Modeling and Evaluation of Machine Learning Based Network Management System for NGN

A. Bashar
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引用次数: 2

Abstract

The recent emphasis on monitoring and managing telecommunication networks in more intelligent and autonomic manner has led to the emergence and popularity of Machine Learning based Network Management Systems. In order to study the behavior and assess the performance of such NMS, it is essential that a suitable modeling and evaluation framework exists. The work presented here addresses this need and proposes an autonomic NMS which employs the prediction capabilities of the Bayesian Networks (BN) models. To achieve this, it formulates and models the BN-based Decision Support System for providing real-time decisions with regard to the Call Admission Control (CAC) problem in the Next Generation Network (NGN) environment. Simulated experiments are performed to verify the suitability and practicality of the proposed models. The novelty and relevance of this research is demonstrated through offline modeling and online performance evaluation of BNAC (Bayesian Networks-based Admission Control) by considering the metrics of Packet Delay, Packet Loss, Queue Size and Blocking Probability. The paper concludes that BNAC approach performs better than the Peak Rate CAC in terms of online CAC functionality.
基于机器学习的NGN网络管理系统建模与评价
最近强调以更智能和自主的方式监控和管理电信网络,导致了基于机器学习的网络管理系统的出现和普及。为了研究这种网络管理系统的行为和评估其性能,必须有一个合适的建模和评估框架。本文提出的工作解决了这一需求,并提出了一种采用贝叶斯网络(BN)模型预测能力的自主NMS。为了实现这一目标,它制定并建模了基于bn的决策支持系统,为下一代网络(NGN)环境下的呼叫接纳控制(CAC)问题提供实时决策。仿真实验验证了所提模型的适用性和实用性。通过考虑包延迟、包丢失、队列大小和阻塞概率等指标,对基于贝叶斯网络的允许控制(BNAC)进行离线建模和在线性能评估,证明了本研究的新颖性和相关性。本文的结论是,在在线CAC功能方面,BNAC方法优于峰值速率CAC。
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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