-
Simulation of nanofluid micro-channel heat exchanger using computational fluid dynamics integrated with artificial neural network
- Back
Metadata
Document Title
Simulation of nanofluid micro-channel heat exchanger using computational fluid dynamics integrated with artificial neural network
Author
Kamsuwan C. Wang X. Seng L.P. Xian C.K. Piemjaiswang R. Piumsomboon P. Pratumwal Y. Otarawanna S. Chalermsinsuwan B.
Affiliations
Fuels Research Center Department of Chemical Technology Faculty of Science Chulalongkorn University Bangkok 10330 Thailand; School of Engineering The Australian National University Canberra ACT 2601 Australia; Department of Mechanical Engineering Faculty of Engineering National University of Singapore 9 Engineering Drive 1117576 Singapore; Environmental Research Institute Chulalongkorn University Bangkok 10330 Thailand; Center of Excellence on Petrochemical and Materials Technology Chulalongkorn University Bangkok 10330 Thailand; National Metal and Materials Technology Center National Science and Technology Development Agency Pathum Thani 12120 Thailand; Advanced Computational Fluid Dynamics Research Unit Chulalongkorn University Bangkok 10330 Thailand
Type
Article
Source Title
Energy Reports
ISSN
23524847
Year
2023
Volume
9
Page
239-247
Open Access
All Open Access Gold
Publisher
Elsevier Ltd
DOI
10.1016/j.egyr.2022.10.412
Abstract
Waste heat utilization has been prioritized especially in various industries and sectors. Many researchers have developed heat recovery processes by designing suitable waste heat recovery units (WRU) such as heat exchangers using water as a coolants to receive heat from the waste heat fluid in the production process. The conventional heat exchanger has limitations such as its equipment size space for installation and flexibility. The microchannel heat exchanger is one of many ideas for resolving these limitations. Moreover the coolant on the cold side can be upgraded by adding nanometer-sized solid particles which is called 揘anofluid�. To reduce the high investigation cost and time a new efficient and cost-effective simulation method was selected to use for investigating the performance of a microchannel heat exchanger with nanofluids in this study. To analyze the heat recovery at low temperature i.e. around 100�0 ?C nanofluid property predictive models were developed using an artificial neural network (ANN). Then the predictive models were embedded and integrated into computational fluid dynamics to design a microchannel heat exchanger. It is found that the use of nanofluids improved the heat transfer efficiency of this heat exchanger. The suitable nanofluid types and concentrations were selected based on the thermal杊ydraulic? performance. Here the 3% weight TiO2/Water fluid with a 1.03 thermal杊ydraulic? performance ratio was found to be the most promising nanofluid for using in this condition. ? 2022 The Author(s)
Industrial Classification
Knowledge Taxonomy Level 1
Knowledge Taxonomy Level 2
Knowledge Taxonomy Level 3
License
CC BY-NC-ND
Rights
Authors
Publication Source
WOS