Development of naoe-FOAM-SJTU solver based on OpenFOAM for marine hydrodynamics

2019 ◽  
Vol 31 (1) ◽  
pp. 1-20 ◽  
Author(s):  
Jian-hua Wang ◽  
Wei-wen Zhao ◽  
De-cheng Wan
Keyword(s):  
1995 ◽  
Vol 32 (03) ◽  
pp. 209-215
Author(s):  
Beth Lurie ◽  
Todd Taylor

This study investigated the performance characteristics of ten different commercially available propellers typically seen on auxiliary sailboats. Included in the testing were two feathering propellers, three folding propellers, one self-pitching propeller, and four fixed-bladed propellers. All propellers were of the same pitch and diameter. Testing at the MIT Marine Hydrodynamics Laboratory consisted of three common boating situations: forward boatspeed, forward rotation (normal forward operation); forward boatspeed, reverse rotation (backing down); and forward boatspeed, no rotation (drag under sail). It was found that all ten propellers performed generally well in forward operation, but that large differences in performance existed in reverse and in drag. The text of this report is written with the lay audience in mind.


2012 ◽  
Author(s):  
Piotr J. Bandyk ◽  
Justin Freimuth ◽  
George Hazen

Object-oriented programming offers a natural approach to solving complex problems by focusing on individual aspects, or objects, and describing the ways in which they interact using interfaces. Modularity, extensibility, and code re-use often make OOP more appealing than its procedural counterpart. Code can be implemented in a more intuitive way and often mirrors the theory it derives from. Two examples are given in the form of real programs: a 3D panel code solver and a system-of-systems model for seabasing and environment sensing. Both are examples of large-scale frameworks and leverage the benefits offered by the object-oriented paradigm.


Author(s):  
Stefan Lemvig Glimberg ◽  
Allan Peter Engsig-Karup ◽  
Luke N Olson

The focus of this article is on the parallel scalability of a distributed multigrid framework, known as the DTU Compute GPUlab Library, for execution on graphics processing unit (GPU)-accelerated supercomputers. We demonstrate near-ideal weak scalability for a high-order fully nonlinear potential flow (FNPF) time domain model on the Oak Ridge Titan supercomputer, which is equipped with a large number of many-core CPU-GPU nodes. The high-order finite difference scheme for the solver is implemented to expose data locality and scalability, and the linear Laplace solver is based on an iterative multilevel preconditioned defect correction method designed for high-throughput processing and massive parallelism. In this work, the FNPF discretization is based on a multi-block discretization that allows for large-scale simulations. In this setup, each grid block is based on a logically structured mesh with support for curvilinear representation of horizontal block boundaries to allow for an accurate representation of geometric features such as surface-piercing bottom-mounted structures—for example, mono-pile foundations as demonstrated. Unprecedented performance and scalability results are presented for a system of equations that is historically known as being too expensive to solve in practical applications. A novel feature of the potential flow model is demonstrated, being that a modest number of multigrid restrictions is sufficient for fast convergence, improving overall parallel scalability as the coarse grid problem diminishes. In the numerical benchmarks presented, we demonstrate using 8192 modern Nvidia GPUs enabling large-scale and high-resolution nonlinear marine hydrodynamics applications.


2020 ◽  
Vol 32 (2) ◽  
pp. 286-295 ◽  
Author(s):  
Wei-wen Zhao ◽  
Jian-hua Wang ◽  
De-cheng Wan

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