Hossain Shakhawat, Tayeb Nass Toufiq, Islam Farzana, Kaseem Mosab, Bui P D H, Bhuiya M M K, Aslam Muhammad, Kim Kwang-Yong
Department of Industrial and Production Engineering, Jashore University of Science and Technology, Jashore 7408, Bangladesh.
Gas Turbine Joint Research Team, University of Djelfa, Djelfa 17000, Algeria.
Micromachines (Basel). 2021 Feb 19;12(2):211. doi: 10.3390/mi12020211.
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.
利用混合分析、代理建模以及优化算法对具有两层交叉微结构的微混合器进行了优化配置。混合性能用于确定雷诺数为40时的最优设计。采用基于径向基神经网络(RBNN)的代理建模方法来逼近目标函数的值。优化研究涉及三个设计变量,即主通道厚度与节距长度之比(H/PI)、对角通道厚度与节距长度之比(W/PI)以及通道深度与节距长度之比(d/PI)。通过初步参数研究,对设计空间进行了约束。使用一种名为拉丁超立方抽样(LHS)的知名技术选择了被设计约束包围的设计点。与参考设计相比,最优设计证实混合指数提高了32.0%。