利用神经网络在分布式管理中识别控制平面和管理平面的有毒消息

Xiaojiang Du, M. Shayman, R. Skoog
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引用次数: 0

摘要

有毒消息失败传播是一种导致电信和IP网络大规模失败的机制:部分或全部网络元素具有软件或协议“错误”,该错误在接收到某些网络控制或管理消息(有毒消息)时被激活。这个激活的“bug”可能会导致节点失败。如果网络控制或管理使得该消息在网络节点之间持续传递,并且如果节点故障概率足够高,则可能导致大规模的不稳定。我们以前的研究主要集中在集中式网络管理模式上。在集中管理中,神经网络方法是处理有毒信息失效的有效工具之一。但是,如果由于节点故障而将网络划分为多个子网,则无法采用集中式方案。本文考虑了有毒消息问题的分布式管理。特别是,我们使用分布式的神经网络方法来识别有毒信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using neural network in distributed management to identify control and management plane poison messages
Poison message failure propagation is a mechanism that has been responsible for large scale failures in both telecommunications and IP networks: Some or all of the network elements have a software or protocol 'bug' that is activated on receipt of a certain network control or management message (the poison message). This activated 'bug' would cause the node to fail with some probability. If the network control or management is such that this message is persistently passed among the network nodes, and if the node failure probability is sufficiently high, large-scale instability can result. Our previous research has been focused on centralized network management paradigm. In centralized management, one of the effective tools to deal with poison message failure is the neural network approach. However, a centralized scheme cannot be applied if the network is partitioned into several subnetworks by node failures. In this paper, we consider distributed management for the poison message problem. In particular, we use the neural network approach in a distributed way to identify the poison message.
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