Physical, data-driven and hybrid approaches to model engine exhaust gas temperatures in operational conditions

Journal Article (2021)
Author(s)

A. Coraddu (University of Strathclyde)

L. Oneto (University of Genova)

Francesca Cipollini (University of Genova)

Miltos Kalikatzarakis (Damen Schelde Naval Shipbuilding, University of Strathclyde)

Gert Jan Meijn (Damen Schelde Naval Shipbuilding)

Rinze Geertsma (Netherlands Defence Academy, TU Delft - Ship Design, Production and Operations)

Research Group
Ship Design, Production and Operations
Copyright
© 2021 A. Coraddu, Luca Oneto, Francesca Cipollini, Miltos Kalikatzarakis, Gert Jan Meijn, R.D. Geertsma
DOI related publication
https://doi.org/10.1080/17445302.2021.1920095
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 A. Coraddu, Luca Oneto, Francesca Cipollini, Miltos Kalikatzarakis, Gert Jan Meijn, R.D. Geertsma
Research Group
Ship Design, Production and Operations
Issue number
6
Volume number
17
Pages (from-to)
1360-1381
Reuse Rights

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Abstract

Fast diesel engine models for real-time prediction in dynamic conditions are required to predict engine performance parameters, to identify emerging failures early on and to establish trends in performance reduction. In order to address these issues, two main alternatives exist: one is to exploit the physical knowledge of the problem, the other one is to exploit the historical data produced by the modern automation system. Unfortunately, the first approach often results in hard-to-tune and very computationally demanding models that are not suited for real-time prediction, while the second approach is often not trusted because of its questionable physical grounds. In this paper, the authors propose a novel hybrid model, which combines physical and data-driven models, to model diesel engine exhaust gas temperatures in operational conditions. Thanks to the combination of these two techniques, the authors were able to build a fast, accurate and physically grounded model that bridges the gap between the physical and data driven approaches. In order to support the proposal, the authors will show the performance of the different methods on real-world data collected from the Holland Class Oceangoing Patrol Vessel.