A high-fidelity approach to modeling weather-dependent fuel consumption on ship routes with speed optimization

IF 3.9 Q2 TRANSPORTATION Maritime Transport Research Pub Date : 2023-07-18 DOI:10.1016/j.martra.2023.100096
Andreas Breivik Ormevik , Kjetil Fagerholt , Frank Meisel , Endre Sandvik
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Abstract

In this paper, we present the scheduling problem on a given route where speed optimization under various weather conditions is to be performed. Different approaches for calculating fuel consumption for vessels are introduced with a discussion of how this might influence the speed optimization strategies on predetermined multi-stop routes in a short sea shipping service within offshore logistics. Due to both spatial and temporal changes in weather conditions, fuel consumption as a function of speed becomes time-dependent as a vessel performs its route in varying weather. In our novel approach, the weather impact on fuel consumption for the considered vessels is modeled with a higher level of detail than in previously conducted studies, including both wave direction and wave period as input together with the wave height. We test our approach for optimizing schedules on a large set of routes of different lengths and number of stops, as well as for a set of different weather samples based on historical observations. When comparing the new approach to current industry practice, the computational study reveals on average a 4.5% reduction in fuel consumption across the different routes and weather scenarios. The magnitude of the reduction potential increases for worsening weather conditions. Furthermore, it is demonstrated how the approach commonly used for modeling weather impacts in the literature tends to greatly miscalculate the true cost of performing a voyage in realistic weather conditions. Finally, we discuss how the model fidelity is likely to affect the outcome of the routing decisions at a higher planning level, representing a potential for even further reductions of fuel consumption in various weather conditions.

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基于航速优化的航路油耗高保真度建模方法
在本文中,我们提出了给定路线上的调度问题,其中在各种天气条件下进行速度优化。介绍了计算船舶燃料消耗的不同方法,并讨论了这可能如何影响近海物流中短海上运输服务中预定多站路线的速度优化策略。由于天气条件在空间和时间上的变化,当船只在不同的天气条件下执行航线时,燃料消耗作为速度的函数变得依赖于时间。在我们的新方法中,天气对所考虑的船舶燃料消耗的影响比以前进行的研究更详细,包括波浪方向和波浪周期以及波浪高度的输入。我们在一组不同长度和站点数量的路线上测试了我们的方法来优化时间表,以及基于历史观察的一组不同天气样本。当将新方法与当前的行业实践进行比较时,计算研究显示,在不同路线和天气情况下,平均可减少4.5%的燃油消耗。随着天气条件的恶化,减少潜力的幅度会增加。此外,还证明了文献中通常用于模拟天气影响的方法往往会大大错误地计算在现实天气条件下执行航行的真实成本。最后,我们讨论了模型保真度如何在更高的规划水平上影响路由决策的结果,代表了在各种天气条件下进一步减少燃料消耗的潜力。
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