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MODELLING SHIPS MAIN AND AUXILIARY ENGINE POWERS WITH REGRESSION-BASED MACHINE LEARNING ALGORITHMS

机译:用基于回归的机器学习算法建模船舶主要和辅助发动机功率

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摘要

Based on data from seven different ship types, this paper provides mathematical relationships that allow us to estimate the main and auxiliary engine power of new ships. With these mathematical relationships we can estimate the power of the engine based on the ship's length (L), gross tonnage (GT) and age. We developed these approaches using simple linear regression, polynomial regression, K-nearest neighbours (KNN) regression and gradient boosting machine (GBM) regression algorithms. The relationships presented here have a practical application: during the pre-parametric design of new ships, our mathematical relationships can be used to estimate the power of the engines so that more environmentally friendly ships may be built. In addition, with the machine learning methodology, the prediction of the main engine (ME) and auxiliary engine (AE) powers used in the numerical calculation of ship-based emissions provides data for researchers working on emission calculations. We conclude that the GBM regression algorithm provides more accurate solutions to estimate the main and auxiliary engine power of a ship than other algorithms used in the study.
机译:本文根据来自七种不同船舶类型的数据提供了数学关系,使我们能够估算新船舶的主要和辅助发动机功率。通过这些数学关系,我们可以根据船长(L),吨位(GT)和年龄来估计发动机的力量。我们使用简单的线性回归,多项式回归,k最近邻居(knn)回归和梯度升压机(GBM)回归算法开发了这些方法。这里呈现的关系具有实际应用:在新船舶的参数上设计期间,我们的数学关系可用于估计发动机的功率,从而可以构建更环保的船舶。另外,通过机器学习方法,在船舶排放的数值计算中使用的主发动机(ME)和辅助发动机(AE)功率的预测为研究发射计算的研究人员提供了数据。我们得出结论,GBM回归算法提供了更准确的解决方案来估计船舶的主要和辅助发动机功率,而不是研究中使用的其他算法。

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