Article ID: | iaor20131306 |
Volume: | 57 |
Issue: | 5-6 |
Start Page Number: | 1038 |
End Page Number: | 1052 |
Publication Date: | Mar 2013 |
Journal: | Mathematical and Computer Modelling |
Authors: | Madaeni S S, Kurdian A R, Hasankiadeh N Tavajohi |
Keywords: | optimization |
A Hierarchical Fuzzy System (HFS), due to the dimensionality problem of ordinary fuzzy systems, was utilized for prediction and optimization of the permeation flux during the milk microfiltration process. A data‐driven hybrid identification method based on a genetic and sequential quadratic programming (SQP) algorithm was applied to determine the fuzzy system parameters. The developed model was identified as a powerful tool for highly accurate flux prediction with the mean relative error of 1.5%. Comparison of HFS versus the well‐known mathematical models revealed the robustness of the developed model. The optimum operating conditions for maximizing flux were evaluated by HFS and a genetic algorithm. The influences of trans‐membrane pressure, temperature, cross‐flow velocity and presence of fat globules (skim or whole milk) on membrane performance were elucidated at optimum conditions.