Predicting Ship Power Using Machine Learning Methods

Anthony Kriezis, T. Sapsis, C. Chryssostomidis
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Abstract

One of the biggest challenges facing the shipping industry in the coming decades is the reduction of carbon emissions. A promising approach to this end is the use of the growing amount of data collected by vessels to optimize a voyage so as to minimize power consumption. The focus of this paper is on building and testing machine learning models that can accurately predict the shaft power of a vessel under different conditions. The models examined include pure empirical models, pure neural network models, and combinations of the two. Using data on two car carrying vessels for 8 years it was found that neural networks incorporating some physical intuition can achieve a mean absolute percentage error of less than 5%, and an R2 above 95%. This performance can be further improved by the addition of wave information, but it deteriorates when the data collection becomes less frequent.
使用机器学习方法预测船舶功率
航运业在未来几十年面临的最大挑战之一是减少碳排放。实现这一目标的一个有希望的方法是利用船只收集的越来越多的数据来优化航行,从而最大限度地减少电力消耗。本文的重点是建立和测试机器学习模型,以准确预测船舶在不同条件下的轴功率。研究的模型包括纯经验模型、纯神经网络模型以及两者的组合。通过对两艘运输船8年的数据分析,我们发现,结合一些物理直觉的神经网络可以实现平均绝对百分比误差小于5%,R2大于95%。这种性能可以通过增加波浪信息进一步提高,但当数据收集频率降低时,性能会下降。
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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