper focuses on improving network management by the adoption of artificial intelligence techniques. We propose a distributed multi-agent architecture for network management, where a logical reasoner acts as a managing entity capable of directing, coordinating, and triggering monitoring and management actions in the proposed architecture. The logical inference system has been devised to enable automated isolation, diagnosis, and to repair network anomalies, thus enhancing the reliability, performance, and security of the network. The measurements of network events are captured by programmable sensors deployed on the network devices and are collected by the network management entity where they are merged with general domain knowledge, with a view to identifying the root causes of anomalies, and to decide on reparative actions. The relevant results inferred by the logical reasoner and the significant events occurred on the network are stored both in a global DB and in local distributed DBs, in order to enable successive analyses of network events. In order to illustrate the advantages and potential benefits deriving from the reasoning capabilities of our management system, the results of preliminaries experiments are analyzed.
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基于规则的网络管理推理
本文的重点是通过采用人工智能技术来改善网络管理。我们提出了一种用于网络管理的分布式多代理体系结构,其中逻辑推理器充当管理实体,能够指导、协调和触发所提议体系结构中的监视和管理操作。逻辑推理系统能够自动隔离、诊断和修复网络异常,从而提高网络的可靠性、性能和安全性。网络事件的测量由部署在网络设备上的可编程传感器捕获,并由网络管理实体收集,并将其与一般领域知识合并,以确定异常的根本原因,并决定修复行动。逻辑推理器推断的相关结果和网络上发生的重要事件存储在全局DB和本地分布式DB中,以便对网络事件进行连续分析。为了说明我们的管理系统推理能力的优势和潜在效益,对初步实验结果进行了分析。
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