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http://dx.doi.org/10.12652/Ksce.2010.30.4D.323

Analyzing Time in Port and Greenhouse Gas Emissions of Vessels using Duration Model  

Shin, Kangwon (경성대학교 도시공학과)
Cheong, Jang-Pyo (경성대학교 환경공학과)
Publication Information
KSCE Journal of Civil and Environmental Engineering Research / v.30, no.4D, 2010 , pp. 323-330 More about this Journal
Abstract
The time in port for vessels is one of the important factors for analyzing the operation status and the capacity of ports. In addition, the time in port for vessels can be directly used for estimating the greenhouse gas emissions resulted from vessels in port. However, it is unclear which variables can affect the time in port for vessels and what the marginal effect of each variable is. With these challenges in mind, the study analyzes the time in port for vessels arriving and departing port of Busan by using a parametric survival model. The results show that the log-logistic accelerated failure time model is appropriate to explain the time in port for 19,167 vessels arriving and departing port of Busan in 2008, in which the time in port is significantly affected by gross tonnage of vessels, service capacity of terminal, and vessel type. This study also shows that the greenhouse gas emission resulted from full-container vessels, which accounted for about 61% of all vessels with loading/unloading purpose arriving and departing port of Busan in 2008, is about "17 ton/vessel" in the boundary of port of Busan. However, the hotelling greenhouse gas emissions resulted from non-container vessels (3,774 vessels; 20%) are greater than those from the full-container vessels. Hence, it is necessary to take into account more efficient port management polices and technologies to reduce the service time of non-container vessels in port of Busan.
Keywords
time in port; survival analysis; greenhouse gas; port logistics;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
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