Issue 27, 2024

Neural-network-based solver for vesicle shapes predicted by the Helfrich model

Abstract

That a three-dimensional vesicle morphology can be modeled by an artificial neural network is proposed and demonstrated. In the phase-field representation, the Helfrich bending energy of a membrane is equivalently cast into field-based energy, which enables a more direct representation of a deformable, three-dimensional membrane surface. The core of our method is incorporating recent machine-learning techniques to perform the required energy minimization. The versatile ability of the method, to compute axisymmetric and nonsymmetric shapes, is discussed.

Graphical abstract: Neural-network-based solver for vesicle shapes predicted by the Helfrich model

Article information

Article type
Paper
Submitted
23 Apr 2024
Accepted
09 Jun 2024
First published
11 Jun 2024

Soft Matter, 2024,20, 5359-5366

Neural-network-based solver for vesicle shapes predicted by the Helfrich model

Y. Rohanizadegan, H. Li and J. Z. Y. Chen, Soft Matter, 2024, 20, 5359 DOI: 10.1039/D4SM00482E

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