Determining residuary resistance per unit weight of displacement with Symbolic Regression and Gradient Boosted Tree algorithms

IF 0.5 Q4 TRANSPORTATION
Sandi Baressi Baressi Šegota, I. Lorencin, Mario Šercer, Z. Car
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引用次数: 0

Abstract

Determining the residuary resistance per unit weight of displacement is one of the key factors in the design of vessels. In this paper, the authors utilize two novel methods – Symbolic Regression (SR) and Gradient Boosted Trees (GBT) to achieve a model which can be used to calculate the value of residuary resistance per unit weight, of displacement from the longitudinal position of the center of buoyancy, prismatic coefficient, length-displacement ratio, beam-draught ratio, length-beam ratio, and Froude number. This data is given as results of 308 experiments provided as a part of a publicly available dataset. The results are evaluated using the coefficient of determination (R2) and Mean Absolute Percentage Error (MAPE). Pre-processing, in the shape of correlation analysis combined with variable elimination and variable scaling, is applied to the dataset. The results show that while both methods achieve regression results, the result of regression of SR is relatively poor in comparison to GBT. Both methods provide slightly poorer, but comparable results to previous research focussing on the use of “black-box” methods, such as neural networks. The elimination of variables does not show a high influence on the modeling performance in the presented case, while variable scaling does achieve better results compared to the models trained with the non-scaled dataset.
用符号回归和梯度提升树算法确定单位位移剩余阻力
确定单位排水量的剩余阻力是船舶设计中的关键因素之一。在本文中,作者利用符号回归(SR)和梯度增强树(GBT)两种新方法来实现一个模型,该模型可用于计算单位重量的剩余阻力值、浮力中心纵向位置的位移值、棱柱系数、长位移比、梁吃水比、长梁比和弗劳德数。该数据是作为公开可用数据集的一部分提供的308个实验的结果给出的。使用确定系数(R2)和平均绝对百分比误差(MAPE)来评估结果。预处理以相关分析的形式结合变量消除和变量缩放应用于数据集。结果表明,虽然两种方法都达到了回归结果,但与GBT相比,SR的回归结果相对较差。这两种方法都提供了稍差的结果,但与之前专注于使用“黑盒”方法(如神经网络)的研究结果相当。在所提出的情况下,变量的消除对建模性能的影响不大,而与使用非缩放数据集训练的模型相比,变量缩放确实获得了更好的结果。
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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来源期刊
CiteScore
1.50
自引率
0.00%
发文量
19
审稿时长
8 weeks
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