利用离散时间马尔可夫链模拟与电力相关的网络中断原因

Ibrahim A. Gedel, Wahab A. Iddrisu
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摘要

在本文中,我们使用离散时间马尔可夫链对加纳与电力相关的网络中断原因进行建模。我们使用的数据包括 2015 年 8 月至 2021 年 4 月 5 年零 8 个月期间加纳发生的 2 756 次小规模运营商电信故障,并附有根本原因。结果表明,大多数(n = 1,404 次)网络中断是由发电机造成的,而最少的(18 次)中断是由通信设备造成的。不过,燃料问题造成的网络中断时间较长,研究期间的平均中断时间为 1,027.82 分钟。从数据中获得的过渡概率矩阵显示,无论当前网络中断的原因是什么,下一次网络中断由发电机引起的概率都高于由其他原因引起的概率。稳态分布表明,在长期(n ≥ 16)中,51% 的网络中断将由 "发电机 "造成,而 10.8% 的网络中断将由 "电池 "造成。我们还检查并模拟了 12 个步骤中 12 个可能的根本原因中任何一个造成网络中断的概率。模拟结果表明,从步骤 1 到步骤 7,无论网络中断的最初原因是什么,发电机都是最有可能导致网络中断的原因。有了这些发现,电信行业的参与者显然可以更好地制定计划,以减少未来的网络中断。
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Modeling the Causes of Power-Related Network Outages Using Discrete-Time Markov Chains
In this paper, we model the causes of power-related network outages in Ghana using discrete-time Markov chains. We used data consisting of 2,756 small-scale carrier telecommunications outages occurring in Ghana, with accompanying root causes over a period of 5 years and 8 months, from August 2015 to April 2021. The results indicate that the majority (n = 1,404) of the network outages were caused by the generators while the least number (18) of outages were caused by a communication equipment. However, longer network outages were caused by fuel issues with an average outage time of 1,027.82 min over the study period. The transition probability matrix obtained from the data revealed that regardless of the present cause of the network outage, the probability that the next network outage will be caused by the generators is higher than the probability that the outage will be attributable to any other cause. The steady-state distribution indicates that in the long run (n ≥ 16), 51% of the network outages will be caused by the “Generators” while 10.8% of the network outages will be caused by the “Batteries.” We also checked and simulated the probabilities of a network outage caused by any of the 12 possible root causes for 12 steps. It seemed apparent from the simulations that generators are the most likely cause of network outages from Step 1 up to Step 7, irrespective of what the initial cause of the network outage is. With these findings, players in the telecommunications industry can clearly plan better to reduce future network outages.
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