威尼斯赌博游戏_威尼斯赌博app-【官网】

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威尼斯赌博游戏_威尼斯赌博app-【官网】

图片

HPSC Lab at JuliaCon 2024

From July 9th through 13th, JuliaCon 2024 took place at the PSV soccer stadium in Eindhoven, Netherlands. It presented a great opportunity to meet a lot of fellow Julia users and developers and enabled many interesting face-to-face discussions with core Julia developers. It was also nice to meet a number of members of the Trixi Framework development team, such as Hendrik Ranocha (威尼斯赌博游戏_威尼斯赌博app-【官网】 of Mainz), Erik Faulhaber and Benedict Geihe (both 威尼斯赌博游戏_威尼斯赌博app-【官网】 of Cologne), and Daniel Doehring (RWTH Aachen 威尼斯赌博游戏_威尼斯赌博app-【官网】).

Niklas (HLRS Stuttgart/HPSC Lab) and Michael (HPSC Lab) were also present and gave talks on particle-based multiphysics simulations with TrixiParticles.jl?and on secure numerical computations with fully homomorphic encryption. Overall, it was a great event and we are looking forward to next year!

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The Trixi Framework team at JuliaCon 2024. From left to right: Michael Schlottke-Lakemper, Benedict Geihe, Niklas Neher, Hendrik Ranocha, Daniel Doehring ? Daniel Doehring

Together with Erik Faulhaber, Sven Berger, Christian Wei?enfels und Gregor Gassner,?we have submitted our paper "Robust and efficient pre-processing techniques for particle-based methods including dynamic boundary generation".

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arXiv:2506.21206 reproduce me!

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Abstract

Obtaining high-quality particle distributions for stable and accurate particle-based simulations poses significant challenges, especially for complex geometries. We introduce a preprocessing technique for 2D and 3D geometries, optimized for smoothed particle hydrodynamics (SPH) and other particle-based methods. Our pipeline begins with the generation of a resolution-adaptive point cloud near the geometry's surface employing a face-based neighborhood search. This point cloud forms the basis for a signed distance field, enabling efficient, localized computations near surface regions. To create an initial particle configuration, we apply a hierarchical winding number method for fast and accurate inside-outside segmentation. Particle positions are then relaxed using an SPH-inspired scheme, which also serves to pack boundary particles. This ensures full kernel support and promotes isotropic distributions while preserving the geometry interface. By leveraging the meshless nature of particle-based methods, our approach does not require connectivity information and is thus straightforward to integrate into existing particle-based frameworks. It is robust to imperfect input geometries and memory-efficient without compromising performance. Moreover, our experiments demonstrate that with increasingly higher resolution, the resulting particle distribution converges to the exact geometry.

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