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Probabilistic modeling of ship powering performance using full-scale operational data

机译:全尺度运行数据船舶供电性能的概率建模

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摘要

The energy efficiency of ocean-going vessels can be increased through various operational considerations, such as improved cargo arrangements and weather routing. The first step toward the goal of maximizing the energy efficiency is to analyze how the ship's powering performance changes under different operational settings and weather conditions. However, existing analytical models and empirical methods have limitations in reliably estimating the powering performance of full-scale ships in real operating conditions. In this study, machine learning techniques are employed to estimate the powering performance of a full-scale ship by constructing regression models using the ship's operational data. In order to minimize the risk of overfitting in the regression process, domain knowledge based on physical principles is combined into the regression models. Also, the uncertainty of the estimated performance is evaluated with consideration of the environmental uncertainties. The obtained regression models can be used to predict the ship speed and engine power under different operational settings and weather conditions.
机译:通过各种操作考虑来增加海洋船舶的能效,例如改进的货物安排和天气路由。迈向最大化能量效率的第一步是分析船舶在不同的操作设置和天气条件下的供电性能如何变化。然而,现有的分析模型和经验方法具有限制可靠地估算实际操作条件中全尺寸船舶的供电性能。在本研究中,通过使用船舶运行数据构建回归模型来估算全尺寸船的机器学习技术来估算满量程船的供电性能。为了最大限度地减少回归过程中过度拟合的风险,基于物理原则的域知识将基于回归模型组合。此外,考虑到环境不确定性,评估了估计性能的不确定性。所获得的回归模型可用于预测不同操作设置和天气条件下的船舶速度和发动机功率。

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