Estimation of vessel emissions inventory in Qingdao Port based on big data analysis
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Date
Authors
Sun, Xing
Tian, Zhe
Malekian, Reza
Li, Zhixiong
Journal Title
Journal ISSN
Volume Title
Publisher
MDPI Publishing
Abstract
Exhaust emissions from vessels have increasingly attracted attention in the continuously
growing marine transport world trade market. The International Maritime Organization (IMO) has
introduced a number of measures designed to reduce exhaust emissions from global shipping. As one
of the busiest ports in the world, Qingdao port has been studied to propose possible support to
the development of efficient emission reduction. In this study, a large amount data of emissions
inventory in Qingdao port was used to predict its annual exhaust emissions, and hence, to help
understand maritime pollution in Qingdao port. Bigdata analysis methodology was employed to
perform accurate predictions on vessel emissions. The analysis results show that the emissions were
dominated by container ships, oil tankers, and bulk cargo ships. The comparison between Qingdao
port and other ports in emission control areas demonstrates the necessity of control measures for
exhaust emissions. The adoption of shore power and efficient cargo handling seems to be a potential
solution to reduce exhaust emissions. The findings of this study are meaningful for maritime safety
administration to understand the current emission situation in Qingdao port, propose corresponding
control measures, and perform pollution prevention.
Description
Keywords
Bigdata analysis, Systematical analysis, Emission inventory, Maritime
Sustainable Development Goals
Citation
Sun, X., Tian, Z., Malekian, R. et al. 2018, 'Estimation of vessel emissions inventory in Qingdao Port based on big data analysis', Symmetry, vol. 10, art. 452, pp. 1-11.
