海洋系统传感器数据缺失值的变分自动编码器分析

IF 1.3 4区 工程技术 Q3 ENGINEERING, CIVIL
C. Velasco-Gallego, I. Lazakis
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引用次数: 2

摘要

在船舶事故的所有原因中,14%与船舶设备损坏有关。因此,海事行业目前正在考虑最先进的维护和检查流程,基于状态的维护就是一个例子。这是一种取决于资产状况监测(CM)的策略。CM已被证明可以提高船舶的效率、可靠性、盈利能力和性能。为了实现这一维护策略,需要通过船联网(IoS)的应用,在最关键的船舶部件上以及这些资产运行的环境周围安装传感器。IoS已被证明可以有效地实时收集数据,并进行诊断和预后,以评估机器的当前和未来健康状况,从而帮助即时决策。IoS的使用带来了一些挑战,缺失价值的插补就是一个例子。数据插补是一个令人信服的预处理步骤,其目的是估计已识别的缺失值,以避免数据利用不足。由于在处理工业物联网(IIoT)传感器数据时的重要性,这一数据准备步骤在过去几年中越来越受欢迎。尽管一些文章提出了基于机器学习方法从海洋机械传感器数据中估算缺失值的新方法,但深度学习模型尚未得到考虑。为此,本文分析了用于输入海洋系统传感器数据缺失值的变分自动编码器。为了评估变分自动编码器作为插补方法的性能,对广泛应用的插补技术进行了比较研究。考虑均值插补、正向填充和反向填充以及k最近邻。为此,对安装在油轮柴油发电机上的传感器获得的船用机械系统参数进行了案例研究。结果证明了变分自动编码器在处理船舶机械系统传感器数据缺失值时的适用性,在输入柴油发电机功率参数缺失值时,确定系数达到0.99。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Variational Autoencoders for Imputing Missing Values from Sensor Data of Marine Systems
Of all the causes of accidents to ships, 14% pertains to damage due to ship equipment. Accordingly, the maritime industry is currently considering state-of-the-art maintenance and inspection processes, an example of which is condition-based maintenance (CBM). This is a strategy that hinges on the condition monitoring (CM) of assets. CM has proven to increase efficiency, reliability, profitability, and performance of vessel. To enable this maintenance strategy, sensors need to be installed along the most critical ship components and around the environment where these assets are operating through the application of Internet of Ships (IoS). IoS has demonstrated to be effective for collecting data in real time as well as performing diagnosis and prognosis to assess the current and future health of machinery to assist instant decision-making. The employment of IoS presents several challenges, an example of which is the imputation of missing values. Data imputation is a compelling preprocessing step, the aim of this is to estimate identified missing values to avoid underutilization of data. This data preparation step has gained popularity over the last few years due to its importance when dealing with Industrial Internet of Things (IIoT) sensor data. Although some articles presented new methodologies to impute missing values from sensor data of marine machinery based on machine learning methodologies, deep learning models have not yet been considered. For this reason, variational autoencoders for imputing missing values from sensor data of marine systems are analyzed in this article. To assess the performance of variational autoencoders as imputation methods, a comparative study is performed with widely implemented imputation techniques. Mean imputation, Forward Fill and Backward Fill, and k-Nearest Neighbors are considered. To that end, a case study on marine machinery system parameters obtained from sensors installed on a diesel generator of a tanker ship is performed. Results demonstrate the applicability of variational autoencoders when dealing with missing values of marine machinery systems sensor data, achieving a coefficient of determination of 0.99 when imputing missing values of the diesel generator power parameter.
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来源期刊
Journal of Ship Research
Journal of Ship Research 工程技术-工程:海洋
CiteScore
2.80
自引率
0.00%
发文量
12
审稿时长
6 months
期刊介绍: Original and Timely technical papers addressing problems of shipyard techniques and production of merchant and naval ships appear in this quarterly publication. Since its inception, the Journal of Ship Production and Design (formerly the Journal of Ship Production) has been a forum for peer-reviewed, professionally edited papers from academic and industry sources. As such, it has influenced the worldwide development of ship production engineering as a fully qualified professional discipline. The expanded scope seeks papers in additional areas, specifically ship design, including design for production, plus other marine technology topics, such as ship operations, shipping economic, and safety. Each issue contains a well-rounded selection of technical papers relevant to marine professionals.
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