Physics-based learning models for ship hydrodynamics

Conference Paper (2015)
Author(s)

Gabriel D. Weymouth (Massachusetts Institute of Technology)

Dick K.P. Yue (Massachusetts Institute of Technology)

Affiliation
External organisation
More Info
expand_more
Publication Year
2015
Language
English
Affiliation
External organisation
Volume number
121
Pages (from-to)
772-783
ISBN (electronic)
9780939773954

Abstract

We present the concepts of physics-based learning models (PBLM) and their relevance and application to the field of ship hydrodynamics. The utility of physics-based learning is motivated by contrasting generic learning models for regression predictions, which do not presume any knowledge of the system other than the training data provided with methods such as semi-empirical models, which incorporate physical insights along with data-fitting. PBLM provides a framework wherein intermediate models, which capture (some) physical aspects of the problem, are incorporated into modem generic learning tools to substantially improve the predictions of the latter, minimizing the reliance on costly experimental measurements or high-resolution highfidelity numerical solutions. To illustrate the versatility and efficacy of PBLM, we present three wave-ship interaction problems: 1) at speed waterline profiles; 2) ship motions in head seas; and 3) three-dimensional breaking bow waves. PBLM is shown to be robust and produce error rates at or below the uncertainty in the generated data at a small fraction of the expense of high-resolution numerical predictions.

No files available

Metadata only record. There are no files for this record.