Transfer-learning-based Surrogate Model for Thermal Conductivity of Nanofluids

01/02/2022
by   Saeel S. Pai, et al.
0

Heat transfer characteristics of nanofluids have been extensively studied since the 1990s. Research investigations show that the suspended nanoparticles significantly alter the suspension's thermal properties. The thermal conductivity of nanofluids is one of the properties that is generally found to be greater than that of the base fluid. This increase in thermal conductivity is found to depend on several parameters. Several theories have been proposed to model the thermal conductivities of nanofluids, but there is no reliable universal theory yet to model the anomalous thermal conductivity of nanofluids. In recent years, supervised data-driven methods have been successfully employed to create surrogate models across various scientific disciplines, especially for modeling difficult-to-understand phenomena. These supervised learning methods allow the models to capture highly non-linear phenomena. In this work, we have taken advantage of existing correlations and used them concurrently with available experimental results to develop more robust surrogate models for predicting the thermal conductivity of nanofluids. Artificial neural networks are trained using the transfer learning approach to predict the thermal conductivity enhancement of nanofluids with spherical particles for 32 different particle-fluid combinations (8 particles materials and 4 fluids). The large amount of lower accuracy data generated from correlations is used to coarse-tune the model parameters, and the limited amount of more trustworthy experimental data is used to fine-tune the model parameters. The transfer learning-based models' results are compared with those from baseline models which are trained only on experimental data using a goodness of fit metric. It is found that the transfer learning models perform better with goodness of fit values of 0.93 as opposed to 0.83 from the baseline models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/29/2020

Transfer Learning for Thermal Comfort Prediction in Multiple Cities

HVAC (Heating, Ventilation and Air Conditioning) system is an important ...
research
06/15/2022

Hybrid full-field thermal characterization of additive manufacturing processes using physics-informed neural networks with data

Understanding the thermal behavior of additive manufacturing (AM) proces...
research
08/20/2022

Machine learning based surrogate models for microchannel heat sink optimization

In this paper, microchannel designs with secondary channels and with rib...
research
06/01/2020

Surrogate sea ice model enables efficient tuning

Predicting changes in sea ice cover is critical for shipping, ecosystem ...
research
03/30/2021

Thermal Neural Networks: Lumped-Parameter Thermal Modeling With State-Space Machine Learning

With electric power systems becoming more compact and increasingly power...
research
05/04/2023

Critical heat flux diagnosis using conditional generative adversarial networks

The critical heat flux (CHF) is an essential safety boundary in boiling ...
research
03/30/2021

FastCTF: A Robust Solver for Conduction Transfer Function Coefficients and Thermal Response Factors

Conduction transfer functions (CTF) are commonly used in the building se...

Please sign up or login with your details

Forgot password? Click here to reset