Advanced data cluster analyses in digital twin development for marine engines towards ship performance quantification
Permanent link
https://hdl.handle.net/10037/33040Date
2024-02-24Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Due to the growing rate of energy consumption, it is necessary to develop frameworks for enhancing ship energy
efficiency. This paper proposes a solution for this issue by introducing a digital twin framework for quantifying
ship performance. For this purpose, extensive low-level clustering is performed using Gaussian Mixture Models
(GMM) with the Expectation Maximization algorithm on a dataset of a selected vessel to detect the vessel’s most
frequent operating regions. Then, a regression analysis is performed in each operating region, to identify their
shapes using Singular Value Decomposition (SVD). The results of SVD make the basis for model development in
digital twin applications. For this reason, a low-level clustering is performed so that a more accurate model can
be developed in future. Moreover, based on the resulting cluster analysis, an energy efficiency index is devel oped, and the energy efficiency of each cluster has been evaluated to identify the most efficient operating
condition. Hence, the main contribution of this research is to develop a digital twin framework of a marine
engine which can be utilized for green ship operations. The same contribution can facilitate the shipping industry
to meet the International Maritime Organization energy efficiency requirements.
Publisher
ElsevierCitation
Taghavi, Perera. Advanced data cluster analyses in digital twin development for marine engines towards ship performance quantification. Ocean Engineering. 2024Metadata
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Copyright 2024 The Author(s)