z-logo
open-access-imgOpen Access
A Deep Learning Perspective on Dropwise Condensation
Author(s) -
Suh Youngjoon,
Lee Jonggyu,
Simadiris Peter,
Yan Xiao,
Sett Soumyadip,
Li Longnan,
Rabbi Kazi Fazle,
Miljkovic Nenad,
Won Yoonjin
Publication year - 2021
Publication title -
advanced science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 5.388
H-Index - 100
ISSN - 2198-3844
DOI - 10.1002/advs.202101794
Subject(s) - nucleation , condensation , computer science , population , process (computing) , deep learning , artificial intelligence , data science , heat transfer , nanotechnology , materials science , physics , mechanics , thermodynamics , demography , sociology , operating system
Abstract Condensation is ubiquitous in nature and industry. Heterogeneous condensation on surfaces is typified by the continuous cycle of droplet nucleation, growth, and departure. Central to the mechanistic understanding of the thermofluidic processes governing condensation is the rapid and high‐fidelity extraction of interpretable physical descriptors from the highly transient droplet population. However, extracting quantifiable measures out of dynamic objects with conventional imaging technologies poses a challenge to researchers. Here, an intelligent vision‐based framework is demonstrated that unites classical thermofluidic imaging techniques with deep learning to fundamentally address this challenge. The deep learning framework can autonomously harness physical descriptors and quantify thermal performance at extreme spatio‐temporal resolutions of 300 nm and 200 ms, respectively. The data‐centric analysis conclusively shows that contrary to classical understanding, the overall condensation performance is governed by a key tradeoff between heat transfer rate per individual droplet and droplet population density. The vision‐based approach presents a powerful tool for the study of not only phase‐change processes but also any nucleation‐based process within and beyond the thermal science community through the harnessing of big data.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here