Yin Heyu, Dávila-Montero Sylmarie, Mason Andrew J
Department of Electrical and Computer Engineering, Columbia University, New York, NY 10027, USA.
Department of Electrical and Computer Engineering, The Citadel College, Charleston, SC 29409, USA.
Micromachines (Basel). 2024 Mar 17;15(3):405. doi: 10.3390/mi15030405.
To non-invasively monitor personal biological and environmental samples in Internet of Things (IoT)-based wearable microfluidic sensing applications, the particle size could be key to sensing, which emphasizes the need for particle size fractionation. Deterministic lateral displacement (DLD) is a microfluidic structure that has shown great potential for the size fractionation of micro- and nano-sized particles. This paper introduces a new externally balanced multi-section cascade DLD approach with a section-scaling technique aimed at expanding the dynamic range of particle size separation. To analyze the design tradeoffs of this new approach, a robust model that also accounts for practical fabrication limits is presented, enabling designers to visualize compromises between the overall device size and the achievement of various performance goals. Furthermore, results show that a wide variety of size fractionation ranges and size separation resolutions can be achieved by cascading multiple sections of an increasingly smaller gap size and critical separation dimension. Model results based on DLD theoretical equations are first presented, followed by model results that apply the scaling restrictions associated with the second order of effects, including practical fabrication limits, the gap/pillar size ratio, and pillar shape.
在基于物联网(IoT)的可穿戴微流控传感应用中,为了对个人生物和环境样本进行无创监测,颗粒大小可能是传感的关键因素,这凸显了颗粒大小分级的必要性。确定性侧向位移(DLD)是一种微流控结构,已显示出在微米和纳米级颗粒大小分级方面的巨大潜力。本文介绍了一种新的外部平衡多段级联DLD方法,并采用了段缩放技术,旨在扩大颗粒大小分离的动态范围。为了分析这种新方法的设计权衡,提出了一个稳健的模型,该模型还考虑了实际制造限制,使设计人员能够直观地看到整体设备尺寸与实现各种性能目标之间的折衷。此外,结果表明,通过级联多个间隙尺寸和临界分离尺寸越来越小的段,可以实现各种各样的大小分级范围和大小分离分辨率。首先给出基于DLD理论方程的模型结果,然后给出应用与二阶效应相关的缩放限制的模型结果,包括实际制造限制、间隙/柱尺寸比和柱形状。