Condition Monitoring and Fault Diagnosis of a Marine Diesel Engine with Machine Learning Techniques

IF 0.5 Q4 TRANSPORTATION
G. Koçak, Veysel Gokcek, Yakup Genç
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引用次数: 0

Abstract

A marine engine room is a complex system in which many different subsystems are interacting with each other. At the center of this system is the main diesel engine which produces the propulsion force. Many other components such as compressed air, cooling, heating, lubricating oil, fuel, and pumping systems act as auxiliary machines to the main engine. Automation of many functions in the engine room is starting to play an important role in new generation ships to provide better control using sensors monitoring the engine and its environment. Sensors exist in the current generation ships, but engineers evaluate the sensor data for the presence of any problems. Maintenance actions are taken based on these manual analyses or regular maintenance is carried out at times determined by manufacturers, whether such actions are needed or not. With machine learning, it is possible to develop an algorithm using past evaluations made by engineers. Recent studies show that highly accurate results can be obtained using machine learning methods when there is sufficient data. In this study, we develop new learning-based algorithms and evaluate them on data obtained from a realistic ship engine room simulator. Data for a predetermined set of parameters of a high-power diesel engine were collected and analyzed for their role in a set of fault situations. These fault conditions and the associated sensor data are used to train a set of classifiers achieving fault detection up to 99% accuracy. These are promising results in preventing future damage to the engine or its supporting components by predicting failures before they occur.
基于机器学习技术的船用柴油机状态监测与故障诊断
船舶机舱是一个复杂的系统,其中许多不同的子系统相互作用。这个系统的中心是产生推进力的主柴油机。许多其他部件,如压缩空气、冷却、加热、润滑油、燃料和泵系统,都是主机的辅助设备。在新一代船舶中,机舱许多功能的自动化开始发挥重要作用,通过传感器监测发动机及其环境,提供更好的控制。传感器存在于当前的舰船上,但工程师们会评估传感器数据是否存在任何问题。根据这些人工分析采取维护措施,或者在制造商确定的时间进行定期维护,无论是否需要此类措施。通过机器学习,可以利用工程师过去的评估开发出一种算法。最近的研究表明,当有足够的数据时,使用机器学习方法可以获得高度精确的结果。在这项研究中,我们开发了新的基于学习的算法,并在真实船舶机舱模拟器的数据上对它们进行了评估。收集了大功率柴油机的一组预定参数的数据,并分析了它们在一组故障情况下的作用。这些故障条件和相关的传感器数据被用来训练一组分类器,达到高达99%的故障检测精度。这些都是很有希望的结果,通过在故障发生之前预测故障,可以防止未来对发动机或其支持部件的损坏。
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
1.50
自引率
0.00%
发文量
19
审稿时长
8 weeks
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