Data Driven Digital Twin Applications Towards Green Ship Operations

Mahmood Taghavi, L. Perera
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引用次数: 1

Abstract

Due to the growing rate of energy consumption and its consequent emissions, the International Maritime Organization (IMO) has devised strict rules for an extensive reduction in Greenhouse Emissions (GHG), which forces the shipping industry to search for more energy-efficient solutions. Therefore, alongside with the Energy Efficiency Design Index (EEDI), improving the energy efficiency of existing ships under the Energy Efficiency Existing Ship Index (EEXI) is of considerable importance. This paper address this issue by proposing a digital twin framework supported by big data analytics for ship performance monitoring. The proposed framework is developed by the respective data sets from a selected vessel. For this purpose, a cluster analysis is implemented using the Gaussian Mixture Models (GMMs) with the Expectation Maximization (EM) algorithm. By this approach, the most frequent operating regions of the engine is detected, the shapes of these frequent operating regions are captured, and the relationships between different navigation and performance parameters of the engine are determined. That will make the basis for a digital twin application in shipping. The main objective of this research study is to develop a digital twin of a marine engine by considering the engine operational conditions that can be utilized toward green ship operations. The contribution of this paper and the outcomes can facilitate the shipping industry to meet the IMO requirements enforced by its regulations.
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数据驱动的数字孪生应用于绿色船舶运营
由于能源消耗和随之而来的排放的增长速度,国际海事组织(IMO)制定了严格的规则,以广泛减少温室气体排放(GHG),这迫使航运业寻找更节能的解决方案。因此,在现有船舶能效指数(EEXI)下,与能效设计指数(EEDI)一起提高现有船舶的能效具有相当重要的意义。本文通过提出一个由大数据分析支持的数字孪生框架来解决这一问题,用于船舶性能监测。所建议的框架是由来自选定船舶的各自数据集开发的。为此,使用高斯混合模型(gmm)和期望最大化(EM)算法实现了聚类分析。该方法检测了发动机的最频繁工作区域,捕获了这些频繁工作区域的形状,确定了发动机不同导航参数和性能参数之间的关系。这将为航运领域的数字孪生应用奠定基础。本研究的主要目标是通过考虑可用于绿色船舶操作的发动机运行条件,开发船用发动机的数字孪生。本文的贡献和结果可以促进航运业满足IMO法规所执行的要求。
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