Machine learning application in modelling marine and coastal phenomena: a critical review

Ali Pourzangbar, Mahdi Jalali, Maurizio Brocchini
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引用次数: 1

Abstract

This study provides an extensive review of over 200 journal papers focusing on Machine Learning (ML) algorithms’ use for promoting a sustainable management of the marine and coastal environments. The research covers various facets of ML algorithms, including data preprocessing and handling, modeling algorithms for distinct phenomena, model evaluation, and use of dynamic and integrated models. Given that machine learning modeling relies on experience or trial-and-error, examining previous applications in marine and coastal modeling is proven to be beneficial. The performance of different ML methods used to predict wave heights was analyzed to ascertain which method was superior with various datasets. The analysis of these papers revealed that properly developed ML methods could successfully be applied to multiple aspects. Areas of application include data collection and analysis, pollutant and sediment transport, image processing and deep learning, and identification of potential regions for aquaculture and wave energy activities. Additionally, ML methods aid in structural design and optimization and in the prediction and classification of oceanographic parameters. However, despite their potential advantages, dynamic and integrated ML models remain underutilized in marine projects. This research provides insights into ML’s application and invites future investigations to exploit ML’s untapped potential in marine and coastal sustainability.
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机器学习在海洋和海岸现象建模中的应用:综述
本研究对200多篇专注于机器学习(ML)算法用于促进海洋和沿海环境可持续管理的期刊论文进行了广泛的回顾。该研究涵盖了机器学习算法的各个方面,包括数据预处理和处理,不同现象的建模算法,模型评估以及动态和集成模型的使用。鉴于机器学习建模依赖于经验或试错,研究以前在海洋和沿海建模中的应用被证明是有益的。分析了用于预测波高的不同ML方法的性能,以确定哪种方法在不同的数据集上是优越的。对这些论文的分析表明,适当开发的机器学习方法可以成功地应用于多个方面。应用领域包括数据收集和分析,污染物和沉积物运输,图像处理和深度学习,以及确定水产养殖和波浪能活动的潜在区域。此外,机器学习方法有助于结构设计和优化以及海洋参数的预测和分类。然而,尽管具有潜在的优势,动态和集成的ML模型在海洋项目中仍未得到充分利用。这项研究为机器学习的应用提供了见解,并邀请未来的调查,以利用机器学习在海洋和沿海可持续性方面未开发的潜力。
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