Feedback-based learning for self-managed network elements

P. Magdalinos, A. Kousaridas, P. Spapis, Giorgos P. Katsikas, N. Alonistioti
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引用次数: 5

Abstract

Autonomic network management systems will operate in a volatile network environment; thus they should be able to continuously adapt their decision making mechanism through learning from the behavior of the communication system. In this paper, a novel learning scheme is proposed based on the network-wide collected performance experience, targeting the enhancement of network elements' decision making engine. The algorithm employs a fuzzy logic inference engine in order to enable self-managed network elements faults or optimization opportunities identification, which is enhanced by applying data mining techniques on the accumulated observations.
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基于反馈的自管理网元学习
自主网络管理系统将在多变的网络环境中运行;因此,他们应该能够通过学习通信系统的行为来不断调整他们的决策机制。本文提出了一种基于全网性能经验的学习方案,以增强网元决策引擎为目标。该算法采用模糊逻辑推理引擎,实现自管理的网元故障或优化机会识别,并通过对累积观测数据的数据挖掘技术进行增强。
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