机器学习算法在抛石防波堤损伤程度预测中的应用

IF 1.3 4区 工程技术 Q3 ENGINEERING, MECHANICAL Journal of Offshore Mechanics and Arctic Engineering-Transactions of the Asme Pub Date : 2023-05-04 DOI:10.1115/1.4062475
Susmita Saha, S. De, Satyasaran Changdar
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引用次数: 0

摘要

防波堤的稳定性分析对于这些海岸防护结构的安全和经济设计非常重要,而破坏程度是这种情况下最重要的参数之一。最近,机器学习技术在改变许多行业和流程方面显示出巨大的潜力,使其更加高效和准确。在本研究中,五种先进的机器学习算法;采用支持向量回归、随机森林、adaboost、梯度增强和深度人工神经网络等方法对抛石防波堤的破坏程度进行了估计和分析。为此,使用了一个大型实验数据集,考虑了几乎所有稳定性变量及其整个范围。此外,还进行了详细的特征分析,以深入了解这些变量之间的关系。研究发现,本研究克服了与该领域相关的现有研究的所有局限性,并提供了最高水平的准确性。
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An Application of Machine Learning Algorithms on the Prediction of the Damage Level of Rubble-Mound Breakwaters
The stability analysis of breakwaters is very important to have a safe and economic design of these coastal protective structures and the damage level is one of the most important parameter in this context. In the recent past, machine learning techniques showed immense potential in transforming many industries and processes, for making them more efficient and accurate. In this study, five advanced machine learning algorithms; support vector regression, random forest, adaboost, gradient boosting and deep artificial neural network were employed and analysed on estimation of the damage level of rubble-mound breakwaters. A large experimental dataset, considering almost every stability variables with their whole ranges, was used in this purpose. Also, a detailed feature analysis is presented to have an insight into the relations between these variables. It was found that the present study had overcome all of the limitations of existing studies related to this field and delivered the highest level of accuracy.
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来源期刊
CiteScore
4.20
自引率
6.20%
发文量
63
审稿时长
6-12 weeks
期刊介绍: The Journal of Offshore Mechanics and Arctic Engineering is an international resource for original peer-reviewed research that advances the state of knowledge on all aspects of analysis, design, and technology development in ocean, offshore, arctic, and related fields. Its main goals are to provide a forum for timely and in-depth exchanges of scientific and technical information among researchers and engineers. It emphasizes fundamental research and development studies as well as review articles that offer either retrospective perspectives on well-established topics or exposures to innovative or novel developments. Case histories are not encouraged. The journal also documents significant developments in related fields and major accomplishments of renowned scientists by programming themed issues to record such events. Scope: Offshore Mechanics, Drilling Technology, Fixed and Floating Production Systems; Ocean Engineering, Hydrodynamics, and Ship Motions; Ocean Climate Statistics, Storms, Extremes, and Hurricanes; Structural Mechanics; Safety, Reliability, Risk Assessment, and Uncertainty Quantification; Riser Mechanics, Cable and Mooring Dynamics, Pipeline and Subsea Technology; Materials Engineering, Fatigue, Fracture, Welding Technology, Non-destructive Testing, Inspection Technologies, Corrosion Protection and Control; Fluid-structure Interaction, Computational Fluid Dynamics, Flow and Vortex-Induced Vibrations; Marine and Offshore Geotechnics, Soil Mechanics, Soil-pipeline Interaction; Ocean Renewable Energy; Ocean Space Utilization and Aquaculture Engineering; Petroleum Technology; Polar and Arctic Science and Technology, Ice Mechanics, Arctic Drilling and Exploration, Arctic Structures, Ice-structure and Ship Interaction, Permafrost Engineering, Arctic and Thermal Design.
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