基于堆叠算法快速预测受损船舶在波束中的翻滚运动响应

IF 2.5 3区 工程技术
Xin-ran Liu, Ting-qiu Li, Zi-ping Wang
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引用次数: 0

摘要

在计算流体动力学(CFD)和人工智能框架内,对受损船舶与液体在波浪中荡漾的高度非线性耦合进行精确建模仍是一个颇受关注的问题。本文介绍了一种数据驱动的堆叠算法,通过基于动态重叠网格 CFD 技术构建受损船舶的流体动力学模型,快速预测横梁波中的滚动运动响应振幅。总体思路是利用四种经典基础模型(如多层感知、支持向量回归、随机森林和直方梯度提升回归)优化各种参数。通过选择带有双损坏隔间的标准 DTMB 5415 模型进行验证,该模型在准确性和效率方面都具有吸引力。研究清楚地表明,预测的规则梁波响应振幅算子(RAO)与可用的实验数据非常吻合,这验证了已建立的受损船舶流体力学模型的准确性。因此,在高质量的 CFD 样本条件下,通过对四种典型基础模型及其不同形式的比较,采用所设计的 Stacking 算法及其优化组合可以有效、准确地预测受损船舶的滚动运动振幅(例如,确定系数为 0.9926,平均绝对误差为 0.0955,CPU 为 3s)。重要的是,已建立的堆叠算法提供了一种潜力,可以突破大规模冗长 CFD 模拟耗时长、效率低的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rapid prediction of damaged ship roll motion responses in beam waves based on stacking algorithm

Accurate modeling for highly non-linear coupling of a damaged ship with liquid sloshing in waves is still of considerable interest within the computational fluid dynamics (CFD) and AI framework. This paper describes a data-driven Stacking algorithm for fast prediction of roll motion response amplitudes in beam waves by constructing a hydrodynamics model of a damaged ship based on the dynamic overlapping grid CFD technology. The general idea is to optimize various parameters varying with four types of classical base models like multi-layer perception, support vector regression, random forest, and hist gradient boosting regression. This offers several attractive properties in terms of accuracy and efficiency by choosing the standard DTMB 5415 model with double damaged compartments for validation. It is clearly demonstrated that the predicted response amplitude operator (RAO) in the regular beam waves agrees well with the experimental data available, which verifies the accuracy of the established damaged ship hydrodynamics model. Given high-quality CFD samples, therefore, implementation of the designed Stacking algorithm with its optimal combination can predict the damaged ship roll motion amplitudes effectively and accurately (e.g., the coefficient of determination 0.9926, the average absolute error 0.0955 and CPU 3s), by comparison of four types of typical base models and their various forms. Importantly, the established Stacking algorithm provides one potential that can break through problems involving the time-consuming and low efficiency for large-scale lengthy CFD simulations.

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来源期刊
自引率
12.00%
发文量
2374
审稿时长
4.6 months
期刊介绍: Journal of Hydrodynamics is devoted to the publication of original theoretical, computational and experimental contributions to the all aspects of hydrodynamics. It covers advances in the naval architecture and ocean engineering, marine and ocean engineering, environmental engineering, water conservancy and hydropower engineering, energy exploration, chemical engineering, biological and biomedical engineering etc.
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