利用神经网络评估无线网络的可靠性

A. Snow, P. Rastogi, G. Weckman
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引用次数: 24

摘要

无线网络系统等关键基础设施需要可靠性。本文讨论的可靠性属性包括可用性、可靠性、可维护性和生存性。本研究利用计算机模拟和人工智能技术,提出了一种评估无线网络可靠性的新方法。新方法基于神经网络的发展,该网络被训练来研究无线网络的可用性、可靠性、可维护性和生存性属性(ARMS)。在这项工作中,给定无线基础设施的各种可靠性和可维护性属性场景,确定其对网络可用性和生存性的影响。组件平均故障时间(MTTF)用于可靠性建模,而平均恢复时间(MTR)用于可维护性。这里,不可用性(可用性的补充)被定义为整个网络系统停机的时间占比,而可生存性是网络用户容量随时间增长的时间占比。可用性和生存能力可以是瞬时的,也可以是一段时间内的平均值。用于训练神经网络的数据集是由一系列分量MTTF和MTTR的仿真实验获得的。此外,还确定了超过新的监管中断报告阈值的次数。本研究还侧重于与评估无线网络的ARMS属性的分析和仿真技术相比,神经网络建模的相对性能,以及可以从神经网络建模中获得的额外见解。
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Assessing dependability of wireless networks using neural networks
Critical infrastructures such as wireless network systems demand dependability. Dependability attributes addressed in this paper include availability, reliability, maintainability and survivability. This research uses computer simulation and artificial intelligence to introduce a new approach to assess dependability of wireless networks. The new approach is based on the development of a neural network, which is trained to investigate availability, reliability, maintainability, and survivability attributes (ARMS) of a wireless network. In this work, given a variety of reliability and maintainability attribute scenarios for a wireless infrastructure, the resulting impact on network availability and survivability are determined. Component mean time to failure (MTTF) is used to model reliability, while the mean time to restore (MTR) is used for maintainability. Here, unavailability, the complement of availability, is defined as the fraction of time the entire network system is down, while survivability is the fraction of network user capacity up over time. Both availability and survivability can be instantaneous or averaged over some period. The data set, which is used to train the neural network, is obtained from simulation experiments with a range of component MTTF and MTTR. In addition, the number of times a new regulatory outage reporting threshold is surpassed is also determined. This research also focuses on the relative performance of neural network modeling compared to analytical and simulation techniques for assessing the ARMS attributes of a wireless network, and the additional insights that can be obtained from NN modeling.
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