Maritime fleet composition under future greenhouse gas emission restrictions and uncertain fuel prices

IF 3.9 Q2 TRANSPORTATION
Olav Loennechen , Kjetil Fagerholt , Benjamin Lagemann , Magnus Stålhane
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引用次数: 0

Abstract

This paper studies the maritime fleet composition problem with uncertain future fuel and carbon prices under the restriction of complying with future greenhouse gas (GHG) emission restrictions. We propose a two-stage stochastic programming model that can be adapted to two different variants of this problem. The first variant considers the Maritime Fleet Renewal Problem where there is an existing initial fleet to be renewed through scrapping and acquisitions, as well as retrofitting of ships in the current fleet. The second variant considers the Maritime Fleet Size and Mix Problem, where also the initial fleet must be determined. When applying the model to a fleet of Supramax bulk carriers as a case study, we find that LNG- and methanol-based power systems are favorable initial choices. Two different scenario sets, with 50% and 90% reduction restrictions by 2045, are investigated. Depending on the ambition level, retrofits towards ammonia can be cost-effective.

未来温室气体排放限制和不确定燃料价格下的海运船队组成
本文研究了在遵守未来温室气体(GHG)排放限制的条件下,未来燃料和碳价格不确定的海运船队组成问题。我们提出了一个两阶段随机编程模型,可适用于该问题的两个不同变体。第一个变体考虑的是 "海运船队更新问题",即现有的初始船队需要通过报废和收购以及改造现有船队中的船舶来更新。第二个变量考虑的是海运船队规模和组合问题,在这个问题中也必须确定初始船队。将模型应用于 Supramax 型散货船队作为案例研究时,我们发现液化天然气和甲醇动力系统是有利的初始选择。我们研究了两种不同的方案集,即到 2045 年减排 50%和 90%的限制。根据不同的目标水平,改用氨气是符合成本效益的。
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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CiteScore
5.90
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0.00%
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