arXiv Analytics

Sign in

arXiv:1412.8014 [physics.flu-dyn]AbstractReferencesReviewsResources

Deterministic and stochastic algorithms for resolving the flow fields in ducts and networks using energy minimization

Taha Sochi

Published 2014-12-27Version 1

Several deterministic and stochastic multi-variable global optimization algorithms (Conjugate Gradient, Nelder-Mead, Quasi-Newton, and Global) are investigated in conjunction with energy minimization principle to resolve the pressure and volumetric flow rate fields in single ducts and networks of interconnected ducts. The algorithms are tested with seven types of fluid: Newtonian, power law, Bingham, Herschel-Bulkley, Ellis, Ree-Eyring and Casson. The results obtained from all those algorithms for all these types of fluid agree very well with the analytically derived solutions as obtained from the traditional methods which are based on the conservation principles and fluid constitutive relations. The results confirm and generalize the findings of our previous investigations that the energy minimization principle is at the heart of the flow dynamics systems. The investigation also enriches the methods of Computational Fluid Dynamics for solving the flow fields in tubes and networks for various types of Newtonian and non-Newtonian fluids.

Related articles: Most relevant | Search more
arXiv:1408.0357 [physics.flu-dyn] (Published 2014-08-02)
Solving the flow fields in conduits and networks using energy minimization principle with simulated annealing
arXiv:1412.1804 [physics.flu-dyn] (Published 2014-12-04)
Energy minimization for the flow in ducts and networks
arXiv:2408.01659 [physics.flu-dyn] (Published 2024-08-03)
Self-Supervised Learning for Effective Denoising of Flow Fields