可靠的船舶应急电源:优化铅酸蓄电池维修剩余容量测量频率的蒙特卡罗模拟方法

IF 0.7 Q4 TRANSPORTATION SCIENCE & TECHNOLOGY SAE International Journal of Electrified Vehicles Pub Date : 1900-01-01 DOI:10.4271/14-13-02-0009
A. Golovan, I. Gritsuk, Iryna Honcharuk
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引用次数: 0

摘要

预测性维护的发展已经成为最重要的创新驱动力之一,不仅仅是在海事行业。机载、遥感和诊断系统的激增为降低维护成本和提高操作稳定性创造了许多新的机会。通过预测即将发生的系统故障和故障,可以启动主动维护,以防止失去适航性或可操作性。本研究的动机是通过确定在剩余电池容量指示系统中实现成本效益和期望的预测性能所需的最小可用剩余铅酸电池容量测量频率来优化海事行业的预测性维护。该研究旨在平衡运行稳定性和成本效益,为预测性维护的实际考虑和潜在效益提供有价值的见解。本研究采用的方法包括概述全自动状态监测系统的理论发展,并描述数据清理步骤,以考虑环境对系统性能的影响。使用蒙特卡罗模拟来评估剩余使用寿命预测对不同测量频率,预测模型和参数设置的敏感性,从而估计系统的最佳测量频率。结果表明,在平衡成本效益和运行稳定性的同时,需要一定的最小测量频率来达到目标预测精度。通过每天两次或每5次船舶航行周期对潜在利用率进行有用的剩余铅酸电池容量测量,可以实现可靠的故障预测,其预测精度变化可以忽略不计。
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Reliable Ship Emergency Power Source: A Monte Carlo Simulation Approach to Optimize Remaining Capacity Measurement Frequency for Lead-Acid Battery Maintenance
The development of predictive maintenance has become one of the most important drivers of innovation, not only in the maritime industry. The proliferation of on-board and remote sensing and diagnostic systems is creating many new opportunities to reduce maintenance costs and increase operational stability. By predicting impending system faults and failures, proactive maintenance can be initiated to prevent loss of seaworthiness or operability. The motivation of this study is to optimize predictive maintenance in the maritime industry by determining the minimum useful remaining lead-acid battery capacity measurement frequency required to achieve cost-efficiency and desired prognostic performance in a remaining battery capacity indication system. The research seeks to balance operational stability and cost-effectiveness, providing valuable insight into the practical considerations and potential benefits of predictive maintenance. The methodology employed in this study includes outlining the theoretical development of a fully automated condition monitoring system and describing data cleansing steps to account for environmental effects on system performance. A Monte Carlo simulation is used to evaluate the sensitivity of the remaining useful life prediction to varying measurement frequencies, prediction models, and parameter settings, leading to an estimate of the optimal measurement frequency for the system. The results show that a certain minimum measurement frequency is required to achieve the target prediction accuracy while balancing cost-efficiency and operational stability. Reliable failure prediction with negligible changes in prognostic accuracy can be achieved by performing useful remaining lead-acid battery capacity measurements twice a day or every 5 ship voyage cycles with the underlying utilization.
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来源期刊
SAE International Journal of Electrified Vehicles
SAE International Journal of Electrified Vehicles Engineering-Automotive Engineering
CiteScore
1.40
自引率
0.00%
发文量
15
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