China Ship Scientific Research Center, Wuxi, Jiangsu Province, China.
College of Ocean Science and Engineering, Shanghai Maritime University, Shanghai, China.
PLoS One. 2024 Jul 25;19(7):e0307835. doi: 10.1371/journal.pone.0307835. eCollection 2024.
Cruise ships are distinguished as special passenger ships, transporting passengers to various ports and giving importance to comfort. High comfort can attract lots of passengers and generate substantial profits. Vibration and noise are the most important indicators for assessing the comfort of cruise ships. Existing methods for analyzing vibration and noise data have shown limitations in uncovering essential information and discerning critical disparities in vibration and noise levels across different ship districts. Conversely, the rapid development in machine learning present an opportunity to leverage sophisticated algorithms for a more insightful examination of vibration and noise aboard cruise ships. This study designed a machine learning-driven approach to analyze the vibration and noise data. Drawing data from China's first large-scale cruise ship, encompassing 127 noise samples, this study sets up a classification task, where decks were assigned as labels and frequencies served as features. Essential information was extracted by investigating this problem. Several machine learning algorithms, including feature ranking, selection, and classification algorithms, were adopted in this method. One or two essential noise frequencies related to each of the decks, except the 10th deck, were obtained, which were partly validated by the traditional statistical methods. Such findings were helpful in reducing and controlling the vibration and noise in cruise ships. Furthermore, the study develops a classifier to distinguish noise samples, which utilizes random forest as the classification algorithm with eight optimal frequency features identified by LightGBM. This classifier yielded a Matthews correlation coefficient of 0.3415. This study gives a new direction for investigating vibration and noise in ships.
游轮是一种特殊的客船,主要用于将乘客运送到各个港口,同时注重舒适性。高舒适度可以吸引更多的乘客,产生可观的利润。振动和噪声是评估游轮舒适性的最重要指标。现有的振动和噪声数据分析方法在揭示关键信息和辨别不同船舶区域的振动和噪声水平的关键差异方面存在局限性。相反,机器学习的快速发展为更深入地分析游轮上的振动和噪声提供了机会。本研究设计了一种基于机器学习的方法来分析振动和噪声数据。该研究从中国第一艘大型游轮中提取了 127 个噪声样本的数据,建立了一个分类任务,其中甲板被分配为标签,频率被用作特征。通过研究这个问题,提取了关键信息。该方法采用了特征排名、选择和分类算法等几种机器学习算法。除了第 10 层甲板外,每个甲板都获得了一两个与甲板相关的关键噪声频率,这些频率在一定程度上得到了传统统计方法的验证。这些发现有助于减少和控制游轮的振动和噪声。此外,本研究开发了一个用于区分噪声样本的分类器,该分类器使用随机森林作为分类算法,并使用 LightGBM 确定了八个最佳频率特征。该分类器的马修斯相关系数为 0.3415。本研究为船舶振动和噪声的研究提供了新的方向。