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Accurate Correlations for the Turbulent Pipe flow of Shear-Thinning Fluids - Datasets

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Figshare2025-10-13 更新2026-04-08 收录
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https://figshare.com/articles/dataset/Accurate_Correlations_for_the_Turbulent_Pipe_flow_of_Shear-Thinning_Fluids_-_Datasets/30341752/1
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Turbulent pipe flow of non-Newtonian (NN) fluids is vital in many industries, yet accurately predicting the critical Reynolds number (Re_crit) and Fanning friction factor (C_f) remains challenging. Conventional numerical methods and empirical correlations often yield large errors (&gt;50%), leading to inefficient pipeline design and potential failures.This study uses direct numerical simulation (DNS) to develop precise correlations for Re_crit and C_f. Unlike traditional methods, DNS captures all turbulent flow scales without unvalidated turbulence closures, ensuring accuracy despite high computational costs. Simulations using Herschel-Bulkley and Sisko models across various Reynolds numbers and rheological parameters yield simple, accurate correlations.Validated against experiments, DNS-based correlations achieve superior accuracy (L2 error ~6%) compared to conventional models (~16%) and estimate rheological parameters with errors of just 1.88% (HB) and 2.78% (Sisko). These correlations provide a robust and reliable approach for predicting NN turbulent pipe flow.<br><br>The research data contains the details on the DNS computations that were used to develop the correlations for Re_crit and C_f.
提供机构:
Lester, Daniel; Yousuf, Noman; Rudman, Murray; Chryss, Andrew; Eshtiaghi, Nicky
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2025-10-13
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