A parameter-influencer based model of a Self-healing network

H. Raghunandan, S. Bedekar
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引用次数: 1

Abstract

Autonomic features can be built into systems by including Self-* properties. There is a dire need to find new techniques of building in Self-* features in networks for delivering important goals like maintaining uptime and QoS, since system adminstrators are crying for help as complexity of networks and their management systems continues to grow unabatedly and managing them effectively and efficiently turning out to be a veritable nightmare. In this paper we describe how a correlation based parameter-influencer model can be used to build in Self-healing features in a network. We describe various combinations of parameters and influencers which can be used to model features of varying complexity that can be added to networking systems. Statistical techniques like linear regression are used to identify positive and negative correlation amongst parameters and influencers and changes made by the Autonomic Manager(AM) or the network management systems (NMS) to bring the network to a state of stability and thus reduce downtime. Our model is programmed as daemon on the network and two case studies are described where historical data is used to tune the network parameters more accurately. The first demonstrates how uptime can be sustained and the second demonstrates how performance (and in turn QoS) can be maintained.
基于参数影响者的自愈网络模型
通过包含Self-*属性,可以将自主特性构建到系统中。迫切需要找到新的技术来构建网络中的自定义特性,以实现维护正常运行时间和QoS等重要目标,因为随着网络及其管理系统的复杂性持续增长,系统管理员正在大声寻求帮助,有效和高效地管理它们已成为一场真正的噩梦。在本文中,我们描述了如何使用基于相关性的参数-影响者模型来构建网络中的自修复特征。我们描述了参数和影响因子的各种组合,这些组合可用于建模可添加到网络系统的不同复杂性的特征。线性回归等统计技术用于识别参数和影响因素之间的正相关和负相关,以及自主管理器(AM)或网络管理系统(NMS)所做的更改,以使网络达到稳定状态,从而减少停机时间。我们的模型被编程为网络上的守护进程,并描述了两个案例研究,其中使用历史数据更准确地调优网络参数。第一个示例演示了如何维持正常运行时间,第二个示例演示了如何维持性能(以及QoS)。
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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