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In the past, Tecplot 360 has supported load-on-demand for several popular CFD file formats, which reduces perceived loading time by loading a given variable in a particular zone only when it is needed for a plot. The subzone loadable format employs the second approach. SZL technology can help improve performance when loading, visualizing and analyzing simulation results. And continually chasing the absolutely fastest hardware is very expensive. Next year’s hardware will certainly be faster, but next year’s data will just as surely be even bigger. Unfortunately, this approach only gets us so far the ever-increasing size of simulation data is clearly swamping even the fastest of today’s processors, memory, and storage when it comes time to visualize the results. The first approach relies on the giants of the computer industry to continue advancing the state of the art. Figure out a way to load a lot less data for most operations.Significantly increase the performance of the computer system, particularly its storage.When faced with the task of making large data files load faster, two possible solutions come to mind:
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szplt) to address the needs of customers who are visualizing large data files, improving interactive performance, and simultaneously reducing memory requirements. Tecplot 360 introduced a new data file format called SZL or subzone loadable (filename extension. And monitor the density in few points away from the jet.« Back Converting Your Data Files to Tecplot Subzone Loadable Format TecIO and SZL, Tecplot 360, Tecplot Blog October 28, 2014Īs the years go by, more and more engineers and scientists are working with files containing hundreds of millions of cells, with billions on the horizon. !!nnmy recommendation, repeat the simulation.
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Probably this happened when you were running the simulation with wall at the top.
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nThe last density shows that the mixture density is similar to the impinged water density. may be the salinity played a role.nFinally, I believe, if you left your simulation to continue, you might get something close to the photo. having rectangular or cylindrical room will not make a difference if it is large enough.nThe captured photo, the impinged fresh water particles, started to diffuse horizontally when the jet velocity became very small. You can actually simulate 1 quarter of the room, and apply symmetry. To solve this issue, you need to have few cells in the z direction,, then apply symmetry plane. Fluent recognises the jet depth is 1 m, which is not true. The 2D simulation has an effect in obtaining this difference.
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