Data fusion and machine learning for ship fuel efficiency modeling: Part I – Voyage report data and meteorological data

IF 12.5 Q1 TRANSPORTATION
Xiaohe Li , Yuquan Du , Yanyu Chen , Son Nguyen , Wei Zhang , Alessandro Schönborn , Zhuo Sun
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引用次数: 24

Abstract

The International Maritime Organization has been promoting energy-efficient operational measures to reduce ships' bunker fuel consumption and the accompanying emissions, including speed optimization, trim optimization, weather routing, and the virtual arrival policy. The theoretical foundation of these measures is a model that can accurately forecast a ship's bunker fuel consumption rate according to its sailing speed, displacement/draft, trim, weather conditions, and sea conditions. Voyage report is an important data source for ship fuel efficiency modeling but its information quality on weather and sea conditions is limited by a snapshotting practice with eye inspection. To overcome this issue, this study develops a solution to fuse voyage report data and publicly accessible meteorological data and constructs nine datasets based on this data fusion solution. Eleven widely-adopted machine learning models were tested over these datasets for eight 8100-TEU to 14,000-TEU containerships from a global shipping company. The best datasets found reveal the benefits of fusing voyage report data and meteorological data, as well as the practically acceptable quality of voyage report data. Extremely randomized trees (ET), AdaBoost (AB), Gradient Tree Boosting (GB) and XGBoost (XG) present the best fit and generalization performances. Their R2 values over the best datasets are all above 0.96 and even reach 0.99 to 1.00 for the training set, and 0.74 to 0.90 for the test set. Their fit errors on daily bunker fuel consumption are usually between 0.5 and 4.0 ton/day. These models have good interpretability in explaining the relative importance of different determinants to a ship's fuel consumption rate.

船舶燃油效率建模的数据融合和机器学习:第一部分-航行报告数据和气象数据
国际海事组织(imo)为了减少船舶燃料油的消耗和排放,一直在推进航速优化、纵倾优化、天气路线、虚拟到达政策等节能运营措施。这些措施的理论基础是一个能够根据船舶的航速、排水量/吃水、纵倾、天气条件和海况准确预测船舶燃油消耗率的模型。航次报告是船舶燃油效率建模的重要数据来源,但航次报告在天气和海况方面的信息质量受到目测抓拍的限制。为了解决这一问题,本研究开发了航次报告数据与可公开获取的气象数据融合的解决方案,并基于该数据融合方案构建了9个数据集。在这些数据集上,对一家全球航运公司的8艘8100- 14000 teu集装箱船进行了11种广泛采用的机器学习模型测试。发现的最佳数据集显示了航次报告数据与气象数据融合的好处,以及航次报告数据的实际可接受质量。极端随机树(ET)、AdaBoost (AB)、梯度树增强(GB)和XGBoost (XG)具有最佳的拟合和泛化性能。它们在最佳数据集上的R2值都在0.96以上,训练集的R2值达到0.99 ~ 1.00,测试集的R2值达到0.74 ~ 0.90。他们对每日燃料消耗量的拟合误差通常在0.5至4.0吨/天之间。这些模型在解释不同因素对船舶燃油消耗率的相对重要性方面具有良好的可解释性。
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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