Literature DB >> 30570628

Using machine learning to discover shape descriptors for predicting emulsion stability in a microfluidic channel.

Jian Wei Khor1, Neal Jean, Eric S Luxenberg, Stefano Ermon, Sindy K Y Tang.   

Abstract

In soft matter consisting of many deformable objects, object shapes often carry important information about local forces and their interactions with the local environment, and can be tightly coupled to the bulk properties and functions. In a concentrated emulsion, for example, the shapes of individual droplets are directly related to the local stress arising from interactions with neighboring drops, which in turn determine their stability and the resulting rheological properties. Shape descriptors used in prior work on single drops and dilute emulsions, where droplet-droplet interactions are largely negligible and the drop shapes are simple, are insufficient to fully capture the broad range of droplet shapes in a concentrated system. This paper describes the application of a machine learning method, specifically a convolutional autoencoder model, that learns to: (1) discover a low-dimensional code (8-dimensional) to describe droplet shapes within a concentrated emulsion, and (2) predict whether the drop will become unstable and undergo break-up. The input consists of images (N = 500 002) of two-dimensional droplet boundaries extracted from movies of a concentrated emulsion flowing through a confined microfluidic channel as a monolayer. The model is able to faithfully reconstruct droplet shapes, as well as to achieve a classification accuracy of 91.7% in the prediction of droplet break-up, compared with ∼60% using conventional scalar descriptors based on droplet elongation. It is observed that 4 out of the 8 dimensions of the code are interpretable, corresponding to drop skewness, elongation, throat size, and surface curvature, respectively. Furthermore, the results show that drop elongation, throat size, and surface curvature are dominant factors in predicting droplet break-up for the flow conditions tested. The method presented is expected to facilitate follow-on work to identify the relationship between drop shapes and the interactions with other drops, and to identify potentially new modes of break-up mechanisms in a concentrated system. Finally, the method developed here should also apply to other soft materials such as foams, gels, and cells and tissues.

Entities:  

Year:  2019        PMID: 30570628     DOI: 10.1039/c8sm02054j

Source DB:  PubMed          Journal:  Soft Matter        ISSN: 1744-683X            Impact factor:   3.679


  6 in total

1.  Tracking droplets in soft granular flows with deep learning techniques.

Authors:  Mihir Durve; Fabio Bonaccorso; Andrea Montessori; Marco Lauricella; Adriano Tiribocchi; Sauro Succi
Journal:  Eur Phys J Plus       Date:  2021-08-21       Impact factor: 3.911

2.  Adoption of reinforcement learning for the intelligent control of a microfluidic peristaltic pump.

Authors:  Takaaki Abe; Shinsuke Oh-Hara; Yoshiaki Ukita
Journal:  Biomicrofluidics       Date:  2021-05-06       Impact factor: 2.800

Review 3.  Machine learning-enabled multiplexed microfluidic sensors.

Authors:  Sajjad Rahmani Dabbagh; Fazle Rabbi; Zafer Doğan; Ali Kemal Yetisen; Savas Tasoglu
Journal:  Biomicrofluidics       Date:  2020-12-11       Impact factor: 2.800

4.  Learning from droplet flows in microfluidic channels using deep neural networks.

Authors:  Pooria Hadikhani; Navid Borhani; S Mohammad H Hashemi; Demetri Psaltis
Journal:  Sci Rep       Date:  2019-05-31       Impact factor: 4.379

Review 5.  Machine learning for microfluidic design and control.

Authors:  David McIntyre; Ali Lashkaripour; Polly Fordyce; Douglas Densmore
Journal:  Lab Chip       Date:  2022-08-09       Impact factor: 7.517

6.  Artificial intelligence application for rapid fabrication of size-tunable PLGA microparticles in microfluidics.

Authors:  Safa A Damiati; Damiano Rossi; Haakan N Joensson; Samar Damiati
Journal:  Sci Rep       Date:  2020-11-11       Impact factor: 4.379

  6 in total

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