Micromachines (Feb 2021)

Enhancement of Mixing Performance of Two-Layer Crossing Micromixer through Surrogate-Based Optimization

  • Shakhawat Hossain,
  • Nass Toufiq Tayeb,
  • Farzana Islam,
  • Mosab Kaseem,
  • P.D.H. Bui,
  • M.M.K. Bhuiya,
  • Muhammad Aslam,
  • Kwang-Yong Kim

DOI
https://doi.org/10.3390/mi12020211
Journal volume & issue
Vol. 12, no. 2
p. 211

Abstract

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Optimum configuration of a micromixer with two-layer crossing microstructure was performed using mixing analysis, surrogate modeling, along with an optimization algorithm. Mixing performance was used to determine the optimum designs at Reynolds number 40. A surrogate modeling method based on a radial basis neural network (RBNN) was used to approximate the value of the objective function. The optimization study was carried out with three design variables; viz., the ratio of the main channel thickness to the pitch length (H/PI), the ratio of the thickness of the diagonal channel to the pitch length (W/PI), and the ratio of the depth of the channel to the pitch length (d/PI). Through a primary parametric study, the design space was constrained. The design points surrounded by the design constraints were chosen using a well-known technique called Latin hypercube sampling (LHS). The optimal design confirmed a 32.0% enhancement of the mixing index as compared to the reference design.

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