Investment decisions under uncertainty on LNG-powered vessels for environmental compliance

Abstract The shipping industry is investigating alternative fuels for ships, in order to comply with stricter emission requirements implemented by International Maritime Organization (IMO). Liquefied Natural Gas (LNG) is a promising alternative since it could reduce emissions substantially and offer...

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Main Authors: Shun Chen, Shiyuan Zheng, Qiang Zhang
Format: Article
Language:English
Published: SpringerOpen 2018-04-01
Series:Journal of Shipping and Trade
Subjects:
Online Access:http://link.springer.com/article/10.1186/s41072-018-0031-4
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spelling doaj-64859a1ca7a54614bbe279e45b97805a2020-11-24T21:37:54ZengSpringerOpenJournal of Shipping and Trade2364-45752018-04-013111910.1186/s41072-018-0031-4Investment decisions under uncertainty on LNG-powered vessels for environmental complianceShun Chen0Shiyuan Zheng1Qiang Zhang2School of Transportation, Shanghai Maritime UniversitySchool of Transportation, Shanghai Maritime UniversitySchool of Transportation, Shanghai Maritime UniversityAbstract The shipping industry is investigating alternative fuels for ships, in order to comply with stricter emission requirements implemented by International Maritime Organization (IMO). Liquefied Natural Gas (LNG) is a promising alternative since it could reduce emissions substantially and offer potential fuel cost savings. But the investment in LNG fuelled vessels is currently facing a high degree of uncertainty, such as the differential between the prices of LNG and conventional maritime fuels, the availability of LNG and the reliability of its supply chain. This paper makes an attempt to study the possibility of investing in LNG powered vessels under uncertainty. A deferral option model is proposed to quantify the value of flexibility for deferral based on multi-variables following specified stochastic processes. By exploiting the stochastic processes, it is possible to determine the value of deferral by solving a dynamic program using a least squares Monte Carlo simulation. The model is tested on an investment of a new chemical vessel with 19,000 dwt powered by LNG. Empirical analysis may suggest different investment strategies based on the probabilities of exercising an option and related option values each year. It indicates further that the attractiveness of LNG as ship fuel is dominated by a couple of parameters: difference of ship prices between a LNG powered vessel and a reference one, the price differential between LNG and conventional fuel prices, the share of the sailing time inside Emission Control Areas (ECAs), and the supply cost of LNG.http://link.springer.com/article/10.1186/s41072-018-0031-4LNG powered vesselEnvironmental complianceDeferral option modelMonte Carlo simulation
collection DOAJ
language English
format Article
sources DOAJ
author Shun Chen
Shiyuan Zheng
Qiang Zhang
spellingShingle Shun Chen
Shiyuan Zheng
Qiang Zhang
Investment decisions under uncertainty on LNG-powered vessels for environmental compliance
Journal of Shipping and Trade
LNG powered vessel
Environmental compliance
Deferral option model
Monte Carlo simulation
author_facet Shun Chen
Shiyuan Zheng
Qiang Zhang
author_sort Shun Chen
title Investment decisions under uncertainty on LNG-powered vessels for environmental compliance
title_short Investment decisions under uncertainty on LNG-powered vessels for environmental compliance
title_full Investment decisions under uncertainty on LNG-powered vessels for environmental compliance
title_fullStr Investment decisions under uncertainty on LNG-powered vessels for environmental compliance
title_full_unstemmed Investment decisions under uncertainty on LNG-powered vessels for environmental compliance
title_sort investment decisions under uncertainty on lng-powered vessels for environmental compliance
publisher SpringerOpen
series Journal of Shipping and Trade
issn 2364-4575
publishDate 2018-04-01
description Abstract The shipping industry is investigating alternative fuels for ships, in order to comply with stricter emission requirements implemented by International Maritime Organization (IMO). Liquefied Natural Gas (LNG) is a promising alternative since it could reduce emissions substantially and offer potential fuel cost savings. But the investment in LNG fuelled vessels is currently facing a high degree of uncertainty, such as the differential between the prices of LNG and conventional maritime fuels, the availability of LNG and the reliability of its supply chain. This paper makes an attempt to study the possibility of investing in LNG powered vessels under uncertainty. A deferral option model is proposed to quantify the value of flexibility for deferral based on multi-variables following specified stochastic processes. By exploiting the stochastic processes, it is possible to determine the value of deferral by solving a dynamic program using a least squares Monte Carlo simulation. The model is tested on an investment of a new chemical vessel with 19,000 dwt powered by LNG. Empirical analysis may suggest different investment strategies based on the probabilities of exercising an option and related option values each year. It indicates further that the attractiveness of LNG as ship fuel is dominated by a couple of parameters: difference of ship prices between a LNG powered vessel and a reference one, the price differential between LNG and conventional fuel prices, the share of the sailing time inside Emission Control Areas (ECAs), and the supply cost of LNG.
topic LNG powered vessel
Environmental compliance
Deferral option model
Monte Carlo simulation
url http://link.springer.com/article/10.1186/s41072-018-0031-4
work_keys_str_mv AT shunchen investmentdecisionsunderuncertaintyonlngpoweredvesselsforenvironmentalcompliance
AT shiyuanzheng investmentdecisionsunderuncertaintyonlngpoweredvesselsforenvironmentalcompliance
AT qiangzhang investmentdecisionsunderuncertaintyonlngpoweredvesselsforenvironmentalcompliance
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