Title :
Ship efficiency forecast based on sensors data collection: Improving numerical models through data analytics
Author :
Andrea Coraddu;Luca Oneto;Francesco Baldi;Davide Anguita
Author_Institution :
DITEN, University of Genoa, Via Opera Pia 11A, I-16145, Genoa, Italy
fDate :
5/1/2015 12:00:00 AM
Abstract :
In this paper authors investigate the problem of predicting the fuel consumption of a vessel in real scenario based on data measured by the onboard automation systems. The goal is achieved by exploiting three different approaches: White, Black and Gray Box Models. White Box Models (WBM) are based on the knowledge of the physical underling processes. Black Box Models (BBMs) build upon statistical inference procedures based on the historical data collection. Author proposal is a Gray Box Model (GBM) which is able to exploit both mechanistic knowledge of the underlying physical principles and available measurements. Results on real world data shows that the BBM is able to remarkably improve a state-of-the-art WBM, while the GBM is able to encapsulate the a-priory knowledge of the WBM into the BBM so to achieve the same performance of the latter but requiring less historical data.
Keywords :
"Marine vehicles","Computational modeling","Fuels","Accuracy","Data models","Numerical models","Sea measurements"
Conference_Titel :
OCEANS 2015 - Genova
DOI :
10.1109/OCEANS-Genova.2015.7271412