Optimal design of microfluidic networks using biologically inspired principles

被引:0
|
作者
Robert W. Barber
David R. Emerson
机构
[1] CCLRC Daresbury Laboratory,Centre for Microfluidics and Microsystems Modelling
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关键词
Biomimetic; Murray’s law; Vascular; Manifold; Lab-on-a-chip;
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学科分类号
摘要
From the earliest of times, Man has sought to replicate ideas that have evolved naturally in plants and animals. Understanding and extracting these “natural” design strategies has opened up a whole new field of research known as biomimetics. Designs formulated using biologically inspired principles range from novel surface treatments that mimic physiological processes to geometrical optimization for improving the performance of a system. In this paper, we will show how biomimetic principles based on the laws that govern biological vascular trees can be used to design artificial microfluidic distribution systems. The study focuses specifically on microfluidic manifolds composed of constant-depth rectangular- or trapezoidal-sectioned channels, as these geometries can readily be fabricated using standard micro-fabrication techniques. We will show that it is possible to introduce a prescribed element of flow control into the system by carefully selecting the branching parameter that governs the change in channel dimension at each bifurcation.
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页码:179 / 191
页数:12
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