Issue 15, 2021

A neural network-based algorithm for high-throughput characterisation of viscoelastic properties of flowing microcapsules

Abstract

Microcapsules, consisting of a liquid droplet enclosed by a viscoelastic membrane, have a wide range of biomedical and pharmaceutical applications and also serve as a popular mechanical model for biological cells. In this study, we develop a novel high throughput approach, by combining a machine learning method with a high-fidelity mechanistic capsule model, to accurately predict the membrane elasticity and viscosity of microcapsules from their dynamic deformation when flowing in a branched microchannel. The machine learning method consists of a deep convolutional neural network (DCNN) connected by a long short-term memory (LSTM) network. We demonstrate that with a superior prediction accuracy the present hybrid DCNN-LSTM network can still be faster than a conventional inverse method by five orders of magnitude, and can process thousands of capsules per second. We also show that the hybrid network has fewer restrictions compared with a simple DCNN.

Graphical abstract: A neural network-based algorithm for high-throughput characterisation of viscoelastic properties of flowing microcapsules

Associated articles

Article information

Article type
Paper
Submitted
29 Nov 2020
Accepted
15 Jan 2021
First published
19 Jan 2021
This article is Open Access
Creative Commons BY-NC license

Soft Matter, 2021,17, 4027-4039

A neural network-based algorithm for high-throughput characterisation of viscoelastic properties of flowing microcapsules

T. Lin, Z. Wang, W. Wang and Y. Sui, Soft Matter, 2021, 17, 4027 DOI: 10.1039/D0SM02121K

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