使用无监督机器学习和强度指示器的拖船操作自标记

IF 3.9 Q2 TRANSPORTATION Maritime Transport Research Pub Date : 2023-06-01 DOI:10.1016/j.martra.2023.100082
Januwar Hadi , Dimitrios Konovessis , Zhi Yung Tay
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引用次数: 1

摘要

实际的操作数据,如油耗和速度的时间序列,通常是未标记的,或者与拖拽或巡航等特定活动无关。作业类型对进一步分析至关重要,因为拖曳和巡航作业需要不同的燃料和导航配置。本文旨在通过使用无监督机器学习和拟议的强度指标,开发拖船操作的自标签框架。该框架考虑两组数据:位置数据和燃油消耗率数据。燃油消耗数据是从安装在拖船上的质量流量计获得的,而位置数据是从海上数据聚合器购买的导航数据。开发的自标签使船舶操作员能够识别需要大量燃料消耗的作业和位置,并可用于进一步的大数据分析和机器学习,以便在已知船舶速度时进行燃料消耗预测。
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Self-labelling of tugboat operation using unsupervised machine learning and intensity indicator

The actual operational data, such as a time sequence of fuel consumption and speed, is usually unlabeled or not associated with a specific activity like tugging or cruising. The operation type is critical for further analysis, as tugging and cruising operations require different fuel and navigation profiles. This paper aims to develop a self-labelling framework for tugboat operation by using unsupervised machine learning and a proposed intensity indicator. The framework considers two sets of data: the positional data and the fuel consumption rate data. The fuel consumption data is obtained from mass flowmeters installed on tugboats, while the positional data are navigational data purchased from marine data aggregators. The developed self-labelling enables ship operators in identifying operations and locations that require heavy fuel consumption andcan be used for further big data analytics and machine learning for fuel consumption prediction when vessel speeds are known.

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