A combined risk-based and condition monitoring approach: developing a dynamic model for the case of marine engine lubrication

IF 2.7 4区 工程技术 Q2 TRANSPORTATION SCIENCE & TECHNOLOGY Transportation Safety and Environment Pub Date : 2022-09-01 DOI:10.1093/tse/tdac020
N. Ventikos, P. Sotiralis, Emmanouil Annetis
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引用次数: 6

Abstract

This paper focuses on the creation of a dynamic probabilistic model which simulates deterioration trends of a marine engine lubrication system. The approach is based on risk and the implementation is achieved through a dynamic Bayesian network (dBN). Risk can be useful for decision making, while dBNs are a powerful tool for risk modelling and prediction models. The model takes into account deterioration of engine components, oil degradation and the off-line condition monitoring technique of oil analysis, in the context of predictive maintenance. The paper aims to efficiently predict probability evolution for main engine lubrication failure and to decide upon the most beneficial schemes from a variety of lubrication oil analysis interval schemes by introducing monetary costs and producing the risk model. Real data and respective analysis, along with expert elicitation, are utilized for achieving model quantification, while the model is materialized through a code in the Matlab environment. Results from the probabilistic model show a realistic simulation for the system and indicate the obvious, that with more frequent oil analyses and respective maintenance or repairs, the probability of failure drops significantly. However, the results from the risk model highlight that the costs can redefine scheme suggestions, as they can correspond to low probabilities of failure but also to higher costs. A two-month interval scheme is suggested, in contrast to the most preferred practice among shipping companies of a three-month interval. The developed model is in general identified as a failure prediction tool focusing on marine engine lubrication failure.
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基于风险和状态监测相结合的方法:建立船舶发动机润滑的动态模型
本文着重建立了船舶发动机润滑系统劣化趋势的动态概率模型。该方法基于风险,并通过动态贝叶斯网络(dBN)实现。风险可用于决策制定,而dbn是风险建模和预测模型的强大工具。该模型考虑了发动机部件劣化、油液劣化以及油液分析的离线状态监测技术在预测性维修中的应用。本文旨在通过引入货币成本,建立风险模型,有效地预测主机润滑故障的概率演变,并从各种润滑油分析区间方案中选择最有利的方案。利用真实数据和各自的分析以及专家的启发来实现模型的量化,而模型则通过Matlab环境中的代码实现。概率模型的仿真结果与实际情况相吻合,结果表明,随着油液分析的频繁和相应的维护或维修,故障概率显著降低。然而,风险模型的结果表明,成本可以重新定义方案建议,因为它们可以对应于低失败概率,但也可以对应于较高的成本。建议采用两个月的间隔方案,而不是航运公司最喜欢的三个月间隔方案。所建立的模型一般被认为是一种针对船舶发动机润滑故障的故障预测工具。
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来源期刊
Transportation Safety and Environment
Transportation Safety and Environment TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
3.90
自引率
13.60%
发文量
32
审稿时长
10 weeks
期刊最新文献
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