A functional data analysis approach for the monitoring of ship CO2 emissions

Q3 Engineering
Christian Capezza, Fabio Centofanti, A. Lepore, B. Palumbo
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引用次数: 1

Abstract

Abstract Sensing networks provide nowadays massive amounts of data that in many applications provide information about curves, surfaces and vary over a continuum, usually time, and thus, can be suitably modelled as functional data. Their proper modelling by means of functional data analysis approaches naturally addresses new challenges also arising in the statistical process monitoring (SPM). Motivated by an industrial application, the objective of the present paper is to provide the reader with a very transparent set of steps for the SPM of functional data in real-world case studies: i) identifying a finite dimensional model for the functional data, based on functional principal component analysis; ii) estimating the unknown parameters; iii) designing control charts on the estimated parameters, in a nonparametric framework. The proposed SPM procedure is applied to a real-case study from the maritime field in monitoring CO2 emissions from real navigation data of a roll-on/roll-off passenger cruise ship, i.e., a ship designed to carry both passengers and wheeled vehicles that are driven on and off the ship on their own wheels. We show different scenarios highlighting clear and interpretable indications that can be extracted from the data set and support the detection of anomalous voyages.
船舶二氧化碳排放监测的功能数据分析方法
传感网络如今提供了大量的数据,在许多应用中,这些数据提供了关于曲线、曲面和连续体(通常是时间)变化的信息,因此,可以适当地建模为功能数据。它们通过功能数据分析方法的适当建模自然解决了统计过程监测(SPM)中出现的新挑战。受工业应用的启发,本文的目标是为读者提供一套非常透明的步骤,用于在现实世界的案例研究中对功能数据进行SPM: i)基于功能主成分分析,确定功能数据的有限维模型;Ii)未知参数的估计;Iii)在非参数框架下设计基于估计参数的控制图。提出的SPM程序应用于海事领域的一个实际案例研究,以监测滚装/滚装客运游轮的实际导航数据产生的二氧化碳排放,即设计用于运载乘客和轮式车辆的船舶,这些车辆由自己的车轮驱动上下船。我们展示了不同的场景,突出了可以从数据集中提取的清晰和可解释的指示,并支持异常航行的检测。
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
Gestao e Producao
Gestao e Producao Engineering-Industrial and Manufacturing Engineering
CiteScore
1.60
自引率
0.00%
发文量
23
审稿时长
44 weeks
期刊介绍: Gestão & Produção is a journal published four times a year year (March, June, September and December) by the Departamento de Engenharia de Produção (DEP) of Universidade Federal de São Carlos (UFSCar). The first issue of Gestão & Produção was published in April, 1994. Actually, G&P was result of experience of professors of DEP/UFSCar in editing, in the beginning, "Cadernos DEP" in the 1980s, followed by "Cadernos de Engenharia de Produção". The last three issues of "Cadernos de Engenharia de Produção" were a test previous to the launch of Gestão & Produção because most of the journal characteristics were already established, like regularity.
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