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Particle Tracking and Micromixing Performance Characterization with a Mobile Device.

Edisson A NaulaHéctor Andrés Betancourt CervantesChristian Rodrigo Yañez EspinosaCiro A RodríguezLuis E Garza-CastañonJ Israel Martínez López
Published in: Sensors (Basel, Switzerland) (2023)
Strategies to stir and mix reagents in microfluid devices have evolved concomitantly with advancements in manufacturing techniques and sensing. While there is a large array of reported designs to combine and homogenize liquids, most of the characterization has been focused on setups with two inlets and one outlet. While this configuration is helpful to directly evaluate the effects of features and parameters on the mixing degree, it does not portray the conditions for experiments that involve more than two substances required to be subsequently combined. In this work, we present a mixing characterization methodology based on particle tracking as an alternative to the most common approach to measure homogeneity using the standard deviation of pixel intensities from a grayscale image. The proposed algorithm is implemented on a free and open-source mobile application (MIQUOD) for Android devices, numerically tested on COMSOL Multiphysics, and experimentally tested on a bidimensional split and recombine micromixer and a three-dimensional micromixer with sinusoidal grooves for different Reynolds numbers and geometrical features for samples with fluids seeded with red, blue, and green microparticles. The application uses concentration field data and particle track data to evaluate up to eleven performance metrics. Furthermore, with the insights from the experimental and numerical data, a mixing index for particles (m p ) is proposed to characterize mixing performance for scenarios with multiple input reagents.
Keyphrases
  • electronic health record
  • big data
  • deep learning
  • machine learning
  • climate change
  • artificial intelligence
  • mass spectrometry
  • single cell