不同值班时段海上事故异质性分析的综合多维模型

IF 4.8 2区 环境科学与生态学 Q1 OCEANOGRAPHY
Xinjian Wang , Wenjie Cao , Tianyi Li , Yinwei Feng , Özkan Uğurlu , Jin Wang
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引用次数: 0

摘要

船舶的航行安全可能受到天气条件、海况、昼夜节律和船员在一天中不同时间的身体状况等因素的影响。尽管在海上事故领域进行了大量的研究,但对不同值班期间事故风险影响因素(RIFs)异质性特征的系统调查仍然有限。为了解决这一差距,本研究开创了一个多维分析框架,该框架集成了增强型多层关联规则挖掘(EMARM)算法、加权影响非线性测量系统(WINGS)、全对抗哈塞图技术(TAHDT)和矩阵影响交叉乘法应用分类(MICMAC)。首先,提出了一种创新的EMARM算法来识别频繁项集,并增强了rif之间的多级关联规则,即状态级和因子级。其次,WINGS以数据驱动的方式建立,并用于阐明这些rif之间的因果关系,从而深入了解它们之间的相互作用。第三,利用基于博弈论的改进TAHDT方法建立rif之间的层次关系,揭示关键的相互依赖关系和因果路径。最后,基于rif的驱动力和依赖关系,应用MICMAC对rif进行分类,挖掘其在系统中的作用。结果表明,不同看守期的关键RIFs存在显著的异质性,这种差异突出了每个时期安全管理策略的独特需求。通过澄清挑战,提出的框架为改善船上桥梁资源管理提供了新的视角,并进一步有助于减少事故发生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An integrated multidimensional model for heterogeneity analysis of maritime accidents during different watchkeeping periods
The navigational safety of ships can be impacted by factors such as varying weather conditions, sea states, circadian rhythms and crew physical conditions at different times of the day. Despite numerous studies in the maritime accident field, systematic investigations on the heterogeneous characteristics of accident Risk Influential Factors (RIFs) across different watchkeeping periods remain limited. To address this gap, this study pioneers a multidimensional analysis framework which integrates an Enhanced Multilevel Association Rule Mining (EMARM) algorithm, the Weighted Influence Non-linear Gauge System (WINGS), the Total Adversarial Hasse Diagram Technology (TAHDT), and the Matrices Impacts Croises-Multiplication Appliance Classement (MICMAC). Firstly, the innovative EMARM algorithm is proposed to identify frequent itemsets and enhanced multilevel association rules between RIFs, i.e., at the state level and factor level. Secondly, the WINGS is established in a data-driven manner and employed to elucidate the causality among these RIFs, providing insight into their interactions. Thirdly, the improved TAHDT, a game theory-based method is utilized to establish hierarchical relationships between RIFs, revealing critical interdependencies and causal pathways. Finally, based on the driving forces and dependencies of RIFs, the MICMAC is applied to classify the RIFs and dig their roles within the system. The results indicate a significant heterogeneity in the critical RIFs across different watchkeeping periods, such differences highlight the unique needs of safety management strategies in each period. By clarifying the challenges, the proposed framework offers a new perspective for improving bridge resource management onboard and further contributing to reducing accident occurrences.
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来源期刊
Ocean & Coastal Management
Ocean & Coastal Management 环境科学-海洋学
CiteScore
8.50
自引率
15.20%
发文量
321
审稿时长
60 days
期刊介绍: Ocean & Coastal Management is the leading international journal dedicated to the study of all aspects of ocean and coastal management from the global to local levels. We publish rigorously peer-reviewed manuscripts from all disciplines, and inter-/trans-disciplinary and co-designed research, but all submissions must make clear the relevance to management and/or governance issues relevant to the sustainable development and conservation of oceans and coasts. Comparative studies (from sub-national to trans-national cases, and other management / policy arenas) are encouraged, as are studies that critically assess current management practices and governance approaches. Submissions involving robust analysis, development of theory, and improvement of management practice are especially welcome.
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