LUNDIsim: model meshes for flow simulation and scientific data compression benchmarks
Laurent Duval, Fr\'ed\'eric Payan, Christophe Preux, Lauriane Bouard

TL;DR
LUNDIsim provides a set of geological mesh datasets designed for benchmarking flow simulation and data compression techniques, supporting reproducibility and advanced analysis in earth sciences.
Contribution
The paper introduces LUNDIsim, a comprehensive geological mesh dataset with multiscale representations and reservoir features for benchmarking data compression and flow simulation workflows.
Findings
LUNDIsim datasets enable effective benchmarking of mesh compression algorithms.
The datasets support reproducible flow simulations in geological modeling.
Multiscale representations facilitate diverse analysis and visualization workflows.
Abstract
The volume of scientific data produced for and by numerical simulation workflows is increasing at an incredible rate. This raises concerns either in computability, interpretability, and sustainability. This is especially noticeable in earth science (geology, meteorology, oceanography, and astronomy), notably with climate studies. We highlight five main evaluation issues: efficiency, discrepancy, diversity, interpretability, availability. Among remedies, lossless and lossy compression techniques are becoming popular to better manage dataset volumes. Performance assessment -- with comparative benchmarks -- require open datasets shared under FAIR principles (Findable, Accessible, Interoperable, Reusable), with MRE (Minimal Reproducible Example) ancillary data for reuse. We share LUNDIsim, an exemplary faulted geological mesh. It is inspired by SPE10 comparative Challenge. Enhanced by…
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