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Ensemble latent assimilation with deep learning surrogate model: application to drop interaction in a microfluidics device
- Source :
- Lab on a chip. 22(17)
- Publication Year :
- 2022
-
Abstract
- A major challenge in the field of microfluidics is to predict and control drop interactions. This work develops an image-based data-driven model to forecast drop dynamics based on experiments performed on a microfluidics device. Reduced-order modelling techniques are applied to compress the recorded images into low-dimensional spaces and alleviate the computational cost. Recurrent neural networks are then employed to build a surrogate model of drop interactions by learning the dynamics of compressed variables in the reduced-order space. The surrogate model is integrated with real-time observations using data assimilation. In this paper we developed an ensemble-based latent assimilation algorithm scheme which shows an improvement in terms of accuracy with respect to the previous approaches. This work demonstrates the possibility to create a reliable data-driven model enabling a high fidelity prediction of drop interactions in microfluidics device. The performance of the developed system is evaluated against experimental data (i.e., recorded videos), which are excluded from the training of the surrogate model. The developed scheme is general and can be applied to other dynamical systems.
- Subjects :
- DYNAMICS
Technology
Biochemistry & Molecular Biology
EMULSIONS
Chemistry, Multidisciplinary
Microfluidics
Biomedical Engineering
Bioengineering
Biochemistry
Biochemical Research Methods
09 Engineering
Analytical Chemistry
Deep Learning
SYSTEMS
Lab-On-A-Chip Devices
Nanoscience & Nanotechnology
Instruments & Instrumentation
Science & Technology
Chemistry, Analytical
General Chemistry
Chemistry
Physical Sciences
Science & Technology - Other Topics
Neural Networks, Computer
03 Chemical Sciences
Life Sciences & Biomedicine
Algorithms
Subjects
Details
- ISSN :
- 14730189
- Volume :
- 22
- Issue :
- 17
- Database :
- OpenAIRE
- Journal :
- Lab on a chip
- Accession number :
- edsair.doi.dedup.....05004836b5e8271a33b200413af0056e