Physically plausible propeller noise prediction via recursive corrections leveraging prior knowledge and experimental data

Journal Article (2023)
Author(s)

Miltiadis Kalikatzarakis (University of Strathclyde)

Andrea Coraddu (TU Delft - Ship Design, Production and Operations)

Mehmet Atlar (University of Strathclyde)

Stefano Gaggero (University of Genova)

Giorgio Tani (University of Genova)

Luca Oneto (University of Genova)

Research Group
Ship Design, Production and Operations
Copyright
© 2023 Miltiadis Kalikatzarakis, A. Coraddu, Mehmet Atlar, Stefano Gaggero, Giorgio Tani, Luca Oneto
DOI related publication
https://doi.org/10.1016/j.engappai.2022.105660
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 Miltiadis Kalikatzarakis, A. Coraddu, Mehmet Atlar, Stefano Gaggero, Giorgio Tani, Luca Oneto
Research Group
Ship Design, Production and Operations
Volume number
118
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Abstract

For propeller-driven vessels, cavitation is the most dominant noise source producing both structure-borne and radiated noise impacting wildlife, passenger comfort, and underwater warfare. Physically plausible and accurate predictions of the underwater radiated noise at design stage, i.e., for previously untested geometries and operating conditions, are fundamental for designing silent and efficient propellers. State-of-the-art predictive models are based on physical, data-driven, and hybrid approaches. Physical models (PMs) meet the need for physically plausible predictions but are either too computationally demanding or not accurate enough at design stage. Data-driven models (DDMs) are computationally inexpensive ad accurate on average but sometimes produce physically implausible results. Hybrid models (HMs) combine PMs and DDMs trying to take advantage of their strengths while limiting their weaknesses but state-of-the-art hybridisation strategies do not actually blend them, failing to achieve the HMs full potential. In this work, for the first time, we propose a novel HM that recursively correct a state-of-the-art PM by means of a DDM which simultaneously exploits the prior physical knowledge in the definition of its feature set and the data coming from a vast experimental campaign at the Emerson Cavitation Tunnel on the Meridian standard propeller series behind different severities of the axial wake. Results in different extrapolating conditions, i.e., extrapolation with respect to propeller rotational speed, wakefield, and geometry, will support our proposal both in terms of accuracy and physical plausibility.