Medusa

J. Slak, G. Kosec
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引用次数: 44

Abstract

Medusa, a novel library for implementation of non-particle strong form mesh-free methods, such as GFDM or RBF-FD, is described. We identify and present common parts and patterns among many such methods reported in the literature, such as node positioning, stencil selection, and stencil weight computation. Many different algorithms exist for each part and the possible combinations offer a plethora of possibilities for improvements of solution procedures that are far from fully understood. As a consequence there are still many unanswered questions in the mesh-free community resulting in vivid ongoing research in the field. Medusa implements the core mesh-free elements as independent blocks, which offers users great flexibility in experimenting with the method they are developing, as well as easily comparing it with other existing methods. The article describes the chosen abstractions and their usage, illustrates aspects of the philosophy and design, offers some executions time benchmarks and demonstrates the application of the library on cases from linear elasticity and fluid flow in irregular 2D and 3D domains.
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Medusa是一个新的库,用于实现非粒子强形式无网格方法,如GFDM或RBF-FD。我们在文献中报道的许多此类方法中识别并呈现共同的部分和模式,例如节点定位,模板选择和模板权重计算。对于每个部分存在许多不同的算法,并且可能的组合为改进解决程序提供了大量的可能性,这些解决程序远未完全理解。因此,在无网格社区中仍有许多未解决的问题,导致该领域正在进行生动的研究。Medusa将核心的无网格元素作为独立的块来实现,这为用户在实验他们正在开发的方法时提供了很大的灵活性,也很容易将其与其他现有方法进行比较。本文描述了所选择的抽象及其用法,说明了哲学和设计的各个方面,提供了一些执行时间基准,并演示了库在线性弹性和不规则二维和三维域的流体流动情况下的应用。
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