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Optimal patterning of heterogeneous surface charge for improved electrokinetic micromixing

机译:优化非均质表面电荷的构图以改善电动微混合

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摘要

Micromixing is a key step in realizing fast analysis time in many bio-chemical, biological and detection applications of lab-on-a-chip (LOC) devices. The conventional T-mixer design requires longer channel lengths and times to achieve complete mixing owing to its dependence on transverse diffusion. As the surface properties of the microchannel govern the electro-osmotic flow characteristics, surface heterogeneity (non-uniform zeta potentials) can be exploited to generate vortices or specific flow structures to improve the mixing performance. Previous studies have shown that localized circulations or non-axial flow induced due to the presence of heterogeneity augment micromixing performance. However, the effect of heterogeneous charge patterns on mixing performance has not been studied systematically. In this computational study, a binary numerical optimization problem is formulated to achieve best mixing performance by identifying the optimal heterogeneous charge pattern. The resulting optimal design generates the most favorable transverse flow structure to provide optimal mixing performance. Various other configurations (staggered, herringbone, etc.) are examined over a range of operating conditions. The optimal design is found to be superior for all operating conditions with over 3-fold improvement in mixing performance with respect to homogeneous T-mixer.
机译:微混合是在芯片实验室(LOC)设备的许多生物化学,生物学和检测应用中实现快速分析时间的关键步骤。常规的T混合器设计由于需要横向扩散,因此需要更长的通道长度和时间才能实现完全混合。由于微通道的表面特性决定了电渗流特性,因此可以利用表面异质性(非均匀的ζ电势)来产生涡旋或特定的流结构,以改善混合性能。先前的研究表明,由于存在异质性而引起的局部循环或非轴向流动会增强微混合性能。但是,尚未系统地研究异质电荷模式对混合性能的影响。在此计算研究中,通过识别最佳的异质电荷模式,制定了二进制数值优化问题以实现最佳的混合性能。最终的最佳设计产生了最有利的横向流动结构,以提供最佳的混合性能。在各种操作条件下检查各种其他配置(交错,人字形等)。发现最佳设计在所有操作条件下均优于同质T混合器,混合性能提高了三倍以上。

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