Limiting Distribution of the Three-State Semi-Markov Model of Technical State Transitions of Ship Power Plant Machines and its Applicability in Operational Decision-Making

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
J. Girtler
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引用次数: 5

Abstract

Abstract The article presents the three-state semi-Markov model of the process {W(t): t ≥ 0} of state transitions of a ship power plant machine, with the following interpretation of these states: s1 – state of full serviceability, s2 – state of partial serviceability, and s3 – state of unserviceability. These states are precisely defined for the ship main engine (ME). A hypothesis is proposed which explains the possibility of application of this model to examine models of real state transitions of ship power plant machines. Empirical data concerning ME were used for calculating limiting probabilities for the process {W(t): t ≥ 0}. The applicability of these probabilities in decision making with the assistance of the Bayesian statistical theory is demonstrated. The probabilities were calculated using a procedure included in the computational software MATHEMATICA, taking into consideration the fact that the random variables representing state transition times of the process {W(t): t ≥ 0} have gamma distributions. The usefulness of the Bayesian statistical theory in operational decision-making concerning ship power plants is shown using a decision dendrite which maps ME states and consequences of particular decisions, thus making it possible to choose between the following two decisions: d1 – first perform a relevant preventive service of the engine to restore its state and then perform the commissioned task within the time limit determined by the customer, and d2 – omit the preventive service and start performing the commissioned task.
船舶发电机组技术状态转换的三态半马尔可夫模型的极限分布及其在运行决策中的应用
摘要本文提出了船舶动力装置机器状态转换过程{W(t):t≥0}的三态半马尔可夫模型,并对这些状态进行了以下解释:s1–完全可用状态,s2–部分可用状态,s3–不可用状态。这些状态是为船舶主发动机(ME)精确定义的。提出了一个假设,解释了该模型应用于船舶发电厂机器真实状态转换模型的可能性。关于ME的经验数据用于计算过程{W(t):t≥0}的极限概率。在贝叶斯统计理论的帮助下,证明了这些概率在决策中的适用性。概率是使用计算软件MATHEMATICA中包含的程序计算的,考虑到表示过程{W(t):t≥0}的状态转换时间的随机变量具有伽马分布这一事实。贝叶斯统计理论在涉及船舶发电厂的操作决策中的有用性使用映射特定决策的ME状态和结果的决策枝晶来显示,从而可以在以下两个决定之间进行选择:d1–首先对发动机进行相关的预防性服务以恢复其状态,然后在客户确定的时限内执行委托任务;d2–省略预防性服务并开始执行委托任务。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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