Methodology of Acquiring Valid Data by Combining Oil Tankers’ Noon Report and Automatic Identification System Satellite Data

Fuel consumption of marine vessels plays an important role in both generating air pollution and ship operational expenses where the global environmental concerns toward air pollution and economics of shipping operation are being increased. In order to optimize ship fuel consumption, the fuel consump...

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Main Authors: Ali Akbar Safaei, Hassan Ghassemi, Mahmoud Ghiasi
Format: Article
Language:English
Published: University of Zagreb, Faculty of Transport and Traffic Sciences 2019-06-01
Series:Promet (Zagreb)
Subjects:
Online Access:https://traffic.fpz.hr/index.php/PROMTT/article/view/2938
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spelling doaj-8f0f91d7f3d444be825572806e6063f22020-11-25T01:14:57ZengUniversity of Zagreb, Faculty of Transport and Traffic SciencesPromet (Zagreb)0353-53201848-40692019-06-0131329930910.7307/ptt.v31i3.29382938Methodology of Acquiring Valid Data by Combining Oil Tankers’ Noon Report and Automatic Identification System Satellite DataAli Akbar Safaei0Hassan Ghassemi1Mahmoud Ghiasi2Amirkabir university of technologyAmirkabir university of technologyAmirkabir university of technologyFuel consumption of marine vessels plays an important role in both generating air pollution and ship operational expenses where the global environmental concerns toward air pollution and economics of shipping operation are being increased. In order to optimize ship fuel consumption, the fuel consumption prediction for her envisaged voyage is to be known. To predict fuel consumption of a ship, noon report (NR) data are available source to be analysed by different techniques. Because of the possible human error attributed to the method of NR data collection, it involves risk of possible inaccuracy. Therefore, in this study, to acquire pure valid data, the NR raw data of two very large crude carriers (VLCCs) composed with their respective Automatic Identification System (AIS) satellite data. Then, well-known models i.e. K-Mean, Self-Organizing Map (SOM), Outlier Score Base (OSB) and Histogram of Outlier Score Base (HSOB) methods are applied to the collected tankers NR during a year. The new enriched data derived are compared to the raw NR to distinguish the most fitted methodology of accruing pure valid data. Expected value and root mean square methods are applied to evaluate the accuracy of the methodologies. It is concluded that measured expected value and root mean square for HOSB are indicating high coherence with the harmony of the primary NR data.https://traffic.fpz.hr/index.php/PROMTT/article/view/2938marine transportvoyagenoon reportAutomatic Identification Systemfuel consumption
collection DOAJ
language English
format Article
sources DOAJ
author Ali Akbar Safaei
Hassan Ghassemi
Mahmoud Ghiasi
spellingShingle Ali Akbar Safaei
Hassan Ghassemi
Mahmoud Ghiasi
Methodology of Acquiring Valid Data by Combining Oil Tankers’ Noon Report and Automatic Identification System Satellite Data
Promet (Zagreb)
marine transport
voyage
noon report
Automatic Identification System
fuel consumption
author_facet Ali Akbar Safaei
Hassan Ghassemi
Mahmoud Ghiasi
author_sort Ali Akbar Safaei
title Methodology of Acquiring Valid Data by Combining Oil Tankers’ Noon Report and Automatic Identification System Satellite Data
title_short Methodology of Acquiring Valid Data by Combining Oil Tankers’ Noon Report and Automatic Identification System Satellite Data
title_full Methodology of Acquiring Valid Data by Combining Oil Tankers’ Noon Report and Automatic Identification System Satellite Data
title_fullStr Methodology of Acquiring Valid Data by Combining Oil Tankers’ Noon Report and Automatic Identification System Satellite Data
title_full_unstemmed Methodology of Acquiring Valid Data by Combining Oil Tankers’ Noon Report and Automatic Identification System Satellite Data
title_sort methodology of acquiring valid data by combining oil tankers’ noon report and automatic identification system satellite data
publisher University of Zagreb, Faculty of Transport and Traffic Sciences
series Promet (Zagreb)
issn 0353-5320
1848-4069
publishDate 2019-06-01
description Fuel consumption of marine vessels plays an important role in both generating air pollution and ship operational expenses where the global environmental concerns toward air pollution and economics of shipping operation are being increased. In order to optimize ship fuel consumption, the fuel consumption prediction for her envisaged voyage is to be known. To predict fuel consumption of a ship, noon report (NR) data are available source to be analysed by different techniques. Because of the possible human error attributed to the method of NR data collection, it involves risk of possible inaccuracy. Therefore, in this study, to acquire pure valid data, the NR raw data of two very large crude carriers (VLCCs) composed with their respective Automatic Identification System (AIS) satellite data. Then, well-known models i.e. K-Mean, Self-Organizing Map (SOM), Outlier Score Base (OSB) and Histogram of Outlier Score Base (HSOB) methods are applied to the collected tankers NR during a year. The new enriched data derived are compared to the raw NR to distinguish the most fitted methodology of accruing pure valid data. Expected value and root mean square methods are applied to evaluate the accuracy of the methodologies. It is concluded that measured expected value and root mean square for HOSB are indicating high coherence with the harmony of the primary NR data.
topic marine transport
voyage
noon report
Automatic Identification System
fuel consumption
url https://traffic.fpz.hr/index.php/PROMTT/article/view/2938
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AT mahmoudghiasi methodologyofacquiringvaliddatabycombiningoiltankersnoonreportandautomaticidentificationsystemsatellitedata
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