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Applying Multi-Class Support Vector Machines for performance assessment of shipping operations: The case of tanker vessels

机译:应用多级支持向量机进行运输业绩评估:油船的情况

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摘要

Energy efficient operations are a key competitive advantage for modern shipping companies. During the operation of the vessel, improvements in energy use can be achieved by not only by technical upgrades, but also through behavioural changes in the way the crew on board is operating the vessels. Identifying the potential of behavioural savings can be challenging, due to the inherent difficulty in analysing the data and operationalizing energy efficiency within the dynamic operating environment of the vessels. This article proposes a supervised learning model for identifying the presence of energy efficient operations. Positive and negative patterns of energy efficient operations were identified and verified through discussions with senior officers and technical superintendents. Based on this data, the high dimensional parameter space that describes vessel operations was first reduced by means of feature selection algorithms. Afterwards, a model based on Multi- Class Support Vector Machines (SVM) was constructed and the efficacy of the approach is shown through the application of a test set. The results demonstrate the importance and benefits of machine learning algorithms in driving energy efficiency on board, as well as the impact of power management on energy costs throughout the life cycle of the ships.
机译:节能运营是现代航运公司的主要竞争优势。在船舶运行期间,不仅可以通过技术升级,而且还可以通过船员操作船舶方式的行为变化来实现能源使用的改善。由于在船舶动态运行环境中分析数据和实现能源效率的内在困难,确定行为节省的潜力可能具有挑战性。本文提出了一种监督学习模型,用于识别节能运行的存在。通过与高级官员和技术总监的讨论,确定并验证了节能运营的积极和消极模式。基于此数据,首先通过特征选择算法减少了描述船只操作的高维参数空间。然后,基于多类支持向量机(SVM)构造了一个模型,并通过测试集的应用显示了该方法的有效性。结果证明了机器学习算法在提高船上能效方面的重要性和益处,以及电源管理对整个船舶生命周期内能源成本的影响。

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