Performance and Reliability Monitoring of Ship Hybrid Power Plants

IF 1 Q3 ENGINEERING, MARINE
Charalampos Tsoumpris, G. Theotokatos
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引用次数: 6

Abstract

Recently, the marine industry has been under a paradigm shift toward adopting increased automation, and initiatives to enable the autonomous operations of ships are ongoing. In these cases, power plants require advanced monitoring techniques not only for the performance parameters but also to assess the health state of their critical components. In this respect, this study aims to develop a monitoring functionality for power plants that captures the performance metrics while considering the overall system and its components’ reliability. A hybrid power plant of a pilot boat is considered a case study. A rule-based energy management strategy is adopted, which makes the decisions on the power distribution to the investigated power plant components. Additionally, a dynamic Bayesian network is developed to capture the temporal behavior of the system’s/components’ reliability accounting for the power plant’s operating profile. Results demonstrate that the selected hybrid power plant monitoring capabilities are enhanced by providing the power plant performance along with the estimation of the system’s health state. Furthermore, these extended monitoring capabilities can provide the essential metrics to facilitate decisionmaking, enabling the autonomous operation of the power plant.
船舶混合动力装置性能与可靠性监测
最近,海运业一直在向采用更高的自动化转变,并且正在采取措施实现船舶的自主操作。在这些情况下,发电厂需要先进的监测技术,不仅要监测性能参数,还要评估其关键部件的健康状态。在这方面,本研究旨在为发电厂开发一种监测功能,在考虑整个系统及其组件可靠性的同时捕获性能指标。引航船的混合动力装置被视为一个案例研究。采用基于规则的能源管理策略,对电厂各组成部分的电力分配进行决策。此外,还开发了一个动态贝叶斯网络来捕捉系统/组件的可靠性在发电厂运行剖面中的时间行为。结果表明,通过提供电厂性能和系统健康状态的估计,所选择的混合电厂监测能力得到增强。此外,这些扩展的监测功能可以为促进决策提供必要的指标,使发电厂能够自主运行。
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
CiteScore
1.30
自引率
11.10%
发文量
24
审稿时长
10 weeks
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